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7/31/2019 Credit Risk - An Agent-based Model of Post-credit Decision Actions and Credit Losses in Banks
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Credit risk:
an agent-based model of post-credit decision actions and credit losses in banks
Sara JonssonPh. D.
Centre for Banking and Finance,
School of Architecture and the Build Environment,
The Royal Institute of Technology KTH,
Drottning Kristinas vg 30,
100 44 Stockholm, Sweden
+ 46 8 790 86 68
E-mail: [email protected]
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Banks, however, differed in the extent to which they suffered from credit losses in this crisis.
Researchers and practitioners have offered various explanations for these differences. Some
have argued for bank-level governance explanations, such as poor incentive structures. For
example, some banks rewarded short-term performance rather than long-term performance,
thus influencing bankers to lend to high-risk firms and households. Some observers have
attributed the existence of poor incentive structures to lax oversight by boards and investors
that allowed bank management to develop such structures (Kirkpatrick, 2008). Others have
supported country-level explanations. For example, Beltratti and Stulz (2009) found that
banks in countries with stricter capital requirement regulations performed better during the
crisis.
Because of differences in corporate management and/or country regulations, bankers
exhibited different levels of risk aversion in credit decision processes and were thus exposed
to various degrees of risk as the crisis emerged. In this article, theterm credit decision process
refers to the decision that a banker makes as to whether to grant credit to a client. Theterm
post-credit decision process refers to the actions of a banker when clients are incorporated
into the banks credit portfolio. Although the factors that affect the credit decision process
have been previously investigated, the post-credit decision processhas receivedless attention.
Because a financial crisis can dramatically increase the credit risks of individual clients, post-
credit decision actions are of substantial importance. The aim of this study is therefore to
investigate the effects of individual bankers post-credit decision actions on bank credit
losses. The empirical setting constitutes bankers with permission to grant credit to firms.
The method involved the distribution of a survey to bankers and an agent-based model
(ABM). The survey provides information on the microfoundation of the banker agents, and
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the ABM is used to investigate the implications of an individual bankers actions on the risk
of the banks credit portfolio. Data on the firms were collected from a national database.
According to the findings presented in this paper, post-credit decision actions, particularly the
option to terminate contracts with risky clients, have a substantial impact on bank credit
losses.
2. BackgroundThe field of ABM in economics has developed considerably in recent years, resulting in the
application of ABMs in various economic environments (see Tesfatsion, 2003, for a review).
Included in these studies are the modelling of financial markets and organizations.
Financial markets are well organized and centralized and relative to markets for other goods,
they trade homogenous products in an efficient manner. As such, financial markets are
particularly suited for ABM (LeBaron, 2001). Among the numerous ABMs of financial
markets, the Santa Fe Institute Artificial Stock Market (SFI-ASM) (Arthur et al, 1997) is one
of the pioneering models. Other ABMs of stock markets include the work by Chen and Yeh
(2001), who constructed a stock market model that includes an additional social learning
mechanism. Foreign exchange markets have proved to be difficult to model with any
predictive power using conventional modelling approaches; however, they are suited for
ABM. Izumi and Ueda (2001), for example, constructed an ABM in which the agents
compete with each other to develop methods for predicting changes in future exchange rates.
Financial bubbles and crashes, or crises, in financial markets have received attention from
researchers and a number of ABMs have been proposed in this field. For example Brock and
Hommes (1998) present a model showing the bubble and crash dynamics when a majority of
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agents switch from a fundamentalist strategy to a trend-following strategy. Friedman and
Abraham (2009) later put forth a model of how bubbles and crashes arise from an endogenous
market risk premium that responds to investors recent losses.
Financial markets are composed of amorphous collections of agents. By contrast,
organizations have a formal structure and, commonly, an informal structure. The formal
structure serves to define lines of communication and distribution of decision making, and the
informal structure constitutes a channel for sharing information about mutual tasks. Whereas
ABM studies of financial markets investigate the effects of particular types of firm
behavioural rules on price dynamics and market structure, ABM studies of organizations
commonly focus on the effects of a firms organizational structure on the firms own resulting
behaviour (Prietula et al, 1998).
The neoclassical description of a firm is as a profit-maximizing entity. However, an agent-
based approach means not having to assign an objective to an organization. Instead, the agents
that comprise it are modelled with explicit attention given to how decisions are made and how
the interactions of these decisions produce organizational output. A primary task for
organizations is to constantly search for routines that improve performance. The objective of
ABM in this field is to understand how firm performance is influenced by the way in which
parallel searches are carried out among multiple agents (i.e. managers of different
departments independently searching for new routines) (Burton and Obel, 1980). In some
ABMs of organizations, various units work separately on solving similar problem such as
selling a particular product line to consumers. In these models, activities map into
performance in similar ways (e.g. Chang and Harrington, 2003). Other ABMs of
organizations, which are based on the assumption that different departments (e.g. sales,
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finance) solving different problems, investigate the interdependencies of conflicting needs
(e.g. Siggelkow and Levinthal, 2003). Another line of ABM of organizations investigates the
evolution of organizational structures (Ethiraj and Levinthal, 2002). Research has also
recognized the cost of processing information, which has been explicitly modelled in some
ABMs of organizations (Carley, 1992; Miller, 2001).
Although the application of ABMs has increased in studies of financial markets and
organizations, limited application exists infinancial organizations. Research in which ABM
has been employed to investigate financial risks and crises has studied the implications of
agent action in amorphous markets. However, ABM research is limited on the implications of
agent actions within an organizational structure and their effects on credit risk. The present
study puts forward a model of credit risk in banks and, as such, suggests a new area of
application for ABMs that is of value to both bank management and regulators. For example,
an ABM could serve as a complement to internal ratings-based risk (IRB) models in
estimating credit risk.
3. Data CollectionThe model presented in this paper, hereafter referred to as the Bank Model, involves banker
agents who have permission to grant credit to firms. The agents are modelled according to the
results of a survey investigation conducted in 2007 at one of the largest Swedish banks,
hereafter referred to as the Bank. The data collection was carried out by Volterra
(www.volterra.co.uk), a consultancy agency. The survey was sent to 470 bankers who have
permission to grant credit to firms. Of these 470 bankers, 321 answered the survey, yielding a
response rate of 68%. A copy of the survey is presented in Appendix 1. In addition, data were
collected from interviews with the management of the Banks credit risk department.
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4. Description of the Bank ModelThe Bank Model comprises a formal organizational structure (including the local banker
agents, the regional offices and the central office), an informal organizational structure and
the firms that constitute potential bank clients. These elements are addressed in the following
subsections.
4.1. The formal organizational structure
The Banks formal organizational structure consists of 1 central office, 8 regional offices and
455 local offices. The Banks policy is that clients should be assigned the bank office that is
closest to them. Geographical distance is therefore a parameter in the Bank Model. The
Banks formal organizational structure is geographically represented by a circular space in the
Bank Model (see Figure 1). The circular space is sliced into eight sections, with each section
representing a regional office. On each of the eight sections of the circumference, 455 local
bankers (each representing a local office) are located by randomly attributing an angle
between 0 and 360 to them, which determines the position on the circumference. In the
middle of the circle is the central office, to which all regional offices and local bankers are
connected. Figure 1 also shows how the space is used to distribute firms (potential bank
clients) across regions.
Insert Figure 1 about here
The three formal organizational levelsthe local bankers, the regional offices and the central
officeare described in the following sub-subsections.
4.1.1. Local banker agents
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This sub-subsection describes the goal, actions, cognitive limitations, learning process and
attributes (Table 1) of local banker agents.
Local bankers goal
According to interviews the employees at the Bank make a career based primarily on how
well they have avoided credit losses. Therefore, in the Bank Model, all local bankers are
assigned the same goal: to avoid credit losses.
Local bankers actions
The Bank is highly decentralized, meaning that credit decision authority and responsibility are
assigned to the local bankers. Analogously, in the Bank Model, the local bankers are the main
actors, in the sense that these individuals are the ones who do the following:
Decide whether to grant credit to firms that apply to them Make post-credit decisions by carrying out appropriate post-credit decision actions
from a list of possible oneswhenever a firms credit risk exceeds the allowed levels
As a general rule, each local banker grants credit to a firm provided that the following is met:
The perceived credit risk is below a certain limit set by the management. The size of credit being applied for is below the specific regional limit to which all
bankers in the same region are bound.
Local bankers limited cognitive abilities
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86%, the banker agent would also use other data from the client as a source of information
and so forth until all options were considered. The set of activities was then translated by
summing the usefulness indexes of the information sources (i.e. 0.41 + 0.30).
Insert Figure 2 about here
Insert Figure 3 about here
A high usefulness index is then translated to a low standard deviation. Hence, the range of
errors that banker agents make is narrowed if the source has been identified as being
important in the survey.
Local bankers learning process
Local bankers are assumed to have an individual, experience-based learning process.
Accordingly, as local bankers become familiar with the firms in their portfolios, they learn
more about their clients. This enhanced knowledge thus increases the accuracy of the bankers
assessments of the firms (cf. McNamara and Bromiley, 1997). Therefore, the error in credit
risk assessments is assumed to decrease in each time period, t, according to the following
negatively autocorrelated process (j denotes thej-th firm):
+ , (2)
where is the autocorrelation coefficient, and is the random component of the evolution
of the error term. When a firm that is already a client of the local banker applies for additional
credit, the local bankers current error term for that firm is retrieved and used in the evaluation
of the firm.
Insert Table 1 about here
4.1.2. The regional and central offices
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The main purpose of the regional and the central office in the Bank Model is to supervise the
credit application process for which the local bankers in the region are responsible. If the PPD
is below the PPD limit, but the credit size is above the local bankers credit limit, the regional
office handles the case by re-evaluating the applicant. The effects of this re-evaluation were
modelled according to survey results. Respondents were asked about the usefulness of
contacting the regional office and the central office in the evaluation of a credit application;
3% stated that the regional office was a useful source, and 1% stated that the central office
was a useful source. Correspondingly, in the Bank Model, if the regional office is contacted, it
is assumed that the local bankers usefulness index increases by 0.03 according to the survey
results; hence, the standard deviation of the error term decreases. If the credit size exceeds
even the regional offices credit limit, the local banker will also seek credit approval from the
central office. In this case, the usefulness index increases by an additional 0.01, and the
standard deviation of the error term decreases accordingly. However, according to
information obtained from the Bank, only 12% of the credit applications exceeded the local
bankers credit limits, and only 1% exceeded the regional office limit. If the loan size conveys
the involvement of the regional and possibly the central office and the firm is a previous
client, the local banker will use the error that is the smallest of the current stored error for that
firm (according to the local bankers learning process) and the error induced from the reduced
standard deviation.
4.2. The informal organizational structure
In addition to the formal structure, the Bank Model comprises an informal structure, which
means that local bankers can communicate with other local bankers in their region. When
banker agents are initialized, the local bankers are each assigned a random number (from zero
to the number of bankers in the region) of other local banker agents to be included in their
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network. According to the survey results, about 6% of the local bankers contacted other
branches in their region when they were making their last credit-granting decision. Thus, in
the Bank Model, 6% of the local bankers who handle a credit application use their informal
contacts. It is assumed that their clients have PPD values that are closest to the PPDLimit.
Hence, in each time period, the firms are sorted according to their PPD. First, the banker of
the firm closest to PPDlimit is identified, followed by the banker of the firm that is second
closest to PPDlimit and so on. This sorting process continues until 6% of the local bankers are
identified. The informal network is assumed to convey social learning, meaning that agents
are taught by other agents. Thus, in the model, the local bankers who use their informal
contacts assumed the same errorStd as the local banker of their informal contacts who has the
smallest errorStd.
4.3. The firms
In the Bank Model, firms constitute potential bank clients (see Table 2 for a list of firm
attributes). A firm is an instance of the firm class whose attributes are listed in Table 2.
Similar to banker agents, firms are assigned an angle on a circular space, which represents
their geographical location. When applying for credit, the firms address the banker that is
closest to them on the circle.
To assess the credit risk of publicly owned firms, lenders can use stock market prices. A
commonly used stock market-based credit measure is the expected default frequency (EDF)
model of Moodys KMV (1995). Because the Bank uses a version of this model to estimate
the credit risk of firm clients, it is also used in the Bank Model to model the firms. In this
model, the firms equity is valued as a call option on the firms underlying assets, which
implies that the firms equity holders have the option to repay the firms debts. When the
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firms debts mature, the firms equity holders can exercise their right to buy the firms assets
or choose to bankrupt the firm if the assets fall short of the debts. In three steps, the model
estimates a firms PD during a certain time period. The first step involves estimating the
market value of the firms assets (Vj), the volatility of the asset value ( )and the value of the
firms liabilities ( ).
In the second step, the firms default point and distance to default (DD) are calculated. The
default risk of a firm increases as the value of assets approaches the book values of the
liabilities until the firm finally reaches the default pointthat is, when the market value of the
assets is insufficient to repay the liabilities. In the model used in the Bank Model, the default
point is equal to Fj. In general, firms do not default when their asset values reach the book
value of debts because the long-term nature of some of their liabilities provides some
breathing space. The default point generally lies somewhere between total liability and short-
term liabilities (Crosbie and Bohn, 2003).
The distance to default ( ), which is calculated according to equation 3, is the number of
standard deviations that the asset value must drop so as to reach the default point. Hence, the
higher the risk of the firm the shorter the distance to default.
(3)
In the third step, an empirical mapping is constructed between the distance to default and the
default rate, based upon historical default experiences of firms with different DD values.
However, such data were not available. Therefore, the Bank Model approximates the
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probability distribution of the firms asset values as a normal distribution, with a mean equal
to and a standard deviation equal to . Hence, is estimated accordingly:
, (4)
whereNis the cumulative probability distribution function.
Each firm is also assigned an expected return on assets ( ) that is generated from a normal
distribution, with a mean of 0.04 and a standard deviation of 0.02, according to information
from the Bank. The expected return on assets is used when updating the PD in the simulation.
Figure 4 shows the distribution of the firms initial PD values generated by the Bank Model.
These values ranged from 0 to approximately 0.45.
Insert Figure 4 about here
Insert Table 2 about here
5. SimulationThe model was built with a library-oriented approach (cf. Macal and North, 2010), using the
Java agent-based simulation (JAS) library (Sonnessa, 2004). The attributes of the Bank Model
are presented in Table 3. A description of the event schedule is presented in Table 4.
Insert Table 3 about here
Insert Table 4 about here
Firms applying for credit
In every time period, a random number of firms in the universe of firms apply for credit. A
credit is an instance of the Credit-class; the attributes of which are listed in Table 5.
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Insert Table 5 about here
If a firm applying for credit is not a previous client of the bank, this firm is assigned to the
closest local banker.
Local bankers credit decision actions
In every time period, each local banker to whom a firm has approached with a credit
application makes assessments of the firms PD; hence, the PPD is calculated. If a firm
applying for credit is already in the local bankers credit book, the local bankers current error
term for that firm will be retrieved. If a firm applying for credit is not a previous client, an
error term will be drawn from the local bankers error distribution.
If the PPD is above the PPD limit, the credit application is rejected. If the PPD is below the
PPD limit, and the credit size is below the bankers credit limit, the local banker makes an
offer to the firm.
If the PPD is below PPD limit, but the credit size is above the bankers credit limit, the local
banker sends the application to the regional office, where the PPD is recalculated according to
the new usefulness index and the new standard deviation of the error term. If the new PPD is
above the PPD limit, the local banker declines the firms credit application. If the new PPD is
below the PPD limit, and the credit size is below the regional credit limit, the local banker
makes an offer to the firm. If the credit size is above the regional credit limit, the local banker
contacts the central office, where the PPD is recalculated according to a new usefulness index
and a new standard deviation of the error term. If this PPD is below the PPD limit, the local
banker makes an offer to the firm; otherwise, the local banker declines the firms credit
application.
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Local bankers post-credit decision actions
The PDs, and thus the PPDs, of bank client firms changes for each time period potentially
causing an excess of the PPD limit. In the survey, bankers were asked what type of action
might be carried out if a client firms PPD exceeds the PPD limit. The survey results were
transferred to available model actions (Table 6).
Insert Table 6 about here
Accordingly, three different post-credit decision actions are modelled in the Bank Model. All
bankers adopt the same option in the same situation. These three options are compared so as
to estimate the impact of post-credit decision behaviour.
1. No actions are carried out when a firms PPD exceeds the PPDlimit.2. When the PPD exceeds the PPDlimit, exposure to the client is halved; however, the
firm is still a customer of the bank.
3. The bank will terminate its contract with any firm with a PPD that exceeds thePPDlimit. In accordance with information obtained from the Bank regarding contract
termination, a credit loss of 20% of the firms book value of liabilities (F) is assumed.
Update of firms PD
At every time period, t, the PD of all firms is recalculated according to its actual return (rj)
and expected return (j). rj of each firm evolves according to the following:
, (5)
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where ej is a firm-specific shock. The firm-specific shock is introduced at every time
period, t, and is drawn from a normal distribution, with a mean of 0 and a variance equal to
the volatility of the firms asset value. Each firm is allocated a goodness-of-fit measure, ,
from 0 to 1. A new net asset value (the numerator in equation 2) for each firm is calculated
using the values of rj, j, and the current contractual liabilities ( ):
exp (6)
The equation can be described as a fractal Brownian motion, where tis the current time
period,fis the frequency of change in asset value (annual: f = 1, monthly: f = 12, etc.). In the
results presented in this paper, an annual frequency of change is assumed. The Hurst
parameter,H, allows for the return process to be autocorrelated. IfHis equal to 0.5, there is
no autocorrelation; ifHis more than 0.5, there is a positive autocorrelation; and ifHis less
than 0.5, there is a negative autocorrelation. In the Bank Model,His randomly assigned from
a uniform distribution ranging from 0 to 1. Using the new net asset value a new PD is
calculated.
In this step firms with a DD value of 0 are identified. These firms are considered defaulted
firms and are replaced with new firms. Hence, number of firms that can apply for credit is
assumed to be constant.
Calculation of credit losses
At each time period, a certain number of firms will reach their default point and the bank will
incur a credit loss if the firm is a bank client. The loss given default (LGD) is a measure of the
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Insert Figure 7 about here
Figure 8 shows the means of the simulation results for all three post-credit decision action
options at PPD limit values ranging from 0.01 to 0.45 (cf. the distribution of PD values
illustrated in Figure 4).Each point in the figure represents the mean losses from t= 0 to t=
300. The means and standard deviations of each point are presented in Table 7
Insert Figure 8 about here
Insert Table 7 about here
For all three options, the bank is assigned an equivalent PPD limit that represents equal risk
aversion. As previously mentioned, one type of asset is assumed; hence, the differences at
each PPD limit are not dependent on the composition of the banks credit portfolio.
The results show that the post-credit decision actions have a substantial effect on bank credit
losses. When bankers half the exposure to clients where PPD exceeds the PPD limit (option 2)
losses are reduced. The results further show that option 3 (terminate contracts with all clients
whose PPD exceed the limit) has the greatest impact on reducing bank credit losses. For
example, a PPD limit of 0.01 in option 1 approximately corresponds to a PPD limit of 0.20 in
option 3, in terms of the proportion of the credit losses.
Figure 8 shows that under option 1 (no post-credit decision actions carried out), the degree of
risk aversion has a substantial effect on credit losses that are already at low PPD limit values.
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By contrast, under option 3 (termination of contracts), risk aversion begins to exhibit
substantial effects on credit losses at PPD limit values above approximately 0.2.
Option 2 (exposure halved to clients whose PPD value exceeds the PPD limit) approximates a
linear relationship between the PPD limit and expected credit losses. In the Bank Model, this
option does not incur extra losses but still results in higher credit losses than option 3.
However, as the PPD limit increases, the proportion of credit losses approaches that of option
3. Hence, if a firm should suddenly convey a high PPD value (e.g., caused by a shock), the
option to halve the exposure might be considered above terminating the contract because the
former action would allow the bank to keep a customer who could potentially recover and
remain a profitable client.
The variables in the Bank Model were populated using empirical data obtained from a survey
distributed to local bankers at the Bank and using information obtained from interviews with
the management team of the Banks credit risk department. In this way, the agents actions,
attributes and input value ranges are validated. Furthermore, the firm clients were
operationalized using data from a database (www.largestcompanies.com) that provides
information on the asset values of Swedish firms. Additional input values on the firm clients
were obtained from the Bank.
The model output shows the impact of post-credit decision making on the extent of credit
losses (i.e. through decreasing exposure or terminating contracts with clients when the PPD
exceeds the PPD limit). These actions require early detection of credit deterioration and
actors speedy decision making. If a firm has multiple banks, it is potentially easier to make
the firm leave if one of these banks is the first to recognize the deterioration of a client. If one
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of these banks is instead the last one to recognise the firms deterioration, the firm might feel
that it has no other option than to stay with the bank even though interest rates and demands
for collateral are raised. Bankers post-credit decision are made in an environment that is
characterized by great uncertainty. In such environments organizations benefit from
decentralising decision making because decentralisation promote responsiveness to markets
(Lawrence and Lorsch, 1967).
The Bank has a history of decentralizing credit decision and post credit decision authority.
Hence, the Bank has an organizational structure that is favourable to early access to
information about clients as well as speedy action. Further, credit loss data obtained from the
Swedish banks annual reports (1998-2010) show that the Bank has suffered lower credit
losses than other Swedish banks (see Figure 9).
Insert Figure 9 about here
Conclusion and discussion
The ABM presented in this paper simulates the impact of bankers post-credit decision actions
on bank credit losses. The main analytical result is that post-credit decision actions have a
substantial impact on banks credit losses and credit risks. The results show that terminating
contracts with high risk client has the highest impact on reducing credit losses, followed by
the option to halve the exposure to risky clients. In the validation discussion it is suggested
that a decentralized organizational structure is beneficial to the possibility of terminating
contracts.
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Besides the suggested impact of a decentralized organizational structure to the possibility of
terminating contracts the different post-credit decision action options might have motivational
explanations. Agents have preferences (i.e. agents like financial rewards and career progress).
How preferences translate into behaviour depends on an organizations incentive scheme for
rewards and punishment (Chang and Harrington, 2006). Most organizations strive for
profitability (e.g., Cyert and March, 1963), which creates pressure for profitability at the
operating level (Bower, 1970). The profitability goals of bank organizations may be translated
into credit growth targets at the operating level. Because profitability rises with increases in
both sales of credits and services to clients, growth in credit portfolios is a way to improve
performance (McNamara and Bromiley, 1997). If pressure for growth in credit portfolios is
combined with an organizational setting where acknowledgement of a poor decision results in
undesirable outcomes (e.g., the threat of increased oversight, reduced responsibility or loss of
rewards), bankers might refuse to acknowledge the deterioration of a borrowers condition.
Undesirable outcomes might even result in an escalation of commitment, which implies that
banks may either increase or maintain credit lines for borrowers, despite their deteriorating
financial positions (McNamara et al, 2002). Neglecting to carry out post-credit decision
actions (option 1) may illustrate the behavioural outcome of such motivational settings.
If a bank rewards bankers for avoiding losses (i.e.bankers with a record of the lowest losses
have the best career opportunities at the bank) and provides an organizational setting in which
the deterioration of a creditor does not result in undesirable consequences bankers are more
likely to behave by terminating a contract with a client whose PPD value exceeds the PPD
limit value (option 3).
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The present study answers the call for a greater focus on the needs of practitioners in ABM
(Siebers et al, 2010) because it provides implications for both banks and regulators. The
results provide implications for regulators to take into account banks post-credit decision
actions when imposing capital requirements as a complement to the focus on bank assets. For
banks, an ABM could be used as a potential tool in the IRB approach. The Basel framework
encourages banks to initiate an IRB approach when measuring credit risk because banks are
expected to be capable of adopting sophisticated techniques in credit risk management. In
accordance with this approach, banks are allowed to develop their own credit risk models.
To increase the validity of the model, survey results should be collected from multiple banks.
Future models should also explicitly investigate the impact of bankers motivations (i.e.
rewards or individual preferences) to their post-credit decision actions.
References
ARTHUR, W Brian, HOLLAND, John H., LEBARON, Blake, PALMER, Richard, Paul
TAYLOR,. Asset pricing under endogenous expectations in an artificial stock market. In:
ARTHUR, W Brian, DURLAUF, Steven N, David LANE (eds). The Economy as an Evolving
Complex System II. Addison-Wesley: Reading, MA, 1997, 15-44.
BELTRATTI, Andrea, Ren M STULZ. Why did some banks perform better during the credit
crisis? A cross-country study of the impact of governance and regulations. Working Paper n.
15180, National Bureau of Economic Research: Cambridge, MA. 2009.
BOWER, Joseph, L.Managing the resource allocation process: a study of corporate
planning and investment. Division of Research, Graduate School of Business Administration,
Harvard University: Boston, MA.1970.
7/31/2019 Credit Risk - An Agent-based Model of Post-credit Decision Actions and Credit Losses in Banks
24/33
24
BROCK, William A, Cars H HOMMES. Heterogeneous beliefs and routes to chaos in a
simple asset pricing model.Journal of Economic Dynamics and Control, n 22, 1998, 1235-
1274.
BURTON, Richard M, Brge OBEL. A computer simulation test of the M-form hypothesis.
Administrative Science Quarterly, n 25, 1980, 457-466.
CARLEY, Kathleen. Organizational learning and personnel turnover. Organization
Science, n 3, 1992, 20-46.
CHANG , Myong-Hun Joseph, E. Jr.HARRINGTON. Multimarket competition, consumer
search, and the organizational structure of multiunit firms.Management Science, n 49,
2003, 541-552.
CHANG , Myong-Hun Joseph, E. Jr.HARRINGTON. Agent based models of organizations.
In: TESFATSION, Leigh, Kenneth L JUDD (eds).Handbook of Computational Economics,
n 2: Agent-based Computational Economics. Elsevier: Amsterdam , 2006, 1273-1337.
CHEN, Shu-Heng, Chia-Hsuan YEH. Evolving traders and the business school with genetic
programming: a new architecture of the agent-based artificial stock market.Journal of
Economic Dynamics and Control, n25, 2001, 363-393.
CROSBIE, Peter J., Jeffery BOHN. Modeling default risk. Modeling methodology. White
paper. KMV Corporation: San Francisco. 2003.
CYERT, Richard M and James G. MARCH, A Behavioral Theory of the Firm. Prentice Hall:
Englewood Cliffs, NJ.1963.
ETHIRAJ, Sendil K., Daniel LEVINTHAL. Search for architecture in complex worlds: an
evolutionary perspective on modularity and the emergence of dominant designs. Wharton
School, University of Pennsylvania. pdf copy. , 2002
FRIEDMAN, Daniel, Ralph ABRAHAM,. Bubbles and crashes: gradient dynamics in
financial markets.Journal of Economic Dynamics and Control, vol. 33 n4, 2009, 922-937.
7/31/2019 Credit Risk - An Agent-based Model of Post-credit Decision Actions and Credit Losses in Banks
25/33
25
IZUMI, Kiyoshi , Kiyoshi UEDA. Phase transition in a foreign exchange market: analysis
based on an artificial market approach.IEEE Transactions on Evolutionary Computation,
2001, n5,456-470.
KIRKPATRICK, Grant. The Corporate Governance Lessons from the Financial Crisis.
OECD: Paris. 2008.
KMV Corporation.Introducing credit monitor, version 4. KMV Corporation: San
Francisco.1995.
LAWRENCE, Paul R., Jay, W LORSCH. Organization and Environment: Managing
Differentiation and Integration. Irwin: Homewood, IL.1967.
LEBARON, Blake. A builders guide to agent-based financial markets. Quantitative
Finance vol. 1, n 2, 254-261. 2001.
MACAL, Charles M, Michael, J. NORTH,. Tutorial on agent-based modelling and
simulation.Journal of Simulation, n4, 151-162. 2010.
MCNAMARA Gerry, Philip BROMILEY. Decision making in an organizational setting:
cognitive and organizational influences on risk assessment in commercial lending.Academy
of Management Journal, n40, 1997, 1063-1088.
MCNAMARA Gerry, MOON Henry, Philip BROMILEY. Banking on commitment:
intended and unintended consequences of an organizations attempt to attenuate escalation of
commitment.Academy of Management Journal, n45, 2002, 443-452.
MILLER, John H.. Evolving information processing organizations. In: LOMI, Alessandro,
Erik R. LARSEN (eds).Dynamics of Organizations: Computational Modeling and
Organization Theories. AAAI Press/The MIT Press: Menlo Park, CA, 2001.
MIZEN, Paul.The credit crunch of 2007-2008: a discussion of the background, market
reactions, and policy responses. Federal Reserve Bank of St. Louis Review, vol. 90, n 5,
2008, 531-568.
7/31/2019 Credit Risk - An Agent-based Model of Post-credit Decision Actions and Credit Losses in Banks
26/33
26
PRIETULA, Michael J, CARLEY, Kathleen M., Les GASSER (eds). Simulating
Organizations: Computational Models of Institutions and Groups. The MIT Press:
Cambridge, MA. 1998.
SIEBERS, Peer-Olaf, MACAL, Charles M, GARNETT Jeremy, BUXTON, David, Michael
PIDD. Discrete-event simulation is dead, long live agent-based simulation!Journal of
Simulation, n 4, 2010, 204-210.
SIGGELKOW, Nicolaj, Daniel A LEVINTHAL. Temporarily divide to conquer: centralized,
decentralized, and reintegrated organizational approaches to exploration and adaptation.
Organization Science, n 14,2003, 650-669.
SONESSA Michele . JAS: Java agent-based simulation library, an open framework for
algorithm-intensive simulations. In: CONTINI Bruno, LEOMBRUNI Roberto, Matteo
RICHIARDI (eds).Industry and Labor Dynamics: The Agent-based Computational
Economics Approach. Proceedings of the Wild@Ace 2003 Workshop, Torino, Italy, 3-4
October 2003. World Scientific: Singapore.
TESFATSION, Leigh (2003).Agent based computational economics. ISU Economics
Working Paper, n 1, 2003.
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Table 1 Local banker attributes
Local banker Attributes Comment
angle The local bankers are each assigned a unique random angle between 0 and 360, which represents their
geographical location.
yearsToRetirement According survey results, the bankers have been working at the bank for a mean period of 10 years (SD = 4years). From this distribution, N (10, 16), the banker agents are assigned a certain number of years that they
will work in the bank.errorMean All banker agents are assigned an individual error distribution. All distributions, however, have the same
mean (0).
errorStd The bankers are assigned a different standard deviation of the error term.
minRho The minimum possible value for the autocorrelated component of the error (70%)maxRho The maximum possible value for the autocorrelated component of the error (90%)
minEta The minimum possible value for the random change of the error in any time period (2%)maxEta The maximum possible value for the random change of the error in any time period (2%)
localPortfolio The local bankers client firms are recorded in a list (localPortfolio). Each firm is associated with a specificerror term.
CreditLimit Data on the credit limits were obtained from the survey. Regional credit limits ranged from 1 239 474 SEK
to 15 000 000 SEK. These limits are distributed to the local bankers, according to region. All local bankerswithin the same region are assigned the same credit limit.
PPDLimit The expected credit losses are calculated for various limits for perceived probability of default, PPD,
ranging from PPD = 0.01 to PPD = 0.45.informalContacts The local bankers are assigned a network of other local bankers, who constitute the local bankers informal
contacts. The informal contacts are recorded in a list (informalContacts).
Table 2 Firm attributes
Firm Attribute Comment
firmAngle Firms are assigned a unique random angle between 0 and 360, which represented their geographical location.
assetValue Information (www.largestcompanies.com) on total asset values was obtained from 26 532 public and private
businesses. The total sample size was limited to 20 841 firms with asset values below 100 million Swedish kronor(MSEK). The data were fitted by an exponential distribution, with a mean equal to 15 MSEK. The market asset
value of a firm in the Bank Model was randomly assigned from this exponential distribution.
volatility Volatility is a measure of the standard deviation of the annual percentage change in asset value, which is a
measure of a firms business and industry risk. The annual volatility was derived from a uniform distribution witha range from 0.3 to 0.5, according to information from the Bank. Firms with larger asset values are assigned lowervolatility.
leverageRatioAccording to the Banks estimates of client firms proportion of debt to asset values, firms leverage ratios ( )
in the Bank Model are randomly generated from a uniform distribution with a range from 0.2 to 0.9,
corresponding to a leverage of 20 to 90%. The leverage ratio is used to calculate the contractual liabilities, = V
j .
expROA The expected return on assets is generated from a normal distribution N(0.04, 0.0004)
bankLoans List containing the credits obtained from the Bank
Table 3 Bank Model attributes
Bank Model attributes Comment
numberOfLocalBankers 455
numberOfRegions 8numberOfCentralOffices 1
Expected CreditLoss Calculated each time period
Time Time is set to 300PostCreditDecisionOption Three options are available to the local banker: (1) noAction, (2) exposureHalved or (3)
terminateContract.
numberOfFirms 2000
Table 4 The Bank Model event schedule
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Step Event
Step 1 Initialization {
Generate the initial population of local bankers, the banks formal and informal structure and the firms.}
Step 2 Firms apply for credit {Randomly select n (between 0 and numberOfFirms) firms that apply for credit
For each firm that applies: If the firm is not a previous customer, assign the firm to the closest banker}
Step 3 Local bankers make the credit decisions {From the list of firms that apply for credit, if PPD < PPDLimit, grant credit}
}Step 4 Local bankers make post-credit decisions {
If option = 1, go to step 5
If option = 2, for client firms with PPD > PPDLimit,
halve the credit exposureIf option = 3, for client firms with PPD > PPDLimit,
terminate contract (remove the firm from the local bankers credit book)
}Step 5 Update firms PD {
For each firm in the universe of firms, calculate a new PD
}Step 6 Calculate credit losses {
For each client firm whose DD = PPDLimit, calculate loss (0.20 *debt level (F))}
Step 7 Replace defaulted firms {
Create n new firms equal to the number of defaulted firms}
Step8 Replace retired bankers {
For each local banker, if yearsInBank = yearsToRetirement, replace the local banker with a new bankerStep 9 update banker error term {
according to the local bankers learning process
}
If t < time, go to step 2.
End.
Table 5 Attributes of the Credit class
Credit Attribute CommentcreditID The credit identification number
creditSize The size of the credit is drawn from a uniform distribution with a
range from * 0.05 to * 1.00.
creditMaturity The credits are assigned a certain maturity, according to information
from the bank. There is a 10% probability that the credit will matureand be repaid after 2 years. There is a 63% probability that it is
repaid after 4 years, and a 27% probability after 8 years.
creditAge The age of the credit increases by 1 for each time period.
Table 6 Transfer of results for the question regarding available post-credit decision actions to
Model action
Intervention options as stated in the survey Model actionNo actions are taken No action
Measures to facilitate for the client (e.g., extended credit) Exposure is halved, but the client is still a bank customer.
Measures to reduce the risk of loss
Measures to reduce future exposure to the customer
Measures to phase out the relationship
Measures to terminate all credits to customer (For example byraising the interest rate or collateral to levels that will make the firm
voluntarily leave the bank. )
The client is removed from the bank.
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Table 7 Mean and standard deviation of expected credit losses at various PPD limits
PPDLimit 0.01 0.05 0.10 0.15 0.20 0.25 0.30 0.35 0.40 0.45
Option 1
Mean 0.002 0.021 0.033 0.034 0.036 0.039 0.039 0.040 0.042 0.043
SD 0.002 0.001 0.004 0.002 0.003 0.004 0.002 0.002 0.003 0.006
Option 2
Mean 0.000 0.005 0.010 0.013 0.016 0.022 0.025 0.033 0.035 0.037SD 0.000 0.000 0.001 0.002 0.001 0.002 0.003 0.004 0.004 0.004
Option 3
Mean 0.000 0.000 0.000 0.001 0.003 0.016 0.024 0.027 0.033 0.035
SD 0.001 0.000 0.000 0.000 0.000 0.002 0.003 0.002 0.004 0.004
Note: Number of runs = 10.
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Figure 1 The formal structure of the Bank Model
Figure 2 Responses to questions about information sources used in their last credit-granting
decision
Figure 3 Responses to questions about the most useful information sources used in their last
credit-granting decision
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Figure 4 Distribution of initial probability of default (PD) values
Figure 5 Expected credit loss (percentage)when the bankers have the option to terminate the
contract with all firms in which the perceived probability of default (PPD) exceeds the PPD
limit of 0.10 (option 3).
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Figure 6 Expected credit loss (percentage)when the bankers have the option to halve
exposure to firms in which the perceived probability of default (PPD) exceeds the PPD limit
of 0.10 (option 2).
Figure 7 Expected credit loss (percentage)when the banker take no actions of firms in which
the perceived probability of default (PPD) exceeds the PPD limit of 0.10 (option 1).
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Figure 8 Simulation results from all three post-credit decision action options; mean of
expected credit losses as a percentage of the total borrowing at different limits for perceived
probability of default (PPD limits) .
Figure 9 Credit losses (percentage) of the Bank and other banks in the Swedish market, 1998-
2010.