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1 Economics 331b Treatment of Uncertainty in Economics (II)

Treatment of Uncertainty in Economics (II)

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Treatment of Uncertainty in Economics (II). Economics 331b. The payoff matrix (in utility units). Optimal policy with learn then act. Expected loss = 90% x 0 + 10% x -1 = -0.1%. This example: Learn then act. High carbon tax. High damages. ACT in future. LEARN TODAY. - PowerPoint PPT Presentation

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Page 1: Treatment of Uncertainty in Economics (II)

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Economics 331b

Treatment of Uncertaintyin Economics (II)

Page 2: Treatment of Uncertainty in Economics (II)

The payoff matrix (in utility units)

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The state of the environmental world

Good outcome (low damage, many green technologies)

Poor outcome (catastrophic damage, no green technologies)

Climate

Strong policies (high carbon tax, cooperation, R&D) -1% -1%

policyWeak policies (no carbon tax, strife, corruption) 0% -50%

Probability 90% 10%

Page 3: Treatment of Uncertainty in Economics (II)

Optimal policy with learn then act

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The state of the environmental world

Good outcome (low damage, many green technologies)

Poor outcome (catastrophic damage, no green technologies)

Climate

Strong policies (high carbon tax, cooperation, R&D) -1% -1%

policyWeak policies (no carbon tax, strife, corruption) 0% -50%

Probability 90% 10%

Expected loss = 90% x 0 + 10% x -1 = -0.1%

Page 4: Treatment of Uncertainty in Economics (II)

ACT in future

High damages

High carbon tax

Low carbon taxLow damages

This example: Learn then act

LEARNTODAY

Page 5: Treatment of Uncertainty in Economics (II)

What is wrong with this story?

The Monte Carlo approach is “learn then act.”That is, we learn the role of the dice, then we adopt

the best policy for that role.But this assumes that we know the future!

- If you know the future and decide (learn then act)- If you have to make your choice and then live with

the future as it unfolds (act then learn)

In many problems (such as climate change), you must decide NOW and learn about the state of the world LATER: “act then learn”

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Page 6: Treatment of Uncertainty in Economics (II)

Decision Analysis

In reality, we do not know future trajectory or SOW (“state of the world”).

Suppose that through dedicated research, we will learn the exact answer in 50 years.

It means that we must set policy now for both SOW; we can make state-contingent policies after 50 years.

How will that affect our optimal policy?

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Page 7: Treatment of Uncertainty in Economics (II)

LEARN 2050ACT

TODAY?

Low damages

High damages

Realistic world:Act then learn

Page 8: Treatment of Uncertainty in Economics (II)

Optimal policy with act then learn

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The state of the environmental world

Good outcome (low damage, many green technologies)

Poor outcome (catastrophic damage, no green technologies)

Climate

Strong policies (high carbon tax, cooperation, R&D) -1% -1%

policyWeak policies (no carbon tax, strife, corruption) 0% -50%

Probability 90% 10%

Expected loss depends upon strategy:strong: 90% x -1 + 10% x -1 = -1%weak : 90% x 0 + 10% x -50 = -5%

Page 9: Treatment of Uncertainty in Economics (II)

Conclusions

When you have learning, the structure of decision making is very different; it can increase of decrease early investments.

In cases where there are major catastrophic damages, value of early information is very high. Best investment is sometimes knowledge rather than

mitigation (that’s why we are here!)

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Page 10: Treatment of Uncertainty in Economics (II)

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The problem of fat tails

Units of dispersion (sample standard deviation)

Page 11: Treatment of Uncertainty in Economics (II)

Very extreme distributions

Normal distributions have little weight in the “tails”Fat tailed distributions are ones with big surprisesExample is “Pareto” or power law in tails:

f(x) = ax-(β +1), β = scale parameter.

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Probability of "tail event"

Sigma Normal Pareto 1.5 Pareto 1

2 2.2750% 1.1180% 5.0000%

4 0.0032% 0.3953% 2.5000%

6 0.0000% 0.2152% 1.6667%

10 0.0000% 0.1000% 1.0000%

23 0.0000% 0.0287% 0.4348%

* Sigma = average dispersion (like standard deviation).

Page 12: Treatment of Uncertainty in Economics (II)

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Black swans in South Africa (“Birds of Eden”)

Page 13: Treatment of Uncertainty in Economics (II)

Some examples

Height of American women: Normal N(64”,3”).

How surprised would you be to see a 14’ person coming to Econ 331?

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Page 14: Treatment of Uncertainty in Economics (II)

Some examples

Stock market: what is the probability of a 23% change in one day for a normal distribution? Circa 10-230 !!!- Mandelbrot found it was Pareto with β= 1.5.- Finite mean, but infinite variance

Earthquakes: Cauchy distribution β = 1 (see next slide). - Infinite mean, infinite variance

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Page 15: Treatment of Uncertainty in Economics (II)

Distribution of earthquake energy

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1.000

0.100

0.010

0.0019 10 11 12 13 14 15

Energy (E)

Fraction larger than EPower law distribution

Cum

ula

tive

freq

uen

cy

β = 1

Page 16: Treatment of Uncertainty in Economics (II)

Surprise with fat tails

Suppose you were a Japanese planner and used historical earthquakes as your guidelines.

How surprised were you in March 2011? How much more energy in that earthquake that LARGEST in all of Japanese history?

Answer:(9.0/8.5)^10 ^1.5= 5.6 times as large as historical max.

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Page 17: Treatment of Uncertainty in Economics (II)

Some examples

Climate damages (fat tailed according to Weitzman, but ?)

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Page 18: Treatment of Uncertainty in Economics (II)

Distribution of damages from RICE-2010 model

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0

40

80

120

160

200

240

280

320

0 10 20 30 40 50 60

Damages/ NNP (%)Observations 998

Mean 6.8%Median 4.8%Maximum 66.5%Minimum 0.4%

Damages/ NNP (%) for 2135

Page 19: Treatment of Uncertainty in Economics (II)

Here is another motivation: surprise

Fat tailed distributions are ones that are very surprising if you just look at historical data.

Suppose you were an oil trader in the late 1960s and early 1970s.

You are selling “vols” (volatility options).Let’s rerun history.

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Page 20: Treatment of Uncertainty in Economics (II)

Let’s look at the moving history of oil price changes: 1950- 1965

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-100

0

100

200

300

400

1950 1955 1960 1965 1970 1975 1980

Percentage change in oil prices(3 month, log, annual rate)

Page 21: Treatment of Uncertainty in Economics (II)

Oil price changes: 1950- 1970

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-100

0

100

200

300

400

1950 1955 1960 1965 1970 1975 1980

Percentage change in oil prices(3 month, log, annual rate)

Page 22: Treatment of Uncertainty in Economics (II)

Oil price changes : 1950- 1973:6

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-100

0

100

200

300

400

1950 1955 1960 1965 1970 1975 1980

Percentage change in oil prices(3 month, log, annual rate)

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Oil price changes : 1950- 1974:3

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-100

0

100

200

300

400

1950 1955 1960 1965 1970 1975 1980

Percentage change in oil prices(3 month, log, annual rate)

Page 24: Treatment of Uncertainty in Economics (II)

Revisit economists’ approach to uncertainty

- Combine structural modeling, subjective probability theory, and Monte Carlo sampling.

- Dynamic system under uncertainty:(1) yt = H(θt , μt)

- Then develop subjective probabilities for major parameters, f(θ). Often, use normal distributions for parameters because so simple:

(2) θ ≈ N (θ, σ)

- This has been criticized by Weitzman and others, who argue that the distributions have much more weight for catastrophic situations.

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Page 25: Treatment of Uncertainty in Economics (II)

Weitzman’s contribution

Weitzman showed that with fat tailed distribution, might have negative infinite utility, and no optimal policy.

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Page 26: Treatment of Uncertainty in Economics (II)

Some technicalia on Weitzman Critique

Weitzman argues that IAMs have ignored the “fat tailed” nature of probability distributions. If these are considered, then may get very different results. (Rev. Econ. Stat, forth. 2009)

Weitzman’s definition of fat tails is unbounded moment generating function:

Note that this is unusual both substantively and because it involves preferences (CRRA parameter, α ).

Combine the CRRA utility with Pareto distribution (β) for consumption.

Dismal Theorem: Have real problems is α is too high or β is too small.

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- c

c=0

E(c)= e f(c)dc=-∞

Page 27: Treatment of Uncertainty in Economics (II)

Go back to earlier example. Here payoffs are c

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The state of the environmental world

Good outcome (low damage, many green technologies)

Poor outcome (catastrophic damage, no green technologies)

Climate

Strong policies (high carbon tax, cooperation, R&D) -1% -1%

policyWeak policies (no carbon tax, strife, corruption) 0% -50%

Probability 90% 10%

1

1

Utility function: ( ) - (1 - ) / (1 )

'( ) - / (1 )

'(1) 1 [so utility is in consumption units]

U c c

U c c

U

Page 28: Treatment of Uncertainty in Economics (II)

Payoffs when act then learn with no policy and fat tails

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Act then learnLoss in expected utility (c units)

α No policy0 -5%

log(c) -7%2 -10%3 -15%4 -23%6 -89%

Page 29: Treatment of Uncertainty in Economics (II)

Payoffs when have policy, act then learn

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Act then learn Loss in expected utility (c units)

α Weak policy Strong policy0 -5.00% -1.00%

1.01 -6.96% -1.01%2 -10.00% -1.01%3 -15.00% -1.02%4 -23.33% -1.02%6 -89.45% -1.03%

Page 30: Treatment of Uncertainty in Economics (II)

Comparing all learning options with catastrophes…

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Act then learn

------ Loss in expected utility (c units) ----

---------- Act then learn ---------Learn then act

α Weak policy Strong policy0 -5.00% -1.00% -0.10%

log(c) -6.96% -1.01% -0.10%2 -10.00% -1.01% -0.10%3 -15.00% -1.02% -0.10%4 -23.33% -1.02% -0.10%6 -89.45% -1.03% -0.10%

Page 31: Treatment of Uncertainty in Economics (II)

Conclusions on fat tails

1. Fat tails are very fun (unless you get caught in a tsunami).

2. Fat tails definitely complicate life and losses.- Particularly with power law (Pareto) with low β.

3. Fat tails are particularly severe if we act stupidly. - Drive 90 mph while drunk, text messaging, on ice

roads.

4. If have good policy options, can avert most problems of fat tails.

5. If have early learning, can do even better.

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