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Comparative Profile of Violent Clients of Prostitute Women
Devon D. Brewer
Jonathan A. Dudek
Stephen Q. Muth
John M. Roberts, Jr.
John J. Potterat
Research supported by NIJ grants 2003-IJ-CX-1036 and 2001-IJ-CX-0001. Points of view are those of the authors alone.
London IP 2005
“Most traffic accidents occur within 25 miles of home.”
“More pedestrians get hit by cars when crossing the street in crosswalks than elsewhere.”
Are these useful facts for assessing risk (profiling) or planning intervention?
“Most traffic accidents occur within 25 miles of home.”
“More pedestrians get hit by cars when crossing the street in crosswalks than elsewhere.”
Are these useful facts for assessing risk (profiling) or planning intervention?
NO! At least not by themselves …
Need comparative, actuarial approach (contrast with frequency of trips within 25 miles of home, frequency of street crossings in crosswalks)
Investigative and scientific value of an offender profile depends on: • specificity• discriminative power (between offenders & non-offenders)• feasibility of assessing profiled traits
Case-control research designs needed (Cook et al., 2005; Fox & Levin, 1998)
• cases = offenders
• controls = non-offenders in underlying reference population
Apply this approach to violent clients of prostitute women and clients in general
Prostitute women have the highest homicide victimization rate of any set of women studied, account for ~ 3% of female homicide victims in US (Potterat et al, 2004)
• clients ~ 80-90%+ of perpetrators in U.S., ~ 35% of prostitute homicides committed by serial killers (Brewer et al.)
• violent crimes against prostitutes among the most difficult to solve (Lowman & Fraser, 1996; Decker et al., 2002)
• need effective profile of offenders
Cases = violent clients charged with/ convicted of assaulting, raping, and/or killing street prostitute women -- cleared cases
• identified from extensive search of newspaper databases, World Wide Web, academic/true crime literature, incidental discoveries; sought crime reports
Controls = clients identified from local/state CJ agency prostitution arrest records
• patronizing-specific charges, patronizing evident in arrest narrative, or inferred by 3-5+ male arrests in a day or multiple male arrests close in space/time
Matching
For each case, randomly matched 5 controls arrested:
• in same city/county jurisdiction as and
• within 10 years (48% w/in 1 year) of
case’s (median) attack
• 85 cases, 425 controls
Case-control jurisdictions
cases and controls included in present analyses cases and controls in process no cases and/or no controls
Nu
mb
er
of
Pe
rpe
tra
tors
1976 1980 1984 1988 1992 1996 2000 20040
2
4
6
8
10
Distribution of cases by (median) year of attack
Variables available by state/city
State/city
ncases Age Race Ht. Wt.
Crim.history
Birthstate
Journeyto crime
CT 9 X X X X X X
FL 30 X X X X X X
KC 3 X X X
MN 16 X X X X
TX 11 X X X X prost. X X
WA 16 X X X X X X
Characteristics of perpetrators
• 61% convicted of violence against prostitutes
• 5% attacked only offstreet prostitute women
• 7% were team perpetrators (3 sets)
• number of prostitute victims (fatal or nonfatal):
• mean = 3, median = 1, 45% = 2+, range = 1-48
• number killed by 55 prostitute killers:
• mean = 3, median = 1, 42% = 2+, range = 1-47
Overlap between perpetrators of fatal and nonfatal attacks
Perps of fatal attacks (n = 55)
Perps of nonfatal attacks (n = 47)
Overlap (n = 17)
Conservative estimate of proportion of perps of fatal attacks who also had nonfatal attacks
Multivariate conditional logistic regressionsModel 1
OR AOR
Model 2
OR AOR
Age 1.02 1.04a 1.01 1.03White 0.87 0.69 1.09 0.72
Viol Hx 3.10b 2.47 4.45c 5.98b
Prop Hx 2.63b 3.17b 4.41c 6.79b
Sex Hx 8.33b 8.19a 10.00b 24.48b
Patr Hx 0.48 0.28 0.53 0.16
Misc Hx 0.63 0.29a 0.73 0.08b
Ht. --- --- 1.10 1.39
Wt. --- --- 1.01 0.96
BMI --- --- 1.03 1.23
Model 1:
CT/FL/MN/WA
n = 306
Model 2:
CT/FL/WA
n = 198
ap < .05 bp < .01 cp < .001
Violent and/or sex offense criminal history incompletely identifies potential suspects:
• all perpetrators = 28% (21/74)
• prostitute killers = 37% (18/49) [this study]
• 40% (4/10) in 33 US counties, 1988 (USDOJ, 1988)
• 81% (56/69) in FBI data, 1985-2000 (Dudek, 2001)
• scope of crim hx: this study = arrests/conv. in state, 33 counties = unk, FBI = arrests in US
• serial killers = 48% (7/15) [this study]; only 1/7 had “miscellaneous” criminal history
• 77% (17/22) in FBI data (Dudek, 2001)
Violent and/or sex offense history incompletely identifies potential suspects
• such suspects still a large pool; prioritize local residents with non-extreme BMI, rank them by estimated “relative odds” from multivariate logistic model, integrate with facts of case
• other source for identifying suspects: bad date (ugly mugs/dodgy punters) lists
• at least 10% of perpetrators known by prostitutes to be violent (none had violent/sex criminal history)
• another 4% with no violent/sex history caught due to info provided by prostitutes
Age
mean/median range
cases (n = 85) 36/35 17-73
controls (n = 425) 35/33 16-81
OR (per year) = 1.01 (95% CI 0.99-1.03)
(based on conditional logistic regression, which incorporates case-control matching)
Race
Black Asian White Hisp. Other
Cases (n = 69) 25% 4% 64% 7% 0%
Controls (n = 345) 19% 4% 70% 5% 2%
% white:
cases = 64%, controls = 70%
OR = 0.71 (95% CI 0.39-1.27)
serial prostitute killers:
cases (n = 22) = 64%, controls (n = 110) = 72%
OR = 0.63 (95% CI 0.21-1.86)
Height (inches)
mean/median range
cases (n = 55) 70/70 61-77
controls (n = 275) 69/69 60-82
OR (per inch) = 1.11 (95% CI 1.01-1.21)
Weight (pounds)
mean/median range
cases (n = 49) 186/183 120-270
controls (n = 245) 177/170 100-350
OR (per pound) = 1.01 (95% CI 1.00-1.02)
Body Mass Index (BMI)
mean/median range
cases (n = 49) 27/26 20-30
controls (n = 245) 26/26 18-50
OR (per unit) = 1.02 (95% CI 0.95-1.09)
Controls more likely to have extreme BMI (< 20 or 35): 8% vs. 0% (p < .05 in unmatched analysis)
mean/median range
cases (n = 23) 165.3/10.7 0-2168
controls (n = 115) 16.0/9.1 0-245
Journey-to-crime road distance
• some jurisdictions provided only city of arrest/residence for controls
• % < 50 km: cases (n = 49) = 90%
controls (n = 245) = 95%
OR = 0.44 (95% CI 0.14-1.34)
OR (per km) = 1.01 (95% CI 0.99-1.02)
precise distances
Birth state same as attack/arrest state
• crude indicator of lifetime geographic mobility
• % same:
cases (n = 29) = 21%
controls (n = 145) = 23%
OR = 0.89 (95% CI 0.34-2.32)
Violent criminal history (including rape)
• any arrest or conviction prior to case’s first attack/control’s prostitution arrest in state criminal history repository
• overall:
cases (n = 60) = 27%
controls (n = 300) = 15%
OR = 2.14 (95% CI 1.09-2.43)
• prostitute killers:
cases (n = 38) = 34%
controls (n = 190) = 15%
OR = 3.29 (95% CI 1.44-7.54)
Property offense criminal history
• overall:
cases (n = 60) = 25%
controls (n = 300) = 14%
OR = 2.22 (95% CI 1.11-4.44)
Sex offense criminal history (including rape)
• overall:
cases (n = 60) = 8%
controls (n = 300) = 2%
OR = 5.00 (95% CI 1.45-17.27)
• prostitute killers:
cases (n = 38) = 13%
controls (n = 190) = 2%
OR = 8.33 (95% CI 1.99-34.87)
Patronizing (buying sex) criminal history
• overall:
cases (n = 71) = 1%
controls (n = 355) = 4%
OR = 0.36 (95% CI 0.05-2.88)
• underascertainment for both cases & controls, as such misdemeanors often not reported to state repositories
“Miscellaneous” criminal history
• history of non-violent/non-property/non-sex/ non-patronizing offenses (e.g., driving while intoxicated, drug offenses, driving without a license, etc.)
• overall:
cases (n = 60) = 13%
controls (n = 300) = 22%
OR = 0.53 (95% CI 0.24-1.21)
Conclusions
Whites not more likely to be perpetrators or serial killers (cf. Fox & Levin, 1998)
Prostitutes’ perceptions that young and/or black clients are more violent (Miller, 1993; Williamson & Folaron,
2001) unsupported (also Lowman & Fraser, 1996)
Perpetrators unlikely to be extremely under- or overweight (need strength/agility to attack?)
Both violent clients and clients overall are overwhelmingly local
• journey-to-crime ~ journey-to-routine-activity (patronizing in this instance)
Matched case-control analyses provide rigorous confirmation of association between violent/sex criminal history and client violence suggested by prior indirect/informal comparisons (Kinnel, 1993; Salfati et al.)
Patronizing history not predictive of client violence
• however, several perpetrators caught in stings subsequent to first attack, leading to their arrest for prior violence
More project information/contact: www.interscientific.net