The Commercial Sexual Exploitation of Children in New York City, 1982-2007 (ICPSR 34657)
Version Date: Apr 21, 2016 View help for published
Principal Investigator(s): View help for Principal Investigator(s)
Michael Rempel, Center for Court Innovation;
Richard Curtis, City University of New York. John Jay College of Criminal Justice;
Amy Muslim, Center for Court Innovation;
Melissa Labriola, Center for Court Innovation;
Karen Terry, City University of New York. John Jay College of Criminal Justice;
Meredith Dank, City University of New York. John Jay College of Criminal Justice;
Kirk Dombrowski, City University of New York. John Jay College of Criminal Justice;
Bilal Khan, City University of New York. John Jay College of Criminal Justice
https://doi.org/10.3886/ICPSR34657.v1
Version V1
Summary View help for Summary
This multi-method project sought to gain a better understanding of the commercial sexually exploited children (CSEC) population, particularly its size, characteristics, needs, and geographic spread in New York City. It represents a first attempt to understand the CSEC population in a major metropolitan area and to examine a concerted institutional effort to meet its needs. Three forms of data were collected in the project: questionnaire data, interview data, and network data. The project used Respondent Driven Sampling (RDS) to identify commercial sexually exploited children (CSEC) in New York City. Interviews were conducted with 230 youths between January 2006 and December 2007. Quantitative surveys regarding the frequency and quality of cross-stakeholder communication were administered at the beginning of the evaluation and one year later. For the purpose of trend analysis of CSEC related offenses, research staff obtained citywide arrest and prosecution data on child prostitution, exploitation, and solicitation of a minor. The New York City Criminal Justice Agency (CJA) provided arrest data for arrestees under 19 years of age in all five boroughs of New York City from January 1, 1998 through December 31, 2006.
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Funding View help for Funding
Subject Terms View help for Subject Terms
Geographic Coverage View help for Geographic Coverage
Smallest Geographic Unit View help for Smallest Geographic Unit
county
Restrictions View help for Restrictions
Access to these data is restricted. Users interested in obtaining these data must complete a Restricted Data Use Agreement, specify the reasons for the request, and obtain IRB approval or notice of exemption for their research.
Distributor(s) View help for Distributor(s)
Time Period(s) View help for Time Period(s)
Date of Collection View help for Date of Collection
Data Collection Notes View help for Data Collection Notes
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The qualitative CSEC interview transcripts (n = 329) are not available as part of this data collection at this time, however, the CSEC Interview Data (n=320) includes data coded from these transcripts. The principal investigator was not able to explain the difference in the case counts.
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The qualitative data from the semi-structured interviews with Coalition Against the Sexual Exploitation of Children (CASEC) stakeholders are not available as part of this data collection at this time.
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The network size data are not available as part of this data collection at this time.
Study Purpose View help for Study Purpose
The study had two primary goals. The first was to provide a reliable and ethnographically rich description of the local commercial sexually exploited children (CSEC) population, including its size, characteristics, experiences, and service needs. The second was to evaluate the local demonstration project, documenting its major initiatives, achievements, and obstacles. In achiving these goals, the study also sought to identify lessons for other jurisdictions interested in replicating efforts like those in New York City.
Study Design View help for Study Design
Three distinct forms of data were collected in the project: statistical and coded data in the form of a questionnaire, narrative and quantitative data in the form of open ended questions whose answers were transcribed, and network data derived from the sampling chains themselves and the "special seed" data used to provide information of network cycle length and tree overlaps not normally available in RDS methods.
The project used Respondent Driven Sampling (RDS) to identify a representative sample of commercial sexually exploited children (CSEC) in New York City. Dataset 1 (CSEC Interview data) includes data collected from 230 youths between January 2006 and December 2007. When a potential research subject contacted the project by telephone, the research team completed a brief initial eligibility assessment (questions on age and CSEC involvement) and set a time and place for the interview to be completed. Respondents were paid twenty dollars (cash or gift certificate) for completing the interview, and researchers were trained to provide the respondents with an opportunity to seek or get help. Respondents who completed the interview process were given 'coupons' to distribute to others they knew who meet the research criteria to help with further recruitment.
Semi-structured stakeholder interviews were conducted twice: at the beginning of the evaluation period and one year later. The main purposes were to gain a better understanding of the history and nature of Coalition Against the Sexual Exploitation of Children (CASEC) and to obtain stakeholder perceptions of the project's strengths, weaknesses, accomplishments, and challenges (The semi-structured Stakeholder interviews are not available as part of this data collection). At both the initial and follow-up interviews, quantitative surveys regarding the frequency and quality of cross-stakeholder communication (Dataset 2, Stakeholder Communication and Satisfaction Data, n=16) were administered.
For the purpose of trend analysis of CSEC related offense, research staff obtained citywide arrest and prosecution data on child prostitution, exploitation, and solicitation of a minor. For defendants ages 16 and older, the New York State Division of Criminal Justice Services (DCJS) provide the researchers with comprehensive arrest, disposition and sentencing data for all five New York City boroughs from January 1, 1982 - December 31, 2006 (Dataset 3 CSEC Explotation and Solicitation Case Data, n = 2212 and Dataset 4 CSEC Child Prostitution Case Data, n = 6928). The New York City Criminal Justice Agency (CJA) provided arrest data for arrestees under 19 years of age in all five boroughs of New York City from January 1, 1998 through December 31, 2006 (Dataset 5 CSEC Exploitation, Solicitation, and Child Prostitution Arrests Data, n = 15,322). For juveniles processed in family court (ages 15 and younger), prosecution data was obtained from the New York State Unified Court System for 2004 through 2006 (Dataset 6 CSEC Child Prostitution and Related Family Court Cases Data, n = 146).
Sample View help for Sample
Dataset 1 (CSEC Interview Data, n=230) used Respondent Driven Sampling. Respondent Driven Sampling (RDS) is a methodology that is used to recruit statistically representative samples of hard-to-reach groups by taking advantage of intragroup social connections to build a sample pool. A small number of initial research subjects, called 'seeds' were referred, interviewed by the researchers, and paid for their time and effort (twenty dollars). Following their interviews, the seeds were given three sequentially numbered coupons and instructed to pass them along to friends or associates who are like themselves (juveniles who currently participate in CSEC markets). If referral chains were not developed as expected, additional seeds could have been referred as replacements. The numbers on the coupons allowed the researchers to prevent duplication, identified who referred each participant and keep track of subsequent recruitment patterns. When coupons were redeemed by eligible research subjects, their referrer was compensated (ten dollars) for each coupon redeemed. The eligible subjects referred by the seeds comprised the first wave of the sample and they were each given three coupons to refer the new wave of study participants. A total of 329 participants were recruited using this method, though later 80 participants were excluded from the sample because they did not meet all of the sampling criteria (namely age, and participation in CSEC markets).
Stakeholder interviews (Dataset 2 Stakeholder Communication and Satisfaction Data, n=16) were conducted with representative from key local, city, and federal agencies that were involved in addressing prosecution or service provision issues.
Sampling for Datasets 3 through 6 is not applicable.
Time Method View help for Time Method
Universe View help for Universe
The universe for Dataset 1 (CSEC Interview Data) includes all CSEC child prostitution victims in New York City between January 2006 and December 2007.
The universe for Dataset 2 (Stakeholder Communication and Satisfaction Data)includes all CSEC stakeholders in New York City who participated in the Coalition Against the Sexual Exploitation of Children (CASEC) in 2006 and 2007.
The universe for Dataset 3 (CSEC Exploitation and Solicitation Cases Data) Dataset 4 (CSEC Child Prostitution Cases Data), Dataset 5 (CSEC Exploitation, Solicitation, and Child Prostitution Arrests Data) and Dataset 6 (CSEC Child Prostitution and Related Family Court Cases Data) includes all persons arrested for child prostitution, sexual exploitation of children, and solicitation of prostitution from a minor between 1982 and 2006.
Unit(s) of Observation View help for Unit(s) of Observation
Data Source View help for Data Source
The data for Dataset 3 (CSEC Exploitation and Solicitation Case Data)and Dataset 4 (CSEC Child Prostitution Cases Data) were collected from the New York State Division of Criminal Justice Services.
The data for Dataset 5 (CSEC Exploitation, Solicitation, and Child Prostitution Arrests Data) were collected from the New York City Criminal Justice Agency.
The data for Dataset 6 (CSEC Child Prostitution and Related Family Court Cases Data) from the New York State Unified Court System, Universal Case Management System.
Data Type(s) View help for Data Type(s)
Mode of Data Collection View help for Mode of Data Collection
Description of Variables View help for Description of Variables
Dataset 1 (CSEC Interview Data, n=230) includes 416 variables covering the following domains:
- demographic characteristics including age, race/ethnicity, and living situation,
- market involvement including age and means of initiation, location of work, and type of involvement,
- network size and characteristics including information about pimps and customers,
- health and social services history and needs,
- experience with law enforcement and court,
- and future expectations.
Dataset 2 (Stakeholder Communication and Satisfaction Data, n=16) includes 60 variables on the frequency and satisfaction of communication with other Coalition Against the Sexual Exploitation of Children (CASEC)stakeholders.
Dataset 3 (CSEC Exploitation and Solicitation Case Data, 278 variables, n=2,212)and Dataset 4 (CSEC Child Prostitution Cases Data, 254 variables, n=6,928)provide comprehensive arrest, disposition, and sentencing data for defendants ages 16 and older. Variables include offender demographics (age, sex, and race), arrest and conviction indicators for firearms, drugs, weapons, and child victims, charge information, charge level, disposition information, and prior arrest and conviction information.
Dataset 5 (CSEC Exploitation, Solicitation, and Child Prostitution Arrests Data, 21 variables, n=15,322)includes offender demographic information (age, sex, and race), charge description, severity of charge, type of CSEC charge, prostitution charge type and severity, and exploitation charge type.
Dataset 6 (CSEC Child Prostitution and Related Family Court Cases Data, 65 variables, n=146) includes prosecution data for juveniles ages 15 and younger. Variables include offender demographic information (race, gender, month and year of birth), arrest charges and severity, disposition information, and the number of cases for the CSEC youth.
Response Rates View help for Response Rates
Due to the nature of the sampling method used by this research project, a response rate is not applicable.
Presence of Common Scales View help for Presence of Common Scales
Not applicable.
HideOriginal Release Date View help for Original Release Date
2015-12-17
Version History View help for Version History
- Rempel, Michael, Richard Curtis, Amy Muslim, Melissa Labriola, Karen Terry, Meredith Dank, Kirk Dombrowski, and Bilal Khan. The Commercial Sexual Exploitation of Children in New York City, 1982-2007 . ICPSR34657-v1. Ann Arbor, MI: Inter-university Consortium for Political and Social Research [distributor], 2015-12-17. http://doi.org/10.3886/ICPSR34657.v1
2016-04-21 Update to the User Guide to correct for missing Publications and NIJ Data Resources Program sections.
2015-12-17 ICPSR data undergo a confidentiality review and are altered when necessary to limit the risk of disclosure. ICPSR also routinely creates ready-to-go data files along with setups in the major statistical software formats as well as standard codebooks to accompany the data. In addition to these procedures, ICPSR performed the following processing steps for this data collection:
- Standardized missing values.
- Checked for undocumented or out-of-range codes.
Notes
The public-use data files in this collection are available for access by the general public. Access does not require affiliation with an ICPSR member institution.
One or more files in this data collection have special restrictions. Restricted data files are not available for direct download from the website; click on the Restricted Data button to learn more.
This dataset is maintained and distributed by the National Archive of Criminal Justice Data (NACJD), the criminal justice archive within ICPSR. NACJD is primarily sponsored by three agencies within the U.S. Department of Justice: the Bureau of Justice Statistics, the National Institute of Justice, and the Office of Juvenile Justice and Delinquency Prevention.