Scalable training for child sexual abuse interviews in Japan: Using AI-driven avatars to test multiple behavioral modeling interventions

Background: Interviewer training using automated avatars and interventions has emerged as a potentially scalable approach to improving questioning skills in child sexual abuse interviews. Although behavioral modeling has been proven to be an effective part of this training, the efficacy of its indiv...

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Main Authors: Shumpei Haginoya, Tatsuro Ibe, Shota Yamamoto, Naruyo Yoshimoto, Hazuki Mizushi, Pekka Santtila
Format: Article
Language:English
Published: Elsevier 2025-07-01
Series:Child Protection and Practice
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Online Access:http://www.sciencedirect.com/science/article/pii/S2950193825000956
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author Shumpei Haginoya
Tatsuro Ibe
Shota Yamamoto
Naruyo Yoshimoto
Hazuki Mizushi
Pekka Santtila
author_facet Shumpei Haginoya
Tatsuro Ibe
Shota Yamamoto
Naruyo Yoshimoto
Hazuki Mizushi
Pekka Santtila
author_sort Shumpei Haginoya
collection DOAJ
description Background: Interviewer training using automated avatars and interventions has emerged as a potentially scalable approach to improving questioning skills in child sexual abuse interviews. Although behavioral modeling has been proven to be an effective part of this training, the efficacy of its individual components remains unexplored. Objective: We aimed to demonstrate the scalability of an interviewer training approach using AI-driven avatars and to examine the effectiveness of different components of modeling in improving the use of open questions. Participants and setting: 1168 lay participants recruited via crowdsourcing platforms were randomly assigned to 28 conditions varying the combination of modeling components. Methods: Each participant conducted one simulated child sexual abuse interview online after receiving one combination of the modeling components. The modeling components consisted of reading learning points regarding good and bad interview approaches, watching example videos of good and bad interviews, and reading the case outcomes (i.e. what had happened to the avatars interviewed in the example videos). Results: Correlation and regression analyses found positive impact of videos showing good interview practices on the quality of the participants' subsequent interviews while little effect was found of the learning points and the case outcomes. Surprisingly, we found a negative impact of videos showing bad interview practices on the quality of the participants’ interviews. Conclusions: The results demonstrated the scalability of interviewer training using automated avatars and the effectiveness of some modeling components in improving interviewer behavior. Overall, interviewers tended to follow the modeled behaviors regardless of whether these were positive or negative which resulted in improved interview skills through positive models but detrimental effects after negative models. However, the negative impact of bad modeling in the reproduction of learned behaviors in interview simulations should still be investigated in the context of transfer.
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spelling doaj-art-d81b588b607e422fb054c47e5500acdb2025-08-20T03:21:59ZengElsevierChild Protection and Practice2950-19382025-07-01510018810.1016/j.chipro.2025.100188Scalable training for child sexual abuse interviews in Japan: Using AI-driven avatars to test multiple behavioral modeling interventionsShumpei Haginoya0Tatsuro Ibe1Shota Yamamoto2Naruyo Yoshimoto3Hazuki Mizushi4Pekka Santtila5Faculty of Psychology, Meiji Gakuin University, 1-2-37 Shirokanedai, Minato-ku, Tokyo, 108-8636, Japan; Corresponding author.Independent Researcher, JapanForensic Science Laboratory, Hokkaido Prefectural Police Headquarters, N2-W7 Chuou-ku, Sapporo, Hokkaido, 060-8520, JapanGraduate School of Medicine, University of the Ryukyus, 207 Uehara, Nishihara, Okinawa, 903-0215, JapanGraduate School of Humanities and Human Sciences, Hiroshima Shudo University, 1-1-1, Ozuka-higashi, Asaminami-ku, Hiroshima, 731-3195, JapanNew York University Shanghai, 567 West Yangsi Road, Pudong New Area, Shanghai, 200126, ChinaBackground: Interviewer training using automated avatars and interventions has emerged as a potentially scalable approach to improving questioning skills in child sexual abuse interviews. Although behavioral modeling has been proven to be an effective part of this training, the efficacy of its individual components remains unexplored. Objective: We aimed to demonstrate the scalability of an interviewer training approach using AI-driven avatars and to examine the effectiveness of different components of modeling in improving the use of open questions. Participants and setting: 1168 lay participants recruited via crowdsourcing platforms were randomly assigned to 28 conditions varying the combination of modeling components. Methods: Each participant conducted one simulated child sexual abuse interview online after receiving one combination of the modeling components. The modeling components consisted of reading learning points regarding good and bad interview approaches, watching example videos of good and bad interviews, and reading the case outcomes (i.e. what had happened to the avatars interviewed in the example videos). Results: Correlation and regression analyses found positive impact of videos showing good interview practices on the quality of the participants' subsequent interviews while little effect was found of the learning points and the case outcomes. Surprisingly, we found a negative impact of videos showing bad interview practices on the quality of the participants’ interviews. Conclusions: The results demonstrated the scalability of interviewer training using automated avatars and the effectiveness of some modeling components in improving interviewer behavior. Overall, interviewers tended to follow the modeled behaviors regardless of whether these were positive or negative which resulted in improved interview skills through positive models but detrimental effects after negative models. However, the negative impact of bad modeling in the reproduction of learned behaviors in interview simulations should still be investigated in the context of transfer.http://www.sciencedirect.com/science/article/pii/S2950193825000956Child sexual abuse (CSA)Investigative interviewingSimulation trainingArtificial intelligenceAvatarSerious game
spellingShingle Shumpei Haginoya
Tatsuro Ibe
Shota Yamamoto
Naruyo Yoshimoto
Hazuki Mizushi
Pekka Santtila
Scalable training for child sexual abuse interviews in Japan: Using AI-driven avatars to test multiple behavioral modeling interventions
Child Protection and Practice
Child sexual abuse (CSA)
Investigative interviewing
Simulation training
Artificial intelligence
Avatar
Serious game
title Scalable training for child sexual abuse interviews in Japan: Using AI-driven avatars to test multiple behavioral modeling interventions
title_full Scalable training for child sexual abuse interviews in Japan: Using AI-driven avatars to test multiple behavioral modeling interventions
title_fullStr Scalable training for child sexual abuse interviews in Japan: Using AI-driven avatars to test multiple behavioral modeling interventions
title_full_unstemmed Scalable training for child sexual abuse interviews in Japan: Using AI-driven avatars to test multiple behavioral modeling interventions
title_short Scalable training for child sexual abuse interviews in Japan: Using AI-driven avatars to test multiple behavioral modeling interventions
title_sort scalable training for child sexual abuse interviews in japan using ai driven avatars to test multiple behavioral modeling interventions
topic Child sexual abuse (CSA)
Investigative interviewing
Simulation training
Artificial intelligence
Avatar
Serious game
url http://www.sciencedirect.com/science/article/pii/S2950193825000956
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