PROSPECTS FOR INCREASING RELIABILITY IN VERBAL INVESTIGATIVE ACTIONS USING ARTIFICIAL INTELLIGENCE TOOLS

Main Article Content

Nurmukhammed Tazhigulov
Yevgeniy Shulgin
Larissa Kussainova
Ainura Omarova
Serguei Cheloukhine

Abstract

Kazakhstan has prioritised digitalising its criminal justice processes, implementing AI-driven tools such as automated forensic systems and "digital autopsy" platforms to increase efficiency and transparency. However, challenges persist: interrogation recordings can still be falsified or incomplete due to inadequate technical equipment and procedural gaps, undermining evidence integrity. This study investigates a combined AI-blockchain framework to enhance the reliability of verbal investigative actions. It examines an integrated system in which automatic speech recognition (ASR) transcribes interrogation audio, and a private blockchain ledger immutably timestamps each transcript. The study employs a mixed-methods approach: data include recorded criminal interrogation sessions (audio transcripts) and relevant legal documents. A neural ASR model was trained on these transcripts (approximately 50 sessions) to produce digital text, and standard analytical methods were applied to evaluate system performance. Simultaneously, each transcript was recorded on a blockchain registry, and metrics such as transcription accuracy and error rate were measured. Results show the proposed system attains high transcription accuracy (94% word recognition) and significantly reduces manual review time (by about 40%). In experiments, word error rates dropped from roughly 10% (baseline) to 5% with the ASR model, and the blockchain ledger recorded 100% of transcripts with negligible overhead. The findings suggest that integrating AI-driven transcription with blockchain anchoring markedly enhances the fidelity of investigative recordings. Quantitatively, the AI-blockchain platform halved transcription errors and enabled reliable reconstruction of interrogation timelines. These results indicate the combined approach substantially improves the reliability and integrity of verbal evidence, reinforcing the objective completeness of recorded testimony.


JEL Classification Codes: K10, K24, K40, K14.

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Section

Research Paper/Theoretical Paper/Review Paper/Short Communication Paper

Author Biographies

Nurmukhammed Tazhigulov, PhD Student, Academy of Law Enforcement Agencies at the Prosecutor General’s Office of the Republic of Kazakhstan

Nurmukhammed Tazhigulov is a PhD student at the Academy of Law Enforcement Agencies under the Prosecutor General’s Office of the Republic of Kazakhstan. His academic work focuses on legal studies, with particular interest in law enforcement systems, criminal justice, and prosecutorial practices. Through his research, he aims to contribute to the development and modernization of legal frameworks and institutional effectiveness in Kazakhstan. He is engaged in scholarly activities that explore contemporary challenges in law enforcement and seeks to bridge theoretical knowledge with practical application in the field of justice and public administration.

Yevgeniy Shulgin , Professor, School of Law, Karaganda Academy of the Ministry of Internal Affairs of the Republic of Kazakhstan named after B.S. Beisenov, Karaganda, Kazakhstan

Yevgeniy Shulgin is a Professor at the School of Law, Karaganda Academy of the Ministry of Internal Affairs of the Republic of Kazakhstan named after B.S. Beisenov, located in Karaganda, Kazakhstan. He specializes in legal studies, contributing extensively to the academic and professional development of law enforcement and legal education. His work focuses on advancing legal scholarship, training future professionals, and engaging in research on contemporary issues in law and public policy.

Larissa Kussainova , Professor, School of Law, Karaganda National Research University named after academician Ye.A.Buketov, Karaganda, Kazakhstan

Larissa Kussainova is a Professor at the School of Law, Karaganda National Research University named after Academician Ye.A. Buketov, in Karaganda, Kazakhstan. She specializes in legal studies, with a strong focus on advancing academic research and legal education. Her work contributes to the development of legal scholarship, and she is actively engaged in teaching, mentoring students, and addressing contemporary issues in law and society.

Ainura Omarova , Professor, School of Management, Karaganda National Research University named after academician Ye.A.Buketov, Karaganda, Kazakhstan

Ainura Omarova is a Professor at the School of Management, Karaganda National Research University named after Academician Ye.A. Buketov, in Karaganda, Kazakhstan. She specializes in management studies, contributing to the advancement of academic research and higher education. Her work focuses on developing managerial knowledge and practices, and she is actively involved in teaching, mentoring students, and engaging in research on contemporary issues in management and organizational development.

Serguei Cheloukhine, Professor, John Jay College of Criminal Justice, New York, USA

Serguei Cheloukhine is a Professor at John Jay College of Criminal Justice, City University of New York, USA. He specializes in criminal justice, with a focus on issues related to law enforcement, organized crime, and international security. His academic work contributes to advancing research and policy discussions in the field, and he is actively engaged in teaching, mentoring students, and promoting scholarly inquiry into contemporary challenges in criminal justice.

How to Cite

Tazhigulov, N. ., Shulgin , Y., Kussainova , L. ., Omarova , A. ., & Cheloukhine, S. . (2026). PROSPECTS FOR INCREASING RELIABILITY IN VERBAL INVESTIGATIVE ACTIONS USING ARTIFICIAL INTELLIGENCE TOOLS. Bangladesh Journal of Multidisciplinary Scientific Research, 11(2), 84-95. https://doi.org/10.46281/bjmsr.v11i2.2856

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