A criteria-based classification model using augmentation and contrastive learning for analyzing imbalanced statement data
Abstract Criteria Based Content Analysis (CBCA) is a forensic tool that analyzes victim statements. It involves the categorization of victims’ statements into 19 distinct criteria classifications, playing a crucial role in evaluating the authenticity of testimonies by discerning whether they are rooted in genuine experiences or fabricated accounts. The exclusion of subjective opinions becomes imperative to assess statements through this forensic tool objectively. This study proposes developing an objective classification model for CBCA-based statement analysis using natural language processing techniques.
This article is available to registered members
Create a free account to access our full library of peer-reviewed research on medical cannabis.
Join — it's freeAlready a member? Log in
