학술논문

Classification-Aware Neural Topic Model Combined With Interpretable Analysis -- For Conflict Classification
Document Type
Working Paper
Source
Subject
Computer Science - Machine Learning
Computer Science - Computation and Language
Computer Science - Information Retrieval
Language
Abstract
A large number of conflict events are affecting the world all the time. In order to analyse such conflict events effectively, this paper presents a Classification-Aware Neural Topic Model (CANTM-IA) for Conflict Information Classification and Topic Discovery. The model provides a reliable interpretation of classification results and discovered topics by introducing interpretability analysis. At the same time, interpretation is introduced into the model architecture to improve the classification performance of the model and to allow interpretation to focus further on the details of the data. Finally, the model architecture is optimised to reduce the complexity of the model.
Comment: Accepted by RANLP 2023