TY - JOUR T1 - Tailored Sentiment Analysis of Economic News Based on a Mixture of Quotation and Attribute Encoders AU - Choi, Seo-In AU - Park, Dae-Min AU - On, Byung-Won JO - Journal of KIISE, JOK PY - 2025 DA - 2025/1/14 DO - 10.5626/JOK.2025.52.4.319 KW - sentiment analysis KW - deep learning KW - BERT KW - KoBERT KW - KLUE KW - mixture of experts (MoE) AB - News articles provide information on various topics such as politics, economics, society, and culture. Their neutral tone often limits the ability of traditional sentiment analysis models to effectively capture emotions. To address this issue, we proposed a novel sentiment analysis model that combined quotations with article attribute values. For sentiment analysis, we employed deep learning-based models such as BERT, KoBERT (optimized for Korean), and KLUE. Embedding results from these models were integrated using a Mixture of Experts (MoE) structure to simultaneously learn the emotional information in quotations and the attribute information of articles. Experimental results demonstrated that the proposed models, including the attribute-based phrase and attribute group embedding models, achieved higher accuracy and reliability than conventional quotation-only analysis and traditional machine learning models. In particular, the KLUE model optimized for Korean data showed improved performance. Incorporating diverse attribute information significantly enhanced predictive accuracies of sentiment analysis models. These findings suggest that effectively combining quotation data with article attribute information enables more sophisticated sentiment analysis, even for neutral news articles.