Semantic frame-based approach for reade-remotion detection

Yung Chun Chang, Cen Chieh Chen, Wen Lian Hsu

研究成果: 書貢獻/報告類型會議貢獻

1 引文 (Scopus)

摘要

Previous studies on emotion classification mainly focus on the writer's emotional state. By contrast, this research emphasizes emotion detection from the readers' perspective. The classification of documents into reader-emotion categories can be applied in several ways, and one of the applications is to retain only the documents that trigger desired emotions to enable users to retrieve documents that contain relevant contents and at the same time instill proper emotions. However, current IR systems lack the ability to discern emotions within texts, and the detection of reader-emotion has yet to achieve a comparable performance. Moreover, previous machine learning-based approaches are generally not human understandable. Thereby, it is difficult to pinpoint the reason for recognition failures and understand the types of emotions articles inspire in their readers. In this paper, we propose a flexible semantic frame-based approach (FBA) for reader-emotion detection that simulates such process in a human perceptive manner. FBA is a highly automated process that incorporates various knowledge sources to learn semantic frames from raw text that characterize an emotion and are comprehensible for humans. Generated frames are adopted to predict reader-emotion through an alignment-based matching algorithm that allows a semantic frame to be partially matched through a statistical scoring scheme. Experimental results demonstrate that our approach can effectively detect reader-emotions by exploiting the syntactic structures and semantic associations in the context, while outperforming currently well-known statistical text classification method sand the stat-of-the-art reader-emotion detection method.
原文英語
主出版物標題Pacific Asia Conference on Information Systems, PACIS 2015 - Proceedings
發行者Pacific Asia Conference on Information Systems
出版狀態已發佈 - 2015
對外發佈Yes
事件19th Pacific Asia Conference on Information Systems, PACIS 2015 - Singapore, 新加坡
持續時間: 七月 5 2015七月 9 2015

會議

會議19th Pacific Asia Conference on Information Systems, PACIS 2015
國家新加坡
城市Singapore
期間7/5/157/9/15

指紋

Semantics
Syntactics
Learning systems
Sand

ASJC Scopus subject areas

  • Information Systems

引用此文

Chang, Y. C., Chen, C. C., & Hsu, W. L. (2015). Semantic frame-based approach for reade-remotion detection. 於 Pacific Asia Conference on Information Systems, PACIS 2015 - Proceedings Pacific Asia Conference on Information Systems.

Semantic frame-based approach for reade-remotion detection. / Chang, Yung Chun; Chen, Cen Chieh; Hsu, Wen Lian.

Pacific Asia Conference on Information Systems, PACIS 2015 - Proceedings. Pacific Asia Conference on Information Systems, 2015.

研究成果: 書貢獻/報告類型會議貢獻

Chang, YC, Chen, CC & Hsu, WL 2015, Semantic frame-based approach for reade-remotion detection. 於 Pacific Asia Conference on Information Systems, PACIS 2015 - Proceedings. Pacific Asia Conference on Information Systems, 19th Pacific Asia Conference on Information Systems, PACIS 2015, Singapore, 新加坡, 7/5/15.
Chang YC, Chen CC, Hsu WL. Semantic frame-based approach for reade-remotion detection. 於 Pacific Asia Conference on Information Systems, PACIS 2015 - Proceedings. Pacific Asia Conference on Information Systems. 2015
Chang, Yung Chun ; Chen, Cen Chieh ; Hsu, Wen Lian. / Semantic frame-based approach for reade-remotion detection. Pacific Asia Conference on Information Systems, PACIS 2015 - Proceedings. Pacific Asia Conference on Information Systems, 2015.
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