A Multi-modal Approach to Fine-grained Opinion Mining on Video Reviews
Date
2017
Authors
Marrese-Taylor, Edison
Rodriguez Opazo, Cristian
Balazs, Jorge A.
Gould, Stephen
Matsuo, Yutaka
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Volume Title
Publisher
Association for Computational Linguistics
Abstract
Despite the recent advances in opinion mining for written reviews, few works have tackled the problem on other sources of reviews. In light of this issue, we propose a multi-modal approach for mining fine-grained opinions from video reviews that is able to determine the aspects of the item under review that are being discussed and the sentiment orientation towards them. Our approach works at the sentence level without the need for time annotations and uses features derived from the audio, video and language transcriptions of its contents. We evaluate our approach on two datasets and show that leveraging the video and audio modalities consistently provides increased performance over text-only baselines, providing evidence these extra modalities are key in better understanding video reviews.
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Conference paper
Book Title
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics
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Open Access
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Creative Commons Attribution 4.0 International License.
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