Enhancing Multi-Modal Video Sentiment Classification Through Semi-Supervised Clustering
- URL: http://arxiv.org/abs/2501.06475v1
- Date: Sat, 11 Jan 2025 08:04:39 GMT
- Title: Enhancing Multi-Modal Video Sentiment Classification Through Semi-Supervised Clustering
- Authors: Mehrshad Saadatinia, Minoo Ahmadi, Armin Abdollahi,
- Abstract summary: We aim to improve video sentiment classification by focusing on two key aspects: the video itself, the accompanying text, and the acoustic features.
We are developing a method that utilizes clustering-based semi-supervised pre-training to extract meaningful representations from the data.
- Score: 0.0
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- Abstract: Understanding emotions in videos is a challenging task. However, videos contain several modalities which make them a rich source of data for machine learning and deep learning tasks. In this work, we aim to improve video sentiment classification by focusing on two key aspects: the video itself, the accompanying text, and the acoustic features. To address the limitations of relying on large labeled datasets, we are developing a method that utilizes clustering-based semi-supervised pre-training to extract meaningful representations from the data. This pre-training step identifies patterns in the video and text data, allowing the model to learn underlying structures and relationships without requiring extensive labeled information at the outset. Once these patterns are established, we fine-tune the system in a supervised manner to classify the sentiment expressed in videos. We believe that this multi-modal approach, combining clustering with supervised fine-tuning, will lead to more accurate and insightful sentiment classification, especially in cases where labeled data is limited.
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