English

Select-Additive Learning: Improving Generalization in Multimodal Sentiment Analysis

Computation and Language 2017-04-14 v2 Information Retrieval

Abstract

Multimodal sentiment analysis is drawing an increasing amount of attention these days. It enables mining of opinions in video reviews which are now available aplenty on online platforms. However, multimodal sentiment analysis has only a few high-quality data sets annotated for training machine learning algorithms. These limited resources restrict the generalizability of models, where, for example, the unique characteristics of a few speakers (e.g., wearing glasses) may become a confounding factor for the sentiment classification task. In this paper, we propose a Select-Additive Learning (SAL) procedure that improves the generalizability of trained neural networks for multimodal sentiment analysis. In our experiments, we show that our SAL approach improves prediction accuracy significantly in all three modalities (verbal, acoustic, visual), as well as in their fusion. Our results show that SAL, even when trained on one dataset, achieves good generalization across two new test datasets.

Keywords

Cite

@article{arxiv.1609.05244,
  title  = {Select-Additive Learning: Improving Generalization in Multimodal Sentiment Analysis},
  author = {Haohan Wang and Aaksha Meghawat and Louis-Philippe Morency and Eric P. Xing},
  journal= {arXiv preprint arXiv:1609.05244},
  year   = {2017}
}

Comments

Supplementary files at: http://www.cs.cmu.edu/~haohanw/document/sal_supp.pdf

R2 v1 2026-06-22T15:52:37.014Z