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3 months ago

Multimodal Multi-loss Fusion Network for Sentiment Analysis

Zehui Wu Ziwei Gong Jaywon Koo Julia Hirschberg

Multimodal Multi-loss Fusion Network for Sentiment Analysis

Abstract

This paper investigates the optimal selection and fusion of feature encoders across multiple modalities and combines these in one neural network to improve sentiment detection. We compare different fusion methods and examine the impact of multi-loss training within the multi-modality fusion network, identifying surprisingly important findings relating to subnet performance. We have also found that integrating context significantly enhances model performance. Our best model achieves state-of-the-art performance for three datasets (CMU-MOSI, CMU-MOSEI and CH-SIMS). These results suggest a roadmap toward an optimized feature selection and fusion approach for enhancing sentiment detection in neural networks.

Code Repositories

zehuiwu/MMML
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
multimodal-sentiment-analysis-on-ch-simsMMML
CORR: 73.26
F1: 82.9
MAE: 0.332
multimodal-sentiment-analysis-on-cmu-mosei-1MMML
Acc-5: 57.45
Acc-7: 54.77
Accuracy: 88.22
Corr: 81.42
F1: 88.04
MAE: 0.5072
multimodal-sentiment-analysis-on-cmu-mosiMMML
Acc-2: 90.35
Acc-5: 60.01
Acc-7: 52.72
Corr: 0.8824
F1: 90.35
MAE: 0.5573
multimodal-sentiment-analysis-on-mosiMMML
Accuracy: 90.35
F1 score: 90.35

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Multimodal Multi-loss Fusion Network for Sentiment Analysis | Papers | HyperAI