Low Rank Fusion based Transformers for Multimodal Sequences
Abstract
Our senses individually work in a coordinated fashion to express our emotional intentions. In this work, we experiment with modeling modality-specific sensory signals to attend to our latent multimodal emotional intentions and vice versa expressed via low-rank multimodal fusion and multimodal transformers. The low-rank factorization of multimodal fusion amongst the modalities helps represent approximate multiplicative latent signal interactions. Motivated by the work of~\cite{tsai2019MULT} and~\cite{Liu_2018}, we present our transformer-based cross-fusion architecture without any over-parameterization of the model. The low-rank fusion helps represent the latent signal interactions while the modality-specific attention helps focus on relevant parts of the signal. We present two methods for the Multimodal Sentiment and Emotion Recognition results on CMU-MOSEI, CMU-MOSI, and IEMOCAP datasets and show that our models have lesser parameters, train faster and perform comparably to many larger fusion-based architectures.
Cite
@article{arxiv.2007.02038,
title = {Low Rank Fusion based Transformers for Multimodal Sequences},
author = {Saurav Sahay and Eda Okur and Shachi H Kumar and Lama Nachman},
journal= {arXiv preprint arXiv:2007.02038},
year = {2020}
}
Comments
ACL 2020 workshop on Second Grand Challenge and Workshop on Multimodal Language