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On the Significance of Question Encoder Sequence Model in the Out-of-Distribution Performance in Visual Question Answering

2021-08-28 05:51:27
Gouthaman KV, Anurag Mittal

Abstract

Generalizing beyond the experiences has a significant role in developing practical AI systems. It has been shown that current Visual Question Answering (VQA) models are over-dependent on the language-priors (spurious correlations between question-types and their most frequent answers) from the train set and pose poor performance on Out-of-Distribution (OOD) test sets. This conduct limits their generalizability and restricts them from being utilized in real-world situations. This paper shows that the sequence model architecture used in the question-encoder has a significant role in the generalizability of VQA models. To demonstrate this, we performed a detailed analysis of various existing RNN-based and Transformer-based question-encoders, and along, we proposed a novel Graph attention network (GAT)-based question-encoder. Our study found that a better choice of sequence model in the question-encoder improves the generalizability of VQA models even without using any additional relatively complex bias-mitigation approaches.

Abstract (translated)

URL

https://arxiv.org/abs/2108.12585

PDF

https://arxiv.org/pdf/2108.12585.pdf


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