Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Harnessing the Power of Multi-Task Pretraining for Ground-Truth Level Natural Language Explanations

About

Natural language explanations promise to offer intuitively understandable explanations of a neural network's decision process in complex vision-language tasks, as pursued in recent VL-NLE models. While current models offer impressive performance on task accuracy and explanation plausibility, they suffer from a range of issues: Some models feature a modular design where the explanation generation module is poorly integrated with a separate module for task-answer prediction, employ backbone models trained on limited sets of tasks, or incorporate ad hoc solutions to increase performance on single datasets. We propose to evade these limitations by applying recent advances in large-scale multi-task pretraining of generative Transformer models to the problem of VL-NLE tasks. Our approach outperforms recent models by a large margin, with human annotators preferring the generated explanations over the ground truth in two out of three evaluated datasets. As a novel challenge in VL-NLE research, we propose the problem of multi-task VL-NLE and show that jointly training on multiple tasks can increase the explanation quality. We discuss the ethical implications of high-quality NLE generation and other issues in recent VL-NLE research.

Bj\"orn Pl\"uster, Jakob Ambsdorf, Lukas Braach, Jae Hee Lee, Stefan Wermter• 2022

Related benchmarks

TaskDatasetResultRank
Visual Entailmente-SNLI-VE e-ViL (test)
Human Eval85.7
7
Visual Question AnsweringVQA-X e-ViL (test)
Human Evaluation Score89.5
7
Visual Commonsense ReasoningVCR e-ViL (test)
Meteor Score12.2
6
Explanation GenerationVQA-X
Preference Rate (Ours)43.9
1
Explanation GenerationE-SNLI-VE
Preference: Prefer Ours41.1
1
Explanation GenerationVCR
Preference Rate (Ours)26.4
1
Showing 6 of 6 rows

Other info

Code

Follow for update