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CLEVR-X: A Visual Reasoning Dataset for Natural Language Explanations

Leonard Salewski, A. Sophia Koepke, Hendrik P. A. Lensch, Zeynep Akata

2022Lecture notes in computer science15 citationsDOIOpen Access PDF

Abstract

Abstract Providing explanations in the context of Visual Question Answering (VQA) presents a fundamental problem in machine learning. To obtain detailed insights into the process of generating natural language explanations for VQA, we introduce the large-scale CLEVR-X dataset that extends the CLEVR dataset with natural language explanations. For each image-question pair in the CLEVR dataset, CLEVR-X contains multiple structured textual explanations which are derived from the original scene graphs. By construction, the CLEVR-X explanations are correct and describe the reasoning and visual information that is necessary to answer a given question. We conducted a user study to confirm that the ground-truth explanations in our proposed dataset are indeed complete and relevant. We present baseline results for generating natural language explanations in the context of VQA using two state-of-the-art frameworks on the CLEVR-X dataset. Furthermore, we provide a detailed analysis of the explanation generation quality for different question and answer types. Additionally, we study the influence of using different numbers of ground-truth explanations on the convergence of natural language generation (NLG) metrics. The CLEVR-X dataset is publicly available at https://github.com/ExplainableML/CLEVR-X .

Topics & Concepts

Computer scienceQuestion answeringNatural languageNatural language processingContext (archaeology)Artificial intelligenceGround truthNatural (archaeology)Visual reasoningNatural language generationNatural language understandingInformation retrievalMachine learningPaleontologyBiologyArchaeologyHistoryMultimodal Machine Learning ApplicationsDomain Adaptation and Few-Shot LearningTopic Modeling