ChartQA-X: Generating Explanations for Visual Chart Reasoning
By: Shamanthak Hegde, Pooyan Fazli, Hasti Seifi
Potential Business Impact:
Helps computers explain charts and answer questions.
The ability to explain complex information from chart images is vital for effective data-driven decision-making. In this work, we address the challenge of generating detailed explanations alongside answering questions about charts. We present ChartQA-X, a comprehensive dataset comprising 30,299 chart samples across four chart types, each paired with contextually relevant questions, answers, and explanations. Explanations are generated and selected based on metrics such as faithfulness, informativeness, coherence, and perplexity. Our human evaluation with 245 participants shows that model-generated explanations in ChartQA-X surpass human-written explanations in accuracy and logic and are comparable in terms of clarity and overall quality. Moreover, models fine-tuned on ChartQA-X show substantial improvements across various metrics, including absolute gains of up to 24.57 points in explanation quality, 18.96 percentage points in question-answering accuracy, and 14.75 percentage points on unseen benchmarks for the same task. By integrating explanatory narratives with answers, our approach enables agents to convey complex visual information more effectively, improving comprehension and greater trust in the generated responses.
Similar Papers
ChartQAPro: A More Diverse and Challenging Benchmark for Chart Question Answering
Computation and Language
Helps computers understand charts better.
DocVXQA: Context-Aware Visual Explanations for Document Question Answering
CV and Pattern Recognition
Shows where the computer found the answer.
DomainCQA: Crafting Knowledge-Intensive QA from Domain-Specific Charts
Computation and Language
Teaches computers to understand complex charts better.