name: Evasion Bench description: > EvasionBench is a benchmark dataset for detecting evasive answers in earnings call Q&A sessions. The task is to classify how directly corporate management addresses questions from financial analysts. tasks: - id: evasion_bench config: default split: train epochs: 1 shuffle_choices: true field_spec: input: question target: "eva4b_label_letter" choices: "choices" metadata: ["answer"] solvers: - name: prompt_template args: template: | Question: {prompt} Answer: {answer} - name: multiple_choice args: template: | You are a financial analyst. Your task is to Detect Evasive Answers in Financial Q&A. The entire content of your response should be of the following format: 'ANSWER: $LETTER' (without quotes) where LETTER is one of {letters}. {question} {choices} scorers: - name: choice