| import json | |
| import os | |
| from collections import defaultdict | |
| from compare_value import compare_value | |
| from compare_sequence import is_sequence_match_ordered, is_sequence_match_unordered | |
| from compare_str import fuzzy_string_match | |
| from compare_multiple import multiple_choice_checker | |
| def has_more_digits_than_other_chars(s): | |
| if isinstance(s, (int, float)): | |
| return True | |
| s = s.replace('.', '1') | |
| s = s.replace(',', '1') | |
| s = s.replace('$', '1') | |
| s = s.replace('B', '1') | |
| s = s.replace('T', '1') | |
| s = s.replace('K', '1') | |
| digit_count = 0 | |
| other_count = 0 | |
| for char in s: | |
| if char.isdigit(): | |
| digit_count += 1 | |
| else: | |
| other_count += 1 | |
| return digit_count > other_count | |
| def evaluate_answer(answer, response, qtype): | |
| if qtype in [1, 2, 101, 102]: | |
| if has_more_digits_than_other_chars(answer): | |
| return "Exact Numeric", compare_value(answer, response) | |
| else: | |
| return "Vague String", fuzzy_string_match(answer, response) | |
| elif qtype in [72, 54]: | |
| return "Exact Numeric", compare_value(answer, response) | |
| elif qtype in [10, 50, 51, 52, 110]: | |
| return "Vague Numeric", compare_value(answer, response, eps=0.05) | |
| elif qtype in [13, 103, 113]: | |
| if answer.lower() in response.lower(): | |
| return "Exact String", True | |
| return "Exact String", compare_value(answer, response) | |
| elif qtype in [40, 41, 42, 43, 44]: | |
| response = response.replace("\n", ",") | |
| response = response.replace(" ", "") | |
| answer = answer.replace(" ", "") | |
| return "Vague Unordered Sequence", is_sequence_match_unordered(answer.split(","), response.split(","), fuzzy=True) | |
| elif qtype in [60, 61, 70, 80, 90]: | |
| return "Vague String", fuzzy_string_match(answer, response) | |
| elif qtype in [71]: | |
| response = response.replace("\n\n", "") | |
| response = response.replace("\n", ",") | |
| response = response.replace(" ", "") | |
| response = response.replace("<", ",") | |
| response = response.replace(">", ",") | |
| if response.count(":") == 1: | |
| response = response[response.find(':') + 1:] | |
| answer = answer.replace(" ", "") | |
| return "Vague Ordered Sequence", is_sequence_match_ordered(answer.split(","), response.split(","), fuzzy=True) | |
| elif qtype in [30]: | |
| for an in answer: | |
| if is_sequence_match_ordered(an.split(","), response.split(","), fuzzy=True): | |
| return "Vague Ordered Sequence", True | |
| return "Vague Ordered Sequence", False | |
| elif qtype in [202,1919810,1919811,1919812]: | |
| return "Exact String", multiple_choice_checker(answer , response) | |
| else: | |
| print('there is no qtype',qtype) | |
| return "Exact Numeric", compare_value(answer, response) | |
| def process_json_data(json_data): | |
| results = [] | |
| stats = { | |
| 'qtype_stats': defaultdict(lambda: {'correct': 0, 'total': 0}), | |
| 'figure_stats': defaultdict(lambda: {'correct': 0, 'total': 0}), | |
| 'total_correct': 0, | |
| 'total_questions': 0 | |
| } | |
| for key, item in json_data.items(): | |
| question_id = item["question_id"] | |
| if 'qtype' in item: | |
| qtype = item["qtype"] | |
| elif 'qid' in item: | |
| qtype = item["qid"] | |
| else: | |
| qtype = 1 | |
| if "response" not in item or item['response'] == 'Error!': | |
| continue | |
| answer = str(item["answer"]) | |
| response = str(item["response"]) | |
| response = response.replace(" "," ") | |
| figure_path = item["figure_path"] | |
| if type(figure_path) == list: | |
| figure_path = figure_path[0] | |
| eval_method, score = evaluate_answer(answer, response, qtype) | |
| results.append({ | |
| "figure_path": figure_path, | |
| "answer": answer, | |
| "response": response, | |
| "question": item["question"] if "question" in item else "", | |
| "question_id": question_id, | |
| "qtype": qtype, | |
| "score": score, | |
| "eval_method": eval_method | |
| }) | |
| stats['qtype_stats'][qtype]['correct'] += score | |
| stats['qtype_stats'][qtype]['total'] += 1 | |
| stats['figure_stats'][figure_path]['correct'] += score | |
| stats['figure_stats'][figure_path]['total'] += 1 | |
| stats['total_correct'] += score | |
| stats['total_questions'] += 1 | |
| return results, stats | |
| def calculate_accuracy(correct, total): | |
| return round(correct / total * 100, 2) if total > 0 else 0.0 | |
| def generate_stat_report(stats): | |
| report = {} | |
| report['overall_accuracy'] = calculate_accuracy( | |
| stats['total_correct'], stats['total_questions']) | |
| qtype_report = {} | |
| for qtype, counts in stats['qtype_stats'].items(): | |
| qtype_report[f"qtype_{qtype}"] = { | |
| 'accuracy': calculate_accuracy(counts['correct'], counts['total']), | |
| 'correct': counts['correct'], | |
| 'total': counts['total'] | |
| } | |
| report['qtype_accuracy'] = qtype_report | |
| figure_report = {} | |
| for figure_path, counts in stats['figure_stats'].items(): | |
| figure_report[figure_path] = { | |
| 'accuracy': calculate_accuracy(counts['correct'], counts['total']), | |
| 'correct': counts['correct'], | |
| 'total': counts['total'] | |
| } | |
| report['figure_accuracy'] = figure_report | |
| return report | |
| from copy import deepcopy | |
| def evaluate(input_file, output_file=None, stats_file=None): | |
| os.makedirs(os.path.dirname(output_file), exist_ok=True) | |
| with open(input_file, 'r', encoding='utf-8') as f: | |
| data = json.load(f) | |
| if type(data).__name__=='list': | |
| __ = deepcopy(data) | |
| data = {} | |
| for _ in __: | |
| data[_['question_id']] = deepcopy(_) | |
| results, stats = process_json_data(data) | |
| report = generate_stat_report(stats) | |
| if output_file: | |
| with open(output_file, 'w', encoding='utf-8') as f: | |
| json.dump(results, f, indent=2, ensure_ascii=False) | |
| print(f"Score save to {output_file}") | |
| if stats_file: | |
| with open(stats_file, 'w', encoding='utf-8') as f: | |
| json.dump(report, f, indent=2, ensure_ascii=False) | |
| print(f"Statis saved to {stats_file}") | |
| print(f"Acc: {report['overall_accuracy']}% {stats['total_questions']}") | |
| return results, report | |