import json from collections import Counter import matplotlib.pyplot as plt import numpy as np from decimal import Decimal path = "/root/test/weitiao/data_process_bq/data/test_filtered_by_length_scored_by_rmv2.2.json" with open(path, "r", encoding="utf-8") as f: dataset = json.load(f, parse_float=Decimal) print(f"成功读取 {len(dataset)} 条数据") chosen_scores = [] rejected_scores = [] delta_scores = [] records = [] for item in dataset: c = item.get("chosen_score") r = item.get("rejected_score") d = item.get("delta") if c is None or r is None or d is None: continue chosen_scores.append(c) rejected_scores.append(r) delta_scores.append(d) records.append({"chosen": c, "rejected": r, "delta": d}) print(f"有效样本数:{len(records)}") min_d = int(np.floor(min(delta_scores))) max_d = int(np.ceil(max(delta_scores))) bins = list(range(min_d, max_d + 1)) hist_counts = Counter(int(d) for d in delta_scores) plt.figure(figsize=(12, 6)) plt.bar(hist_counts.keys(), hist_counts.values()) plt.title("Delta Score Distribution (bin=1)") plt.xlabel("Delta Score (integer)") plt.ylabel("Count") plt.grid(axis='y') plt.savefig("/root/test/weitiao/data_process_bq/photo/delta_score_openrlhf_rmv2.2.png", dpi=200) plt.close() print("柱状图已保存为 delta_score_openrlhf_rmv2.2.png") def top3(counter): return counter.most_common(3) chosen_counter = Counter(chosen_scores) rejected_counter = Counter(rejected_scores) delta_counter = Counter(delta_scores) print("\n=== Top 3 values for each score field ===") print("chosen_score:", top3(chosen_counter)) print("rejected_score:", top3(rejected_counter)) print("delta_score:", top3(delta_counter)) print("\n=== Overlap Analysis ===") # delta_score 出现最多的值 delta_top_value, delta_top_count = delta_counter.most_common(1)[0] # 筛选出这些记录 subset = [rec for rec in records if rec["delta"] == delta_top_value] subset_chosen_counter = Counter(rec["chosen"] for rec in subset) subset_rejected_counter = Counter(rec["rejected"] for rec in subset) chosen_in_subset, chosen_cnt = subset_chosen_counter.most_common(1)[0] rejected_in_subset, rejected_cnt = subset_rejected_counter.most_common(1)[0] total_subset = len(subset) print(f"delta_score 最常出现的值: {delta_top_value} (共 {delta_top_count} 条)") print(f" -> 在这些样本中 chosen_score 最常出现: {chosen_in_subset} " f"({chosen_cnt} 次,占比 {chosen_cnt/total_subset:.2%})") print(f" -> 在这些样本中 rejected_score 最常出现: {rejected_in_subset} " f"({rejected_cnt} 次,占比 {rejected_cnt/total_subset:.2%})")