import pandas as pd import matplotlib.pyplot as plt import numpy as np import argparse parser = argparse.ArgumentParser() parser.add_argument('--subname', type=str, default='arxiv', help='subset name') parser.add_argument('--temp', type=float, default=0.0, help='generation temperature') parser.add_argument('--topp', type=float, default=1.0, help='generation top_p') parser.add_argument('--epoch', type=int, default=9, help='epoch') parser.add_argument('--logging', type=str, default='', help='logging name') args = parser.parse_args() # 文件路径 p_value_path = f'/workspace/pile_{args.subname}_temp_{args.temp}_topp_{args.topp}_pvalue_ft_more_layers_{args.subname}_epoch_{args.epoch}_{args.logging}.csv' loss_path = f'/workspace/pile_{args.subname}_temp_{args.temp}_topp_{args.topp}_loss_ft_more_layers_{args.subname}_epoch_{args.epoch}_{args.logging}.csv' # 提取 "ks_pvalue" 列为列表 p_value_df = pd.read_csv(p_value_path) p_value_ls = p_value_df['ks_pvalue'].tolist() # 提取 "member_loss" 和 "nonmember_loss" 列为列表 loss_df = pd.read_csv(loss_path) member_loss_ls = loss_df['member_loss'].tolist() nonmember_loss_ls = loss_df['nonmember_loss'].tolist() sum_loss_ls = [sum(x) for x in zip(member_loss_ls, nonmember_loss_ls)] member_loss_ls_norm = (member_loss_ls - np.min(member_loss_ls)) / (np.max(member_loss_ls) - np.min(member_loss_ls)) nonmember_loss_ls_norm = (nonmember_loss_ls - np.min(nonmember_loss_ls)) / (np.max(nonmember_loss_ls) - np.min(nonmember_loss_ls)) sum_loss_ls_norm = (sum_loss_ls - np.min(sum_loss_ls)) / (np.max(sum_loss_ls) - np.min(sum_loss_ls)) df_dict = {"sum_loss":sum_loss_ls_norm} df_pvalue_dict = {"pvalue":p_value_ls} df_out = pd.DataFrame(df_dict) df_pvalue_out = pd.DataFrame(df_pvalue_dict) df_out.to_csv(f"/workspace/p_value_loss_ft_more_layers_{args.subname}_epoch_{args.epoch}_{args.logging}/pile-full-subsets-{args.subname}_temp_{args.temp}_topp_{args.topp}-sum-loss_epoch_9.csv", index=False) df_pvalue_out.to_csv(f"/workspace/p_value_loss_ft_more_layers_{args.subname}_epoch_{args.epoch}_{args.logging}/pile-full-subsets-{args.subname}_temp_{args.temp}_topp_{args.topp}-pvalue_epoch_9.csv", index=False) # 绘制第一个折线图:p_value_ls vs member_loss_ls_norm plt.figure(figsize=(10, 5)) plt.plot(p_value_ls, label='p_value_ls') plt.plot(sum_loss_ls_norm, label='sum_loss_ls_norm') plt.title('p_value_ls vs sum_loss_ls_norm') plt.xlabel('Index') plt.ylabel('Value') plt.legend() plt.show() plt.savefig(f'/workspace/p_value_loss_ft_more_layers_{args.subname}_epoch_{args.epoch}_{args.logging}/pile-full-subsets-{args.subname}_temp_{args.temp}_topp_{args.topp}-sum-loss-pvalue_epoch_9.png') plt.figure(figsize=(10, 5)) plt.plot(p_value_ls, label='p_value_ls') plt.plot(nonmember_loss_ls_norm, label='nonmember_loss_ls_norm') plt.title('p_value_ls vs nonmember_loss_ls_norm') plt.xlabel('Index') plt.ylabel('Value') plt.legend() plt.show() plt.savefig(f'/workspace/p_value_loss_ft_more_layers_{args.subname}_epoch_{args.epoch}_{args.logging}/pile-full-subsets-{args.subname}_temp_{args.temp}_topp_{args.topp}-nonmember-loss-pvalue_epoch_9.png')