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# # import json
# # import matplotlib.pyplot as plt
# # from collections import Counter
# # # 读取数据
# # file_path = '/share/project/sunshuang/deep_search/data_syn/data/mixed_data/splits/tagged_domain_keypoints/merged_tagged_domain_keypoints_keywords_count_hop.json'
# # with open(file_path, 'r') as f:
# # data = json.load(f)
# # # 提取所需字段
# # domains = []
# # totals = []
# # special_totals = []
# # hops = []
# # for entry in data:
# # domain_info = entry.get('domain_keypoints', {})
# # # print(domain_info)
# # # print(f"idx: {entry['idx']}")
# # keywords_info = entry.get('keywords_count', {})
# # domains.append(domain_info.get('domain', 'Unknown'))
# # totals.append(keywords_info.get('total', 0))
# # special_totals.append(keywords_info.get('special_total', 0))
# # hops.append(entry.get('hop', 0))
# # # 统计domain分布并绘制饼图
# # domain_counts = Counter(domains)
# # domain_labels = [f'{dom} ({cnt})' for dom, cnt in domain_counts.items()]
# # domain_sizes = list(domain_counts.values())
# # plt.figure(figsize=(12, 7))
# # plt.pie(domain_sizes, labels=domain_labels, autopct='%1.1f%%', startangle=140)
# # plt.title('Domain Distribution (Count in Parentheses)')
# # plt.savefig('domain_distribution_pie.png')
# # plt.close()
# # # 辅助函数:绘制带数值标签的直方图
# # def plot_histogram(data, title, xlabel, output_filename):
# # counts = Counter(data)
# # sorted_items = sorted(counts.items())
# # labels, values = zip(*sorted_items)
# # plt.figure(figsize=(10, 6))
# # bars = plt.bar(labels, values)
# # plt.title(title)
# # plt.xlabel(xlabel)
# # plt.ylabel('Count')
# # for bar in bars:
# # height = bar.get_height()
# # plt.text(bar.get_x() + bar.get_width()/2., height, str(height),
# # ha='center', va='bottom')
# # plt.savefig(output_filename)
# # plt.close()
# # # 绘制各个直方图
# # plot_histogram(totals, 'Total Distribution', 'Total Value', 'total_histogram.png')
# # plot_histogram(special_totals, 'Special Total Distribution', 'Special Total Value', 'special_total_histogram.png')
# # plot_histogram(hops, 'Hop Distribution', 'Hop Value', 'hop_histogram.png')
# import json
# import matplotlib.pyplot as plt
# from collections import Counter, OrderedDict
# # 读取数据
# file_path = '/share/project/sunshuang/deep_search/data_syn/data/mixed_data/splits/tagged_domain_keypoints/merged_tagged_domain_keypoints_keywords_count_hop.json'
# with open(file_path, 'r') as f:
# data = json.load(f)
# # 提取所需字段
# domains = []
# totals = []
# special_totals = []
# hops = []
# for entry in data:
# domain_info = entry.get('domain_keypoints', {})
# keywords_info = entry.get('keywords_count', {})
# domains.append(domain_info.get('domain', 'Unknown'))
# totals.append(keywords_info.get('total', 0))
# special_totals.append(keywords_info.get('special_total', 0))
# hops.append(entry.get('hop', 0))
# # 统计domain分布
# domain_counts = Counter(domains)
# # 按照 value 降序排序
# domain_counts = OrderedDict(sorted(domain_counts.items(), key=lambda item: item[1], reverse=True))
# # 保存所有domain及其计数到JSON文件
# domain_count_file = 'domain_counts.json'
# with open(domain_count_file, 'w') as f:
# json.dump(domain_counts, f, indent=4)
# # 合并数目少于10的domain为Other
# threshold = 100
# filtered_domains = {}
# other_count = 0
# for domain, count in domain_counts.items():
# if count < threshold:
# other_count += count
# else:
# filtered_domains[domain] = count
# if other_count > 0:
# filtered_domains['Other'] = other_count
# # 绘制饼图
# domain_labels = [f'{dom} ({cnt})' for dom, cnt in filtered_domains.items()]
# domain_sizes = list(filtered_domains.values())
# plt.figure(figsize=(12, 7))
# plt.pie(domain_sizes, labels=domain_labels, autopct='%1.1f%%', startangle=140)
# plt.title('Domain Distribution (Count in Parentheses)')
# plt.savefig('domain_distribution_pie.png')
# plt.close()
# # 辅助函数:绘制带数值标签的直方图
# def plot_histogram(data, title, xlabel, output_filename):
# counts = Counter(data)
# sorted_items = sorted(counts.items())
# labels, values = zip(*sorted_items)
# plt.figure(figsize=(10, 6))
# bars = plt.bar(labels, values)
# plt.title(title)
# plt.xlabel(xlabel)
# plt.ylabel('Count')
# for bar in bars:
# height = bar.get_height()
# plt.text(bar.get_x() + bar.get_width()/2., height, str(height),
# ha='center', va='bottom')
# plt.savefig(output_filename)
# plt.close()
# # 绘制各个直方图
# plot_histogram(totals, 'Total Distribution', 'Total Value', 'total_histogram.png')
# plot_histogram(special_totals, 'Special Total Distribution', 'Special Total Value', 'special_total_histogram.png')
# plot_histogram(hops, 'Hop Distribution', 'Hop Value', 'hop_histogram.png')
import json
import matplotlib.pyplot as plt
from collections import Counter, OrderedDict
# 读取数据
file_path = '/share/project/sunshuang/deep_search/data_for_rl/musique_tagged/final_selected_dataset.json'
with open(file_path, 'r') as f:
data = json.load(f)
# 提取所需字段
domains = []
totals = []
special_totals = []
hops = []
for entry in data:
domain_info = entry.get('domain_keypoints', {})
keywords_info = entry.get('keywords_count', {})
domains.append(domain_info.get('domain', 'Unknown'))
totals.append(keywords_info.get('total', 0))
special_totals.append(keywords_info.get('special_total', 0))
hops.append(entry.get('hop', 0))
# 统计domain分布
domain_counts = Counter(domains)
# 按照 value 降序排序
domain_counts = OrderedDict(sorted(domain_counts.items(), key=lambda item: item[1], reverse=True))
# 保存所有domain及其计数到JSON文件
domain_count_file = 'domain_counts.json'
with open(domain_count_file, 'w') as f:
json.dump(domain_counts, f, indent=4)
# 合并数目少于100的domain为Other
threshold = 1
filtered_domains = {}
other_count = 0
for domain, count in domain_counts.items():
if count < threshold:
other_count += count
else:
filtered_domains[domain] = count
if other_count > 0:
filtered_domains['Other'] = other_count
# 绘制饼图
domain_labels = [f'{dom}' for dom, cnt in filtered_domains.items()] # 只显示domain名称
domain_sizes = list(filtered_domains.values())
plt.figure(figsize=(12, 7))
plt.pie(
domain_sizes,
labels=None, # 不直接在饼图上显示标签
autopct='%1.1f%%',
startangle=140
)
# 添加图例
plt.legend(
labels=[f'{dom} ({cnt})' for dom, cnt in filtered_domains.items()],
loc='upper right',
bbox_to_anchor=(1.2, 1), # 图例位置调整到右侧
fontsize=10
)
plt.title('Domain Distribution (Count in Parentheses)')
plt.tight_layout() # 优化布局
plt.savefig('domain_distribution_pie.png', bbox_inches='tight') # 避免裁剪
plt.close()
# 辅助函数:绘制带数值标签的直方图
def plot_histogram(data, title, xlabel, output_filename):
counts = Counter(data)
sorted_items = sorted(counts.items())
labels, values = zip(*sorted_items)
plt.figure(figsize=(10, 6))
bars = plt.bar(labels, values)
plt.title(title)
plt.xlabel(xlabel)
plt.ylabel('Count')
for bar in bars:
height = bar.get_height()
plt.text(bar.get_x() + bar.get_width()/2., height, str(height),
ha='center', va='bottom')
plt.savefig(output_filename)
plt.close()
# 绘制各个直方图
plot_histogram(totals, 'Total Distribution', 'Total Value', 'total_histogram.png')
plot_histogram(special_totals, 'Special Total Distribution', 'Special Total Value', 'special_total_histogram.png')
plot_histogram(hops, 'Hop Distribution', 'Hop Value', 'hop_histogram.png')