reports_process.py 5.9 KB

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  1. from models.rank.data.config import ImportanceFeaturesMap, DeliveryConfig
  2. import os
  3. import pandas as pd
  4. def filter_data(data, filter_dict):
  5. """从shap结果中过滤特征相关性数据"""
  6. product_content = []
  7. for key, value in filter_dict.items():
  8. if key != 'product_code':
  9. product_content.append(f"{ImportanceFeaturesMap.PRODUCT_FEATRUES_MAP[key]}({value})")
  10. data = data[data['product_feat'].isin(product_content)]
  11. return data
  12. def feats_relation_process(shap_result, product_content):
  13. """生成特征相关性分析报告"""
  14. # 筛选商户相关性排序结果
  15. report = filter_data(shap_result, product_content).copy()
  16. cust_feats_sum = report.groupby("cust_feat")["relation"].sum()
  17. # 筛选出正相关性的cust_feat
  18. valid_cust_feats = cust_feats_sum[cust_feats_sum > 0].index.to_list()
  19. report = report[report["cust_feat"].isin(valid_cust_feats)]
  20. report = report.reset_index(drop=True)
  21. report = report.rename(
  22. columns = {
  23. "product_feat": "卷烟特征",
  24. "cust_feat": "商户特征",
  25. "relation": "相关性"
  26. }
  27. )
  28. return report
  29. def calculate_delivery_by_recommend_data(recommend_data, recommend_cust_infos, delivery_count):
  30. """根据推荐数据计算投放量,并生成推荐商户报告"""
  31. recommend_data = pd.DataFrame(recommend_data)
  32. cust_ids = recommend_cust_infos.set_index("BB_RETAIL_CUSTOMER_CODE")
  33. recommend_data = recommend_data.join(cust_ids, on="cust_code", how="inner")
  34. recommend_data = recommend_data[["cust_code", "BB_RETAIL_CUSTOMER_NAME", "recommend_score"]]
  35. # 1. 计算每个商户的理论应得数量(带小数)
  36. recommend_data["delivery_float"] = (
  37. recommend_data["recommend_score"] / recommend_data["recommend_score"].sum() * delivery_count
  38. )
  39. # 2. 向下取整得到基础配额
  40. recommend_data["delivery_count"] = recommend_data["delivery_float"].astype(int)
  41. # 3. 计算余数并排序
  42. recommend_data["remainder"] = recommend_data["delivery_float"] - recommend_data["delivery_count"]
  43. recommend_data = recommend_data.sort_values("remainder", ascending=False)
  44. # 4. 将剩余配额按余数从大到小分配
  45. remaining = delivery_count - recommend_data["delivery_count"].sum()
  46. recommend_data.iloc[:remaining, recommend_data.columns.get_loc("delivery_count")] += 1
  47. recommend_data = recommend_data.drop(columns=["delivery_float", "remainder"])
  48. recommend_data = recommend_data.reset_index()
  49. # 5. 按recommend_score从大到小重新排序
  50. recommend_data = recommend_data.sort_values("index")
  51. # recommend_data["sale_qty"] = recommend_data["sale_qty"].round(0).astype(int) # 将月均销量四舍五入取整
  52. recommend_data = recommend_data.rename(
  53. columns={
  54. "index": "推荐序号",
  55. "cust_code": "商户编号",
  56. "BB_RETAIL_CUSTOMER_NAME": "商户名称",
  57. # "sale_qty": "历史月均销量",
  58. "recommend_score": "推荐系数",
  59. "delivery_count": "建议投放量(条)"
  60. }
  61. )
  62. recommend_data["推荐序号"] = recommend_data["推荐序号"] + 1
  63. return recommend_data
  64. def eval_report_process_pre(eval_order_data, recommend_data):
  65. # 获取订单数据并处理
  66. eval_order_data = eval_order_data[["cust_code", "cust_name", "product_code", "product_name", "sale_qty", "sale_amt"]]
  67. # 确保cust_code是字符串类型
  68. eval_order_data["cust_code"] = eval_order_data["cust_code"].astype(str)
  69. eval_order_data = eval_order_data.groupby(["cust_code", "cust_name", "product_code", "product_name"])[["sale_qty", "sale_amt"]].mean().reset_index()
  70. eval_order_data["sale_qty"] = eval_order_data["sale_qty"].round(0).astype(int)
  71. eval_order_data = eval_order_data.sort_values("sale_qty", ascending=False)
  72. # recommend_data = recommend_data.drop(columns=["sale_qty"])
  73. # 确保recommend_data中的cust_code也是字符串类型
  74. recommend_data["商户编号"] = recommend_data["商户编号"].astype(str)
  75. cust_ids = recommend_data.set_index("商户编号")
  76. # 执行合并操作
  77. merge_data = eval_order_data.join(cust_ids, on="cust_code", how="left")
  78. merge_data = merge_data[["cust_code", "cust_name", "product_code", "product_name", "sale_qty", "推荐序号", "推荐系数"]]
  79. merge_data = merge_data.rename(
  80. columns={
  81. "cust_code": "商户编号",
  82. "cust_name": "商户名称",
  83. "product_code": "卷烟编码",
  84. "product_name": "卷烟名称",
  85. "sale_qty": "月均销量"
  86. }
  87. )
  88. return merge_data
  89. def eval_report_process(delivery_data, recommend_data):
  90. report = recommend_data.merge(delivery_data, left_on="商户编号", right_on="customer_code", how="left")
  91. report = report.drop(columns=["customer_code", "goods_code"])
  92. report = report.rename(columns={
  93. "retail_index_week": DeliveryConfig.FEATURES_MAP["retail_index_week"],
  94. "turnover_rate_collpoint": DeliveryConfig.FEATURES_MAP["turnover_rate_collpoint"],
  95. "turnover_rate_terminal": DeliveryConfig.FEATURES_MAP["turnover_rate_terminal"],
  96. "sale_qty": DeliveryConfig.FEATURES_MAP["sale_qty"],
  97. })
  98. return report
  99. def split_relation_subtable(data, filter_dict, save_dir):
  100. """拆分卷烟商户特征相关性子表"""
  101. data = filter_data(data, filter_dict).copy()
  102. data.to_csv(os.path.join(save_dir, "feats_interaction.csv"), index=False, encoding='utf-8-sig')
  103. data['group_key'] = data["product_feat"].str.extract(r'^([^(]+)')
  104. grouped = data.groupby('group_key')
  105. sub_tables = {
  106. name: group.drop(columns=['group_key']).sort_values('relation', ascending=False)
  107. for name, group in grouped
  108. }
  109. for name, sub_data in sub_tables.items():
  110. sub_data.to_csv(os.path.join(save_dir, f"{name}.csv"), index=False, encoding='utf-8-sig')