growth-model-analyzer
npx skills add https://github.com/liangdabiao/claude-data-analysis-ultra-main --skill growth-model-analyzer
Agent 安装分布
Skill 文档
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ð å¢é¿çç¥ä¼å
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# å è½½å¢é¿æ°æ® analyzer = GrowthModelAnalyzer() data = analyzer.load_data('growth_data.csv') -
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# è¯ä¼°è£åçç¥ææ results = analyzer.analyze_campaign_effectiveness( data, campaign_col='è£åç±»å', conversion_col='æ¯å¦è½¬å' ) -
ç¨æ·ç»ååæ
# RFMç¨æ·å群 segments = analyzer.rfm_segmentation( data, user_col='ç¨æ·ç ', recency_col='Rå¼', frequency_col='æ¾å©å', monetary_col='Må¼' ) -
Uplift建模
# æå»ºå¢é¿æ¨¡å uplift_model = UpliftModeler() model_results = uplift_model.build_model( data, treatment_col='è£åç±»å', outcome_col='æ¯å¦è½¬å' )
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-
Qiniæ²çº¿åæ
# è¯ä¼°æ¨¡åææ qini_results = uplift_model.analyze_qini_curve( test_data, model_predictions ) -
ROIä¼å
# è¥éROIåæ roi_analyzer = ROIAnalyzer() optimization_results = roi_analyzer.optimize_budget_allocation( campaign_data, budget_constraints )
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示ä¾å½ä»¤
# è¿è¡å®æ´å¢é¿åæç¤ºä¾
python examples/growth_analysis_example.py
# å¿«éæµè¯æ ¸å¿åè½
python quick_test.py
# è¿è¡Uplift建模示ä¾
python examples/uplift_modeling_example.py
# çæQiniæ²çº¿åæ
python examples/qini_curve_example.py
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