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  • sklearn.ensemble.RandomForestClassifier(n_estimators=10, criterion=’gini’, max_depth=None, bootstrap=True, random_state=None, min_samples_split=2)
    • n_estimators£ºinteger£¬optional£¨default = 10£©É­ÁÖÀïµÄÊ÷ľÊýÁ¿120,200,300,500,800,1200
    • Criterion£ºstring£¬¿ÉÑ¡£¨default =“gini”£©·Ö¸îÌØÕ÷µÄ²âÁ¿·½·¨
    • max_depth£ºinteger»òNone£¬¿ÉÑ¡£¨Ä¬ÈÏ=ÎÞ£©Ê÷µÄ×î´óÉî¶È 5,8,15,25,30
    • max_features="auto”,ÿ¸ö¾ö²ßÊ÷µÄ×î´óÌØÕ÷ÊýÁ¿
      • If "auto", then max_features=sqrt(n_features).
      • If "sqrt", then max_features=sqrt(n_features)(same as "auto").
      • If "log2", then max_features=log2(n_features).
      • If None, then max_features=n_features.
    • bootstrap£ºboolean£¬optional£¨default = True£©ÊÇ·ñÔÚ¹¹½¨Ê÷ʱʹÓ÷ŻسéÑù
    • min_samples_split:½Úµã»®·Ö×îÉÙÑù±¾Êý
    • min_samples_leaf:Ò¶×Ó½ÚµãµÄ×îСÑù±¾Êý
  • ³¬²ÎÊý£ºn_estimator, max_depth, min_samples_split,min_samples_leaf
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# Ëæ»úÉ­ÁÖÈ¥½øÐÐÔ¤²â
rf = RandomForestClassifier()

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param = {"n_estimators": [120,200,300,500,800,1200], "max_depth": [5, 8, 15, 25, 30]}

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# ³¬²ÎÊýµ÷ÓÅgc = GridSearchCV(rf, param_grid=param, cv=2)

gc.fit(x_train, y_train)

print("Ëæ»úÉ­ÁÖÔ¤²âµÄ׼ȷÂÊΪ£º", gc.score(x_test, y_test))

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