¸üÐÂʱ¼ä:2021Äê09ÔÂ16ÈÕ17ʱ11·Ö À´Ô´:ÀÖÓãµç¾º ä¯ÀÀ´ÎÊý:

ÔÚ»úÆ÷ѧϰÖУ¬Ëæ»úÉÁÖÊÇÒ»¸ö°üº¬¶à¸ö¾ö²ßÊ÷µÄ·ÖÀàÆ÷£¬²¢ÇÒÆäÊä³öµÄÀà±ðÊÇÓɸö±ðÊ÷Êä³öµÄÀà±ðµÄÖÚÊý¶ø¶¨¡£
Ëæ»úÉÁÖ = Bagging + ¾ö²ßÊ÷

ÀýÈç, Èç¹ûÄãѵÁ·ÁË5¸öÊ÷, ÆäÖÐÓÐ4¸öÊ÷µÄ½á¹ûÊÇTrue, 1¸öÊ÷µÄ½á¹ûÊÇFalse, ÄÇô×îÖÕͶƱ½á¹û¾ÍÊÇTrueËæ»úÉÁÖ¹»Ôì¹ý³ÌÖеĹؼü²½Öè(M±íÊ¾ÌØÕ÷ÊýÄ¿)£º
1)Ò»´ÎËæ»úÑ¡³öÒ»¸öÑù±¾£¬ÓзŻصijéÑù£¬Öظ´N´Î(ÓпÉÄܳöÏÖÖØ¸´µÄÑù±¾)
2) Ëæ»úȥѡ³öm¸öÌØÕ÷, m <
˼¿¼
1.ÎªÊ²Ã´ÒªËæ»ú³éÑùѵÁ·¼¯?
Èç¹û²»½øÐÐËæ»ú³éÑù£¬Ã¿¿ÃÊ÷µÄѵÁ·¼¯¶¼Ò»Ñù£¬ÄÇô×îÖÕѵÁ·³öµÄÊ÷·ÖÀà½á¹ûÒ²ÊÇÍêȫһÑùµÄ
2.ΪʲôҪÓзŻصسéÑù?
Èç¹û²»ÊÇÓзŻصijéÑù£¬ÄÇôÿ¿ÃÊ÷µÄѵÁ·Ñù±¾¶¼ÊDz»Í¬µÄ£¬¶¼ÊÇûÓн»¼¯µÄ£¬ÕâÑùÿ¿ÃÊ÷¶¼ÊÇ“ÓÐÆ«µÄ”£¬¶¼ÊǾø¶Ô“Æ¬ÃæµÄ”(µ±È»ÕâÑù˵¿ÉÄܲ»¶Ô)£¬Ò²¾ÍÊÇ˵ÿ¿ÃÊ÷ѵÁ·³öÀ´¶¼ÊÇÓкܴóµÄ²îÒìµÄ;¶øËæ»úÉÁÖ×îºó·ÖÀàÈ¡¾öÓÚ¶à¿ÃÊ÷(Èõ·ÖÀàÆ÷)µÄͶƱ±í¾ö¡£
Ëæ»úÉÁÖapi½éÉÜ
max_features=sqrt(n_features).max_features=sqrt(n_features)(same as "auto").max_features=log2(n_features).max_features=n_features.ʵÀý»¯Ëæ»úÉÁÖ
# Ëæ»úÉÁÖÈ¥½øÐÐÔ¤²â rf = RandomForestClassifier()
¶¨Ò峬²ÎÊýµÄÑ¡ÔñÁбí
param = {"n_estimators": [120,200,300,500,800,1200], "max_depth": [5, 8, 15, 25, 30]}
ʹÓÃGridSearchCV½øÐÐÍø¸ñËÑË÷
# 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))
×¢Òâ:
Ëæ»úÉÁֵĽ¨Á¢¹ý³Ì
Ê÷µÄÉî¶È¡¢Ê÷µÄ¸öÊýµÈÐèÒª½øÐг¬²ÎÊýµ÷ÓÅ
ʲôÊÇÏßÐԻعé?ÏßÐԻعéÓÐÊ²Ã´ÌØÕ÷£¿
¾ö²ßÊ÷µÄ»®·ÖÒÀ¾Ý¶þ:ÐÅÏ¢ÔöÒæÂÊ
BRIEFËã·¨²½ÖèÏêϸ½éÉÜ
ʲôÊÇOpenCV£¿OpenCV°²×°½Ì³Ì
±±¾©Ð£Çø