代码搜索:Pattern recognition

找到约 10,000 项符合「Pattern recognition」的源代码

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testie ipaddrrewriter-01.testie

%script click -e " i :: Idle rw :: IPAddrRewriter(pattern 1.0.0.1 - 0 1, pattern 1.0.0.1-1.0.255.255 - 0 1, pattern 1.0.0.1/24 - 0 1, pattern 1.0.0.1/8 - 0 1) i -> [0]rw i[1] -> [1]rw i[2] -> [2
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testie ipaddrrewriter-01.testie

%script click -e " i :: Idle rw :: IPAddrRewriter(pattern 1.0.0.1 - 0 1, pattern 1.0.0.1-1.0.255.255 - 0 1, pattern 1.0.0.1/24 - 0 1, pattern 1.0.0.1/8 - 0 1) i -> [0]rw i[1] -> [1]rw i[2] -> [2
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pat som_cube.pat

SNNS pattern definition file V3.2 generated at Thu Apr 21 19:56:37 1994 No. of patterns : 8 No. of input units : 3 # Input pattern 1: 1 1 1 # Input pattern 2: -1 1 1 # Input pattern 3:
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m fpat.m

%-------------------------------------------------------------------------------- % RES = fpat(TMPL,OBJ,'OPT',...,'OPT',...) % A fuzzy pattern detector... % the only pattern detector you will
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clp pataddtn.clp

;;;************************************************************ ;;; PATTERN ADDITION CHECKING ;;; ;;; This file tests to see if the addition of patterns to ;;; rules works correctly. The pattern (init
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clp pataddtn.clp

;;;************************************************************ ;;; PATTERN ADDITION CHECKING ;;; ;;; This file tests to see if the addition of patterns to ;;; rules works correctly. The pattern (init
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properties mvnplugin_mvnforum_user_usermoduleconfig.properties

# default url pattern for forum, you dont have to change anything here URL_PATTERN = /mvnforum
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properties mvnplugin_mvnforum_admin_adminmoduleconfig.properties

# default url pattern for admin, you dont have to change anything here URL_PATTERN = /mvnforumadmin
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txt feaselbysfs4wine01.txt

Construct 63 KNN models, each with up to 6 inputs selected from 13 candidates... Selecting input 1: Model 1/63: 1 --> Recognition rate = 59.6% Model 2/63: 2 --> Recognition rate = 55.1% Model