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  • Anaconda 安装 ml_metrics package

    ml_metrics is the Python implementation of Metrics implementations a library of various supervised machine learning evaluation metrics.

    首先,打开 Anaconda Prompt,


    按如下步骤操作

    1、搜索 ml_metrics 包

    [Anaconda2] C:Usersklchang> anaconda search -t conda ml_metrics
    Using anaconda-server api site https://api.anaconda.org
    Run 'anaconda show <USER/PACKAGE>' to get more details:
    Packages:
    Name | Version | Package Types | Platforms
    ------------------------- | ------ | --------------- | ---------------
    chdoig/ml_metrics | 0.1.3 | conda | osx-64
    : Machine Learning Evaluation Metrics
    dan_blanchard/ml_metrics | 0.1.3 | conda | linux-64
    : https://github.com/benhamner/Metrics
    /tree/master/Python
    m0nhawk/ml_metrics | 0.1.4 | conda | linux-64, win-32,
    win-64, linux-32, osx-64
    Found 3 packages


    2、显示 ml_metrics 包的信息

    [Anaconda2] C:Usersklchang> anaconda show m0nhawk/ml_metrics
    Using anaconda-server api site https://api.anaconda.org
    Name: ml_metrics
    Summary:
    Access: public
    Package Types: conda
    Versions:
    + 0.1.3
    + 0.1.4
    
    To install this package with conda run:
    conda install --channel https://conda.anaconda.org/m0nhawk ml_metrics


    3、安装最新版本的ml_metrics 包

    [Anaconda2] C:Usersklchang>conda install --channel https://conda.anaconda.org/m0nhawk ml_metrics==0.1.4
    Fetching package metadata: ......
    Solving package specifications: ................
    Package plan for installation in environment E:UsersklchangAnaconda2:
    
    The following packages will be downloaded:
    
    package | build
    ---------------------------|-----------------
    mkl-11.3.3 | 1 110.0 MB defaults
    vs2008_runtime-9.00.30729.1| 1 1.2 MB defaults
    python-2.7.11 | 4 23.1 MB defaults
    conda-env-2.4.5 | py27_0 65 KB defaults
    menuinst-1.4.1 | py27_0 105 KB defaults
    numpy-1.11.0 | py27_1 3.0 MB defaults
    pycosat-0.6.1 | py27_1 83 KB defaults
    pytz-2016.4 | py27_0 171 KB defaults
    pyyaml-3.11 | py27_4 169 KB defaults
    requests-2.10.0 | py27_0 615 KB defaults
    setuptools-21.2.1 | py27_0 763 KB defaults
    wheel-0.29.0 | py27_0 121 KB defaults
    conda-4.0.7 | py27_0 228 KB defaults
    pip-8.1.1 | py27_1 1.5 MB defaults
    python-dateutil-2.5.3 | py27_0 236 KB defaults
    pandas-0.18.1 | np111py27_0 7.0 MB defaults
    ml_metrics-0.1.4 | 0 31 KB m0nhawk
    ------------------------------------------------------------
    Total: 148.4 MB
    
    The following NEW packages will be INSTALLED:
    
    mkl: 11.3.3-1 defaults
    ml_metrics: 0.1.4-0 m0nhawk
    vs2008_runtime: 9.00.30729.1-1 defaults
    
    The following packages will be UPDATED:
    
    conda: 3.18.6-py27_0 defaults --> 4.0.7-py27_0 defaults
    
    conda-env: 2.4.4-py27_2 defaults --> 2.4.5-py27_0 defaults
    
    menuinst: 1.2.1-py27_0 defaults --> 1.4.1-py27_0 defaults
    
    numpy: 1.10.1-py27_0 defaults --> 1.11.0-py27_1 defaults
    
    pandas: 0.17.0-np110py27_0 defaults --> 0.18.1-np111py27_0 defaults
    
    pip: 7.1.2-py27_0 defaults --> 8.1.1-py27_1 defaults
    
    pycosat: 0.6.1-py27_0 defaults --> 0.6.1-py27_1 defaults
    
    python: 2.7.10-4 defaults --> 2.7.11-4 defaults
    
    python-dateutil: 2.4.2-py27_0 defaults --> 2.5.3-py27_0 defaults
    
    pytz: 2015.6-py27_0 defaults --> 2016.4-py27_0 defaults
    
    pyyaml: 3.11-py27_2 defaults --> 3.11-py27_4 defaults
    
    requests: 2.8.1-py27_0 defaults --> 2.10.0-py27_0 defaults
    
    setuptools: 18.5-py27_0 defaults --> 21.2.1-py27_0 defaults
    
    wheel: 0.26.0-py27_1 defaults --> 0.29.0-py27_0 defaults
    
    
    Proceed ([y]/n)? y
    
    menuinst-1.4.1 100% |###############################| Time: 0:00:00 161.14 kB/s
    Fetching packages ...
    mkl-11.3.3-1.t 100% |###############################| Time: 0:02:39 725.30 kB/s
    vs2008_runtime 100% |###############################| Time: 0:00:02 424.65 kB/s
    python-2.7.11- 100% |###############################| Time: 0:00:24 984.44 kB/s
    conda-env-2.4. 100% |###############################| Time: 0:00:00 101.80 kB/s
    numpy-1.11.0-p 100% |###############################| Time: 0:00:05 580.68 kB/s
    pycosat-0.6.1- 100% |###############################| Time: 0:00:00 97.22 kB/s
    pytz-2016.4-py 100% |###############################| Time: 0:00:01 161.02 kB/s
    pyyaml-3.11-py 100% |###############################| Time: 0:00:01 104.81 kB/s
    requests-2.10. 100% |###############################| Time: 0:00:03 180.66 kB/s
    setuptools-21. 100% |###############################| Time: 0:00:02 293.96 kB/s
    wheel-0.29.0-p 100% |###############################| Time: 0:00:01 109.30 kB/s
    conda-4.0.7-py 100% |###############################| Time: 0:00:01 142.15 kB/s
    pip-8.1.1-py27 100% |###############################| Time: 0:00:05 307.28 kB/s
    python-dateuti 100% |###############################| Time: 0:00:01 160.14 kB/s
    pandas-0.18.1- 100% |###############################| Time: 0:00:38 189.41 kB/s
    ml_metrics-0.1 100% |###############################| Time: 0:00:00 45.44 kB/s
    Extracting packages ...
    [ COMPLETE ]|##################################################| 100%
    Unlinking packages ...
    [ COMPLETE ]|##################################################| 100%
    Linking packages ...
    [ COMPLETE ]|##################################################| 100%

    4、测试 ml_metrics 包,以 apk,mapk度量函数为例,(apk为average precision@k的缩写, mapk为mean average precision@k的缩写)

    [Anaconda2] C:Usersklchang> python
    Python 2.7.11 |Anaconda 2.4.0 (64-bit)| (default, Feb 16 2016, 09:58:36) [MSC v.1500 64 bit (AMD64)] on win32
    Type "help", "copyright", "credits" or "license" for more information.
    Anaconda is brought to you by Continuum Analytics.
    Please check out: http://continuum.io/thanks and https://anaconda.org
    >>> import ml_metrics as metrics
    >>> actual = [1]
    >>> predicted = [1,2,3,4,5]
    >>> print 'Answer=%s predicted=%s' % (actual,predicted)
    Answer=[1] predicted=[1, 2, 3, 4, 5]
    >>> print 'AP@5 =', metrics.apk(actual,predicted,5)
    AP@5 = 1.0
    >>> predicted = [2,1,3,4,5]
    >>> print 'Answer=%s predicted=%s' % (actual, predicted)
    Answer=[1] predicted=[2, 1, 3, 4, 5]
    >>> print 'AP@5 =', metrics.apk(actual, predicted, 5)
    AP@5 = 0.5
    >>> predicted = [3,2,1,4,5]
    >>> print 'Answer=%s predicted=%s' % (actual,predicted)
    Answer=[1] predicted=[3, 2, 1, 4, 5]
    >>> print 'AP@5 =', metrics.apk(actual,predicted,5)
    AP@5 = 0.333333333333
    >>>
    >>> predicted = [4,2,3,1,5]
    >>> print 'Answer=%s predicted=%s' % (actual,predicted)
    Answer=[1] predicted=[4, 2, 3, 1, 5]
    >>> print 'AP@5 =', metrics.apk(actual,predicted,5)
    AP@5 = 0.25
    >>>
    >>> predicted = [2,3,4,5,1]
    >>> print 'Answer=%s predicted=%s' % (actual,predicted)
    Answer=[1] predicted=[2, 3, 4, 5, 1]
    >>> print 'AP@5 =', metrics.apk(actual,predicted,5)
    AP@5 = 0.2
    >>>
    >>> print 'MAP@5 = ', metrics.mapk([[1],[1],[1],[1],[1]],[[1,2,3,4,5],[2,1,3,4,5],[3,2,1,4,5],[4,2,3,1,5],[4,2,3,5,1]],5)
    MAP@5 = 0.456666666667

    参考资料:

    https://www.kaggle.com/wendykan/expedia-hotel-recommendations/map-k-demo

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  • 原文地址:https://www.cnblogs.com/klchang/p/5588930.html
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