|
1896 | 1896 | "cell_type": "markdown", |
1897 | 1897 | "metadata": {}, |
1898 | 1898 | "source": [ |
1899 | | - "<h3 align='Left'>5000 Training Samples</h3>" |
| 1899 | + "<h3 align='Left'>5000 Training Samples plus Predicting Class Labels </h3>" |
1900 | 1900 | ] |
1901 | 1901 | }, |
1902 | 1902 | { |
|
1933 | 1933 | "regr.score(X_test, y_test)" |
1934 | 1934 | ] |
1935 | 1935 | }, |
| 1936 | + { |
| 1937 | + "cell_type": "code", |
| 1938 | + "execution_count": 71, |
| 1939 | + "metadata": { |
| 1940 | + "collapsed": false |
| 1941 | + }, |
| 1942 | + "outputs": [ |
| 1943 | + { |
| 1944 | + "data": { |
| 1945 | + "text/plain": [ |
| 1946 | + "5" |
| 1947 | + ] |
| 1948 | + }, |
| 1949 | + "execution_count": 71, |
| 1950 | + "metadata": {}, |
| 1951 | + "output_type": "execute_result" |
| 1952 | + } |
| 1953 | + ], |
| 1954 | + "source": [ |
| 1955 | + "# predict class labels for the test set\n", |
| 1956 | + "predicted = regr.predict(X_test)\n", |
| 1957 | + "predicted[0]" |
| 1958 | + ] |
| 1959 | + }, |
| 1960 | + { |
| 1961 | + "cell_type": "code", |
| 1962 | + "execution_count": 73, |
| 1963 | + "metadata": { |
| 1964 | + "collapsed": false |
| 1965 | + }, |
| 1966 | + "outputs": [ |
| 1967 | + { |
| 1968 | + "data": { |
| 1969 | + "text/plain": [ |
| 1970 | + "array([ 0.12763201, 0.00555621, 0.00123266, 0.02629658, 0.12701357,\n", |
| 1971 | + " 0.56304184, 0.00327476, 0.05330603, 0.00990884, 0.08273749])" |
| 1972 | + ] |
| 1973 | + }, |
| 1974 | + "execution_count": 73, |
| 1975 | + "metadata": {}, |
| 1976 | + "output_type": "execute_result" |
| 1977 | + } |
| 1978 | + ], |
| 1979 | + "source": [ |
| 1980 | + "regr.predict_proba(X_test)[0]" |
| 1981 | + ] |
| 1982 | + }, |
| 1983 | + { |
| 1984 | + "cell_type": "markdown", |
| 1985 | + "metadata": {}, |
| 1986 | + "source": [ |
| 1987 | + "<h3 align='Left'>Confusion Matrix </h3>" |
| 1988 | + ] |
| 1989 | + }, |
| 1990 | + { |
| 1991 | + "cell_type": "code", |
| 1992 | + "execution_count": 75, |
| 1993 | + "metadata": { |
| 1994 | + "collapsed": false |
| 1995 | + }, |
| 1996 | + "outputs": [ |
| 1997 | + { |
| 1998 | + "data": { |
| 1999 | + "text/plain": [ |
| 2000 | + "array([[726, 54, 7, 6, 2, 60, 8, 79, 13, 45],\n", |
| 2001 | + " [ 6, 807, 14, 17, 26, 48, 10, 15, 25, 32],\n", |
| 2002 | + " [ 2, 19, 844, 5, 32, 57, 17, 3, 10, 11],\n", |
| 2003 | + " [ 1, 88, 13, 581, 14, 249, 4, 2, 22, 26],\n", |
| 2004 | + " [ 9, 67, 46, 5, 725, 69, 15, 16, 32, 16],\n", |
| 2005 | + " [ 1, 1, 12, 4, 275, 654, 4, 7, 27, 15],\n", |
| 2006 | + " [ 6, 29, 65, 10, 29, 54, 766, 8, 17, 16],\n", |
| 2007 | + " [ 30, 17, 10, 6, 76, 113, 5, 707, 20, 16],\n", |
| 2008 | + " [ 14, 17, 9, 2, 22, 65, 10, 5, 802, 54],\n", |
| 2009 | + " [ 10, 5, 16, 3, 4, 78, 10, 1, 55, 818]])" |
| 2010 | + ] |
| 2011 | + }, |
| 2012 | + "execution_count": 75, |
| 2013 | + "metadata": {}, |
| 2014 | + "output_type": "execute_result" |
| 2015 | + } |
| 2016 | + ], |
| 2017 | + "source": [ |
| 2018 | + "from sklearn import metrics\n", |
| 2019 | + "\n", |
| 2020 | + "metrics.confusion_matrix(y_test, predicted)" |
| 2021 | + ] |
| 2022 | + }, |
1936 | 2023 | { |
1937 | 2024 | "cell_type": "markdown", |
1938 | 2025 | "metadata": {}, |
|
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