diff --git a/bootstrap-t.ipynb b/bootstrap-t.ipynb index deb8a7e..cf8ea0a 100644 --- a/bootstrap-t.ipynb +++ b/bootstrap-t.ipynb @@ -355,10 +355,17 @@ }, "outputs": [ { - "output_type": "stream", "name": "stdout", + "output_type": "stream", "text": [ - "0 169.5557\ndtype: float64\n0 175.1417\ndtype: float64\n0 79.6342\ndtype: float64\n0 76.5602\ndtype: float64\n" + "0 169.5557\n", + "dtype: float64\n", + "0 175.1417\n", + "dtype: float64\n", + "0 79.6342\n", + "dtype: float64\n", + "0 76.5602\n", + "dtype: float64\n" ] } ], @@ -407,8 +414,8 @@ "metadata": {}, "outputs": [ { - "output_type": "stream", "name": "stdout", + "output_type": "stream", "text": [ "p = 0.791\n" ] @@ -421,11 +428,11 @@ ] }, { + "cell_type": "markdown", + "metadata": {}, "source": [ "P wartość jest większa niż alfa = 0.05, więc próba ma prawdopodobnie rozkład normalny. Możemy stostować testy." - ], - "cell_type": "markdown", - "metadata": {} + ] }, { "cell_type": "markdown", @@ -447,22 +454,35 @@ }, "outputs": [ { - "output_type": "stream", "name": "stdout", + "output_type": "stream", "text": [ - "Wyniki bootstrapowej wersji testu T-studenta\n\nHipoteza: średnia jest równa 160.0\nHipoteza alternatywna: średnia jest większa\n\np: 0.5\nWartość statystyki testowej z próby: [19.1207964]\nWartości statystyk z prób boostrapowych:\n[17.41702865], [19.17874674], [20.59090525], [17.666445], [19.3593138], ... (i 95 pozostałych)\n\n\n\n" + "Wyniki bootstrapowej wersji testu T-studenta\n", + "\n", + "Hipoteza: średnia jest równa 160.0\n", + "Hipoteza alternatywna: średnia jest większa\n", + "\n", + "p: 0.5\n", + "Wartość statystyki testowej z próby: [19.1207964]\n", + "Wartości statystyk z prób boostrapowych:\n", + "[17.41702865], [19.17874674], [20.59090525], [17.666445], [19.3593138], ... (i 95 pozostałych)\n", + "\n", + "\n", + "\n" ] }, { - "output_type": "display_data", "data": { - "text/plain": "
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+ "text/plain": [ + "
" + ] }, "metadata": { "needs_background": "light" - } + }, + "output_type": "display_data" } ], "source": [ @@ -511,10 +531,11 @@ "metadata": {}, "outputs": [ { - "output_type": "stream", "name": "stdout", + "output_type": "stream", "text": [ - "p = 0.791\np = 0.7535\n" + "p = 0.791\n", + "p = 0.7535\n" ] } ], @@ -555,22 +576,34 @@ }, "outputs": [ { - "output_type": "stream", "name": "stdout", + "output_type": "stream", "text": [ - "Wyniki bootstrapowej wersji testu T-studenta\n\nHipoteza: średnie są takie same\nHipoteza alternatywna: średnia jest mniejsza\n\np: 0.0\nWartość statystyki testowej z próby: [8.04931557]\nWartości statystyk z prób boostrapowych:\n[0.2748409], [-0.61193473], [1.24335163], [-2.56879464], [0.34249038], ... (i 95 pozostałych)\n\n\n" + "Wyniki bootstrapowej wersji testu T-studenta\n", + "\n", + "Hipoteza: średnie są takie same\n", + "Hipoteza alternatywna: średnia jest mniejsza\n", + "\n", + "p: 0.0\n", + "Wartość statystyki testowej z próby: [8.04931557]\n", + "Wartości statystyk z prób boostrapowych:\n", + "[0.2748409], [-0.61193473], [1.24335163], [-2.56879464], [0.34249038], ... (i 95 pozostałych)\n", + "\n", + "\n" ] }, { - "output_type": "display_data", "data": { - "text/plain": "
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\n" + "text/plain": [ + "
" + ] }, "metadata": { "needs_background": "light" - } + }, + "output_type": "display_data" } ], "source": [ @@ -585,7 +618,9 @@ "collapsed": false }, "source": [ - "## Wniosek" + "## Wniosek\n", + "\n", + "Średnia wzrostu kobiet jest mniejsza od wzrostu mężczyzn." ] }, { @@ -635,10 +670,11 @@ }, "outputs": [ { - "output_type": "stream", "name": "stdout", + "output_type": "stream", "text": [ - "p = 0.3308\np = 0.4569\n" + "p = 0.3308\n", + "p = 0.4569\n" ] } ], @@ -679,22 +715,34 @@ }, "outputs": [ { - "output_type": "stream", "name": "stdout", + "output_type": "stream", "text": [ - "Wyniki bootstrapowej wersji testu T-studenta\n\nHipoteza: średnie są takie same\nHipoteza alternatywna: średnia jest mniejsza\n\np: 0.0\nWartość statystyki testowej z próby: [48.30834167]\nWartości statystyk z prób boostrapowych:\n[-0.18332849], [-1.21537352], [1.64628473], [1.06552535], [-0.71420173], ... (i 95 pozostałych)\n\n\n" + "Wyniki bootstrapowej wersji testu T-studenta\n", + "\n", + "Hipoteza: średnie są takie same\n", + "Hipoteza alternatywna: średnia jest mniejsza\n", + "\n", + "p: 0.0\n", + "Wartość statystyki testowej z próby: [48.30834167]\n", + "Wartości statystyk z prób boostrapowych:\n", + "[-0.18332849], [-1.21537352], [1.64628473], [1.06552535], [-0.71420173], ... (i 95 pozostałych)\n", + "\n", + "\n" ] }, { - "output_type": "display_data", "data": { - "text/plain": "
", + "image/png": 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