"
+ ],
+ "text/plain": [
+ " 0 values dice\n",
+ "0 138 6\n",
+ "1 88 4\n",
+ "2 34 2\n",
+ "3 42 3\n",
+ "4 60 5\n",
+ "5 12 1"
+ ]
+ },
+ "execution_count": 229,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
+ "source": [
+ "freq_val\n"
]
},
{
@@ -232,6 +925,12 @@
"source": [
"\"\"\"\n",
"your comments here\n",
+ "\n",
+ "##---------How can you connect the mean value to the histogram?-----------##\n",
+ "#The mean value is equal to the sumproduct of the values of the throws by the number of throws divided by the total amount of throws\n",
+ "\n",
+ "\n",
+ "\n",
"\"\"\""
]
},
@@ -244,11 +943,29 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 231,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "image/png": 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v7J1J1lXVDoDuCv5lwBZgqld9Y/J64H1J3sn8D9P6XJLbgdu7ZUe6xwHbmf+3Vkl+pqru7L4/mfqH89EwLHNMVd0/pL4KOL6qvjKFtsYmycXAB6vqs0OWXVZVvzmFtiYiyUuBU6vq7dPuZRySnMD8/yzvHLLs1Kr6rym0NXZJHgOczPwH856q2jflliYqySOB46rqG1Pto/Vwl6Sj0VFxK6QkHW0Md0lqkOEuSQ0y3CWpQYa7JDXo/wEBHe2H89/oRwAAAABJRU5ErkJggg==\n",
+ "text/plain": [
+ "
"
+ ]
+ },
+ "metadata": {
+ "needs_background": "light"
+ },
+ "output_type": "display_data"
+ }
+ ],
"source": [
- "# your code here"
+ "# your code here\n",
+ "\n",
+ "roll_the_thousand = pd.read_csv('/Users/pietervierstraete/Desktop/Ironhack/week5/lab-understanding-descriptive-stats/data/roll_the_dice_thousand.csv'\n",
+ " )\n",
+ "roll_the_thousand['value'].value_counts().plot.bar()\n",
+ "plt.show()"
]
},
{
@@ -259,6 +976,10 @@
"source": [
"\"\"\"\n",
"your comments here\n",
+ "\n",
+ "The distribution of the number of throws per value of the dice is almost the same over the whole range.\n",
+ "This is conform to the idea that the more we repeat the experience of throwing the dice the closer who will come to the probabilistic calculation of dice throws.\n",
+ "In other words we approach for each value, the probability of occurence of each event as equal to 1/6\n",
"\"\"\""
]
},
@@ -274,11 +995,130 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 250,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "text/html": [
+ "
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+ "\n",
+ "
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+ " \n",
+ "
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+ "
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+ "
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+ "
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+ " \n",
+ " \n",
+ "
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+ "
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+ "
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+ "
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+ "
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+ " \n",
+ "
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+ "
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+ ],
+ "text/plain": [
+ " observation\n",
+ "0 25.0\n",
+ "1 31.0\n",
+ "2 29.0\n",
+ "3 31.0\n",
+ "4 29.0"
+ ]
+ },
+ "execution_count": 250,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
"source": [
- "# your code here"
+ "# your code here\n",
+ "\n",
+ "address = '/Users/pietervierstraete/Desktop/Ironhack/week5/lab-understanding-descriptive-stats/data/ages_population'\n",
+ "population = pd.read_csv('/Users/pietervierstraete/Desktop/Ironhack/week5/lab-understanding-descriptive-stats/data/ages_population.csv')\n",
+ "population2 = pd.read_csv('/Users/pietervierstraete/Desktop/Ironhack/week5/lab-understanding-descriptive-stats/data/ages_population2.csv')\n",
+ "population3 = pd.read_csv('/Users/pietervierstraete/Desktop/Ironhack/week5/lab-understanding-descriptive-stats/data/ages_population3.csv')\n",
+ " \n",
+ "population.head()\n",
+ "population2.head()"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 247,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "text/plain": [
+ "(1000, 1)"
+ ]
+ },
+ "execution_count": 247,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
+ "source": [
+ "population.shape"
+ ]
+ },
+ {
+ "cell_type": "code",
+ "execution_count": 252,
+ "metadata": {},
+ "outputs": [
+ {
+ "data": {
+ "image/png": "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\n",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {
+ "needs_background": "light"
+ },
+ "output_type": "display_data"
+ }
+ ],
+ "source": [
+ "\n",
+ "plt.hist(population['observation'])\n",
+ "plt.xlabel('Age')\n",
+ "plt.ylabel('number of occurences')\n",
+ "plt.show()\n",
+ "\n",
+ "# from the plotted frequency distribution the mean should be around 38y old and the standard deviation should be equal to 13y more or less"
]
},
{
@@ -290,11 +1130,28 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 255,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "name": "stdout",
+ "output_type": "stream",
+ "text": [
+ "observation 36.56\n",
+ "dtype: float64\n",
+ "observation 12.8165\n",
+ "dtype: float64\n"
+ ]
+ }
+ ],
"source": [
- "# your code here"
+ "# your code here\n",
+ "# mean\n",
+ "print(population.mean())\n",
+ "\n",
+ "# standard deviation\n",
+ "print(population.std())\n",
+ "\n"
]
},
{
@@ -305,6 +1162,9 @@
"source": [
"\"\"\"\n",
"your comments here\n",
+ "\n",
+ "# my guess was not too far from the actual values\n",
+ "\n",
"\"\"\""
]
},
@@ -317,11 +1177,29 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 256,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "image/png": "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\n",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {
+ "needs_background": "light"
+ },
+ "output_type": "display_data"
+ }
+ ],
"source": [
- "# your code here"
+ "# your code here\n",
+ "\n",
+ "plt.hist(population2['observation'])\n",
+ "plt.xlabel('Age')\n",
+ "plt.ylabel('number of occurences')\n",
+ "plt.show()"
]
},
{
@@ -339,6 +1217,10 @@
"source": [
"\"\"\"\n",
"your comments here\n",
+ "\n",
+ "The freuency distribution hhistogram is quite differen. There is a high concentration of ages between 25 and 30y old.\n",
+ "This neighbourhood seems to have a younger population profile\n",
+ "\n",
"\"\"\""
]
},
@@ -351,11 +1233,29 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 258,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "name": "stdout",
+ "output_type": "stream",
+ "text": [
+ "observation 27.155\n",
+ "dtype: float64\n",
+ "observation 2.969814\n",
+ "dtype: float64\n"
+ ]
+ }
+ ],
"source": [
- "# your code here"
+ "# your code here\n",
+ "\n",
+ "# mean\n",
+ "print(population2.mean())\n",
+ "\n",
+ "# standard deviation\n",
+ "print(population2.std())\n",
+ "\n"
]
},
{
@@ -366,6 +1266,10 @@
"source": [
"\"\"\"\n",
"your comments here\n",
+ "\n",
+ "The mean age is lower than for the dataset population.\n",
+ "The standard deviation is only 2.97y, this translates in the fact that the population pyramid is much more concentrated around the average\n",
+ "\n",
"\"\"\""
]
},
@@ -381,11 +1285,29 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 259,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "image/png": 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\n",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {
+ "needs_background": "light"
+ },
+ "output_type": "display_data"
+ }
+ ],
"source": [
- "# your code here"
+ "# your code here\n",
+ "\n",
+ "plt.hist(population3['observation'])\n",
+ "plt.xlabel('Age')\n",
+ "plt.ylabel('number of occurences')\n",
+ "plt.show()"
]
},
{
@@ -397,11 +1319,28 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 299,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "name": "stdout",
+ "output_type": "stream",
+ "text": [
+ "observation 41.989\n",
+ "dtype: float64\n",
+ "observation 16.144706\n",
+ "dtype: float64\n"
+ ]
+ }
+ ],
"source": [
- "# your code here"
+ "# your code here\n",
+ "\n",
+ "# mean\n",
+ "print(population3.mean())\n",
+ "\n",
+ "# standard deviation\n",
+ "print(population3.std())"
]
},
{
@@ -412,6 +1351,11 @@
"source": [
"\"\"\"\n",
"your comments here\n",
+ "\n",
+ "The mean of the population is equal to 41.9 years\n",
+ "The standard deviation is 16.1 years.\n",
+ "\n",
+ "The standard deviation is much higher than for population 2 because the peak between 60 and 70 years old (which is at 20y from the mean) needs to be accounted for in the standard deviation and increases its value\n",
"\"\"\""
]
},
@@ -424,11 +1368,38 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 302,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "name": "stdout",
+ "output_type": "stream",
+ "text": [
+ "(30.0, 39.0)\n"
+ ]
+ },
+ {
+ "data": {
+ "text/plain": [
+ "32.0"
+ ]
+ },
+ "execution_count": 302,
+ "metadata": {},
+ "output_type": "execute_result"
+ }
+ ],
"source": [
- "# your code here"
+ "# your code here\n",
+ "\n",
+ "# the following code gives the 25% and 75% quartile\n",
+ "population3_list = population3['observation']\n",
+ "population3_list\n",
+ "\n",
+ "print(quartiles(population3_list))\n",
+ "\n",
+ "# the following code gives the 50% median value\n",
+ "median(population3_list)\n"
]
},
{
@@ -439,6 +1410,9 @@
"source": [
"\"\"\"\n",
"your comments here\n",
+ "\n",
+ "We have Q1 = 30, Q2 =32 and Q3 = 39 \n",
+ "The interquartile range Q2-Q1 thus contains 25% of the values within a 2 year range but the mean is equal to 41 because of the peak between 60 and 70 years\n",
"\"\"\""
]
},
@@ -451,11 +1425,30 @@
},
{
"cell_type": "code",
- "execution_count": null,
+ "execution_count": 297,
"metadata": {},
- "outputs": [],
+ "outputs": [
+ {
+ "data": {
+ "image/png": "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\n",
+ "text/plain": [
+ ""
+ ]
+ },
+ "metadata": {
+ "needs_background": "light"
+ },
+ "output_type": "display_data"
+ }
+ ],
"source": [
- "# your code here"
+ "# your code here\n",
+ "\n",
+ "\n",
+ "#the boxplot helps giving a visual of the percentiles\n",
+ "\n",
+ "plt.boxplot(population3_list) \n",
+ "plt.show()"
]
},
{
@@ -466,6 +1459,8 @@
"source": [
"\"\"\"\n",
"your comments here\n",
+ "\n",
+ "50% of the values are concentrated between 30 and 39years old, but the higher values between 60 and 70y old have a big influence on the distribution\n",
"\"\"\""
]
},
@@ -500,9 +1495,9 @@
],
"metadata": {
"kernelspec": {
- "display_name": "ironhack-3.7",
+ "display_name": "Python 3",
"language": "python",
- "name": "ironhack-3.7"
+ "name": "python3"
},
"language_info": {
"codemirror_mode": {
@@ -514,7 +1509,7 @@
"name": "python",
"nbconvert_exporter": "python",
"pygments_lexer": "ipython3",
- "version": "3.7.3"
+ "version": "3.7.6"
}
},
"nbformat": 4,