{ "cells": [ { "cell_type": "markdown", "metadata": {}, "source": [ "# Read in the data" ] }, { "cell_type": "code", "execution_count": 1, "metadata": { "collapsed": true }, "outputs": [], "source": [ "import pandas as pd\n", "import numpy\n", "import re\n", "\n", "data_files = [\n", " \"ap_2010.csv\",\n", " \"class_size.csv\",\n", " \"demographics.csv\",\n", " \"graduation.csv\",\n", " \"hs_directory.csv\",\n", " \"sat_results.csv\"\n", "]\n", "\n", "data = {}\n", "\n", "for f in data_files:\n", " d = pd.read_csv(\"schools/{0}\".format(f))\n", " data[f.replace(\".csv\", \"\")] = d" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Read in the surveys" ] }, { "cell_type": "code", "execution_count": 2, "metadata": { "collapsed": true }, "outputs": [], "source": [ "all_survey = pd.read_csv(\"schools/survey_all.txt\", delimiter=\"\\t\", encoding='windows-1252')\n", "d75_survey = pd.read_csv(\"schools/survey_d75.txt\", delimiter=\"\\t\", encoding='windows-1252')\n", "survey = pd.concat([all_survey, d75_survey], axis=0)\n", "\n", "survey[\"DBN\"] = survey[\"dbn\"]\n", "\n", "survey_fields = [\n", " \"DBN\", \n", " \"rr_s\", \n", " \"rr_t\", \n", " \"rr_p\", \n", " \"N_s\", \n", " \"N_t\", \n", " \"N_p\", \n", " \"saf_p_11\", \n", " \"com_p_11\", \n", " \"eng_p_11\", \n", " \"aca_p_11\", \n", " \"saf_t_11\", \n", " \"com_t_11\", \n", " \"eng_t_11\", \n", " \"aca_t_11\", \n", " \"saf_s_11\", \n", " \"com_s_11\", \n", " \"eng_s_11\", \n", " \"aca_s_11\", \n", " \"saf_tot_11\", \n", " \"com_tot_11\", \n", " \"eng_tot_11\", \n", " \"aca_tot_11\",\n", "]\n", "survey = survey[survey_fields]\n", "data[\"survey\"] = survey" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Add DBN columns" ] }, { "cell_type": "code", "execution_count": 3, "metadata": { "collapsed": true }, "outputs": [], "source": [ "data[\"hs_directory\"][\"DBN\"] = data[\"hs_directory\"][\"dbn\"]\n", "\n", "def pad_csd(num):\n", " string_representation = str(num)\n", " if len(string_representation) > 1:\n", " return string_representation\n", " else:\n", " return \"0\" + string_representation\n", " \n", "data[\"class_size\"][\"padded_csd\"] = data[\"class_size\"][\"CSD\"].apply(pad_csd)\n", "data[\"class_size\"][\"DBN\"] = data[\"class_size\"][\"padded_csd\"] + data[\"class_size\"][\"SCHOOL CODE\"]" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Convert columns to numeric" ] }, { "cell_type": "code", "execution_count": 4, "metadata": { "collapsed": true }, "outputs": [], "source": [ "cols = ['SAT Math Avg. Score', 'SAT Critical Reading Avg. Score', 'SAT Writing Avg. Score']\n", "for c in cols:\n", " data[\"sat_results\"][c] = pd.to_numeric(data[\"sat_results\"][c], errors=\"coerce\")\n", "\n", "data['sat_results']['sat_score'] = data['sat_results'][cols[0]] + data['sat_results'][cols[1]] + data['sat_results'][cols[2]]\n", "\n", "def find_lat(loc):\n", " coords = re.findall(\"\\(.+, .+\\)\", loc)\n", " lat = coords[0].split(\",\")[0].replace(\"(\", \"\")\n", " return lat\n", "\n", "def find_lon(loc):\n", " coords = re.findall(\"\\(.+, .+\\)\", loc)\n", " lon = coords[0].split(\",\")[1].replace(\")\", \"\").strip()\n", " return lon\n", "\n", "data[\"hs_directory\"][\"lat\"] = data[\"hs_directory\"][\"Location 1\"].apply(find_lat)\n", "data[\"hs_directory\"][\"lon\"] = data[\"hs_directory\"][\"Location 1\"].apply(find_lon)\n", "\n", "data[\"hs_directory\"][\"lat\"] = pd.to_numeric(data[\"hs_directory\"][\"lat\"], errors=\"coerce\")\n", "data[\"hs_directory\"][\"lon\"] = pd.to_numeric(data[\"hs_directory\"][\"lon\"], errors=\"coerce\")" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Condense datasets" ] }, { "cell_type": "code", "execution_count": 5, "metadata": { "collapsed": true }, "outputs": [], "source": [ "class_size = data[\"class_size\"]\n", "class_size = class_size[class_size[\"GRADE \"] == \"09-12\"]\n", "class_size = class_size[class_size[\"PROGRAM TYPE\"] == \"GEN ED\"]\n", "\n", "class_size = class_size.groupby(\"DBN\").agg(numpy.mean)\n", "class_size.reset_index(inplace=True)\n", "data[\"class_size\"] = class_size\n", "\n", "data[\"demographics\"] = data[\"demographics\"][data[\"demographics\"][\"schoolyear\"] == 20112012]\n", "\n", "data[\"graduation\"] = data[\"graduation\"][data[\"graduation\"][\"Cohort\"] == \"2006\"]\n", "data[\"graduation\"] = data[\"graduation\"][data[\"graduation\"][\"Demographic\"] == \"Total Cohort\"]" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Convert AP scores to numeric" ] }, { "cell_type": "code", "execution_count": 6, "metadata": { "collapsed": true }, "outputs": [], "source": [ "cols = ['AP Test Takers ', 'Total Exams Taken', 'Number of Exams with scores 3 4 or 5']\n", "\n", "for col in cols:\n", " data[\"ap_2010\"][col] = pd.to_numeric(data[\"ap_2010\"][col], errors=\"coerce\")" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Combine the datasets" ] }, { "cell_type": "code", "execution_count": 7, "metadata": { "collapsed": true }, "outputs": [], "source": [ "combined = data[\"sat_results\"]\n", "\n", "combined = combined.merge(data[\"ap_2010\"], on=\"DBN\", how=\"left\")\n", "combined = combined.merge(data[\"graduation\"], on=\"DBN\", how=\"left\")\n", "\n", "to_merge = [\"class_size\", \"demographics\", \"survey\", \"hs_directory\"]\n", "\n", "for m in to_merge:\n", " combined = combined.merge(data[m], on=\"DBN\", how=\"inner\")\n", "\n", "combined = combined.fillna(combined.mean())\n", "combined = combined.fillna(0)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Add a school district column for mapping" ] }, { "cell_type": "code", "execution_count": 8, "metadata": { "collapsed": true }, "outputs": [], "source": [ "def get_first_two_chars(dbn):\n", " return dbn[0:2]\n", "\n", "combined[\"school_dist\"] = combined[\"DBN\"].apply(get_first_two_chars)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Find correlations" ] }, { "cell_type": "code", "execution_count": 9, "metadata": { "collapsed": false }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "SAT Critical Reading Avg. Score 0.986820\n", "SAT Math Avg. Score 0.972643\n", "SAT Writing Avg. Score 0.987771\n", "sat_score 1.000000\n", "AP Test Takers 0.523140\n", "Total Exams Taken 0.514333\n", "Number of Exams with scores 3 4 or 5 0.463245\n", "Total Cohort 0.325144\n", "CSD 0.042948\n", "NUMBER OF STUDENTS / SEATS FILLED 0.394626\n", "NUMBER OF SECTIONS 0.362673\n", "AVERAGE CLASS SIZE 0.381014\n", "SIZE OF SMALLEST CLASS 0.249949\n", "SIZE OF LARGEST CLASS 0.314434\n", "SCHOOLWIDE PUPIL-TEACHER RATIO NaN\n", "schoolyear NaN\n", "fl_percent NaN\n", "frl_percent -0.722225\n", "total_enrollment 0.367857\n", "ell_num -0.153778\n", "ell_percent -0.398750\n", "sped_num 0.034933\n", "sped_percent -0.448170\n", "asian_num 0.475445\n", "asian_per 0.570730\n", "black_num 0.027979\n", "black_per -0.284139\n", "hispanic_num 0.025744\n", "hispanic_per -0.396985\n", "white_num 0.449559\n", " ... \n", "rr_p 0.047925\n", "N_s 0.423463\n", "N_t 0.291463\n", "N_p 0.421530\n", "saf_p_11 0.122913\n", "com_p_11 -0.115073\n", "eng_p_11 0.020254\n", "aca_p_11 0.035155\n", "saf_t_11 0.313810\n", "com_t_11 0.082419\n", "eng_t_11 0.036906\n", "aca_t_11 0.132348\n", "saf_s_11 0.337639\n", "com_s_11 0.187370\n", "eng_s_11 0.213822\n", "aca_s_11 0.339435\n", "saf_tot_11 0.318753\n", "com_tot_11 0.077310\n", "eng_tot_11 0.100102\n", "aca_tot_11 0.190966\n", "grade_span_max NaN\n", "expgrade_span_max NaN\n", "zip -0.063977\n", "total_students 0.407827\n", "number_programs 0.117012\n", "priority08 NaN\n", "priority09 NaN\n", "priority10 NaN\n", "lat -0.121029\n", "lon -0.132222\n", "Name: sat_score, Length: 67, dtype: float64\n" ] } ], "source": [ "correlations = combined.corr()\n", "correlations = correlations[\"sat_score\"]\n", "print(correlations)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Plotting survey correlations" ] }, { "cell_type": "code", "execution_count": 10, "metadata": { "collapsed": true, "scrolled": true }, "outputs": [], "source": [ "# Remove DBN since it's a unique identifier, not a useful numerical value for correlation.\n", "survey_fields.remove(\"DBN\")" ] }, { "cell_type": "code", "execution_count": 11, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "" ] }, "execution_count": 11, "metadata": {}, "output_type": "execute_result" }, { "data": { "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXkAAAEwCAYAAABSVAGZAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAElFTkSuQmCC\n", "text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "%matplotlib inline\n", "combined.corr()[\"sat_score\"][survey_fields].plot.bar()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "There are high correlations between `N_s`, `N_t`, `N_p` and `sat_score`. Since these columns are correlated with `total_enrollment`, it makes sense that they would be high. \n", "\n", "It is more interesting that `rr_s`, the student response rate, or the percentage of students that completed the survey, correlates with `sat_score`. This might make sense because students who are more likely to fill out surveys may be more likely to also be doing well academically.\n", "\n", "How students and teachers percieved safety (`saf_t_11` and `saf_s_11`) correlate with `sat_score`. This make sense, as it's hard to teach or learn in an unsafe environment.\n", "\n", "The last interesting correlation is the `aca_s_11`, which indicates how the student perceives academic standards, correlates with `sat_score`, but this is not true for `aca_t_11`, how teachers perceive academic standards, or `aca_p_11`, how parents perceive academic standards." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Exploring safety" ] }, { "cell_type": "code", "execution_count": 12, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "" ] }, "execution_count": 12, "metadata": {}, "output_type": "execute_result" }, { "data": { "image/png": "iVBORw0KGgoAAAANSUhEUgAAAZAAAAEQCAYAAACeDyIUAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nYRiGcYn/D38PUaIFh114AAAAAElFTkSuQmCC\n", "text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "combined.plot.scatter(\"saf_s_11\", \"sat_score\")" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "There appears to be a correlation between SAT scores and safety, although it isn't thatstrong. It looks like there are a few schools with extremely high SAT scores and high safety scores. There are a few schools with low safety scores and low SAT scores. No school with a safety score lower than `6.5` has an average SAT score higher than 1500 or so." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Borough safety" ] }, { "cell_type": "code", "execution_count": 13, "metadata": { "collapsed": false }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "boro\n", "Bronx 6.606577\n", "Brooklyn 6.370755\n", "Manhattan 6.831370\n", "Queens 6.721875\n", "Staten Island 6.530000\n", "Name: saf_s_11, dtype: float64\n" ] } ], "source": [ "boros = combined.groupby(\"boro\").agg(numpy.mean)[\"saf_s_11\"]\n", "print(boros)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "It looks like Manhattan and Queens tend to have higher safety scores, whereas Brooklyn has low safety scores." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Racial differences in SAT scores" ] }, { "cell_type": "code", "execution_count": 14, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "" ] }, "execution_count": 14, "metadata": {}, "output_type": "execute_result" }, { "data": { "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXkAAAE1CAYAAAACmZAqAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n", "text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "race_fields = [\"white_per\", \"asian_per\", \"black_per\", \"hispanic_per\"]\n", "combined.corr()[\"sat_score\"][race_fields].plot.bar()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "It looks like a higher percentage of white or asian students at a school correlates positively with sat score, whereas a higher percentage of black or hispanic students correlates negatively with sat score. This may be due to a lack of funding for schools in certain areas, which are more likely to have a higher percentage of black or hispanic students." ] }, { "cell_type": "code", "execution_count": 15, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "" ] }, "execution_count": 15, "metadata": {}, "output_type": "execute_result" }, { "data": { "image/png": "iVBORw0KGgoAAAANSUhEUgAAAZMAAAEQCAYAAAB1OJkXAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nhmE85v8H6p8SUse6awkAAAAASUVORK5CYII=\n", "text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "combined.plot.scatter(\"hispanic_per\", \"sat_score\")" ] }, { "cell_type": "code", "execution_count": 16, "metadata": { "collapsed": false }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "44 MANHATTAN BRIDGES HIGH SCHOOL\n", "82 WASHINGTON HEIGHTS EXPEDITIONARY LEARNING SCHOOL\n", "89 GREGORIO LUPERON HIGH SCHOOL FOR SCIENCE AND M...\n", "125 ACADEMY FOR LANGUAGE AND TECHNOLOGY\n", "141 INTERNATIONAL SCHOOL FOR LIBERAL ARTS\n", "176 PAN AMERICAN INTERNATIONAL HIGH SCHOOL AT MONROE\n", "253 MULTICULTURAL HIGH SCHOOL\n", "286 PAN AMERICAN INTERNATIONAL HIGH SCHOOL\n", "Name: SCHOOL NAME, dtype: object\n" ] } ], "source": [ "print(combined[combined[\"hispanic_per\"] > 95][\"SCHOOL NAME\"])" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "The schools listed above appear to primarily be geared towards recent immigrants to the US. These schools have a lot of students who are learning English, which would explain the lower SAT scores." ] }, { "cell_type": "code", "execution_count": 17, "metadata": { "collapsed": false }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "37 STUYVESANT HIGH SCHOOL\n", "151 BRONX HIGH SCHOOL OF SCIENCE\n", "187 BROOKLYN TECHNICAL HIGH SCHOOL\n", "327 QUEENS HIGH SCHOOL FOR THE SCIENCES AT YORK CO...\n", "356 STATEN ISLAND TECHNICAL HIGH SCHOOL\n", "Name: SCHOOL NAME, dtype: object\n" ] } ], "source": [ "print(combined[(combined[\"hispanic_per\"] < 10) & (combined[\"sat_score\"] > 1800)][\"SCHOOL NAME\"])" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Many of the schools above appear to be specialized science and technology schools that receive extra funding, and only admit students who pass an entrance exam. This doesn't explain the low `hispanic_per`, but it does explain why their students tend to do better on the SAT -- they are students from all over New York City who did well on a standardized test." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# Gender differences in SAT scores" ] }, { "cell_type": "code", "execution_count": 18, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "" ] }, "execution_count": 18, "metadata": {}, "output_type": "execute_result" }, { "data": { "image/png": "iVBORw0KGgoAAAANSUhEUgAAAX8AAAEuCAYAAABmlhI1AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n", "text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "gender_fields = [\"male_per\", \"female_per\"]\n", "combined.corr()[\"sat_score\"][gender_fields].plot.bar()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "In the plot above, we can see that a high percentage of females at a school positively correlates with SAT score, whereas a high percentage of males at a school negatively correlates with SAT score. Neither correlation is extremely strong." ] }, { "cell_type": "code", "execution_count": 19, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "" ] }, "execution_count": 19, "metadata": {}, "output_type": "execute_result" }, { "data": { "image/png": "iVBORw0KGgoAAAANSUhEUgAAAZMAAAEQCAYAAAB1OJkXAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nDMMwjMP8/6MLatq/BJjgAAAAAElFTkSuQmCC\n", "text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "combined.plot.scatter(\"female_per\", \"sat_score\")" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Based on the scatterplot, there doesn't seem to be any real correlation between `sat_score` and `female_per`. However, there is a cluster of schools with a high percentage of females (`60` to `80`), and high SAT scores." ] }, { "cell_type": "code", "execution_count": 20, "metadata": { "collapsed": false }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "5 BARD HIGH SCHOOL EARLY COLLEGE\n", "26 ELEANOR ROOSEVELT HIGH SCHOOL\n", "60 BEACON HIGH SCHOOL\n", "61 FIORELLO H. LAGUARDIA HIGH SCHOOL OF MUSIC & A...\n", "302 TOWNSEND HARRIS HIGH SCHOOL\n", "Name: SCHOOL NAME, dtype: object\n" ] } ], "source": [ "print(combined[(combined[\"female_per\"] > 60) & (combined[\"sat_score\"] > 1700)][\"SCHOOL NAME\"])" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "These schools appears to be very selective liberal arts schools that have high academic standards." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# AP Exam Scores vs SAT Scores" ] }, { "cell_type": "code", "execution_count": 21, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "" ] }, "execution_count": 21, "metadata": {}, "output_type": "execute_result" }, { "data": { "image/png": "iVBORw0KGgoAAAANSUhEUgAAAZIAAAEPCAYAAABoekJnAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nCwnDMAzjFSwkDMMwjFewkDAMwzBe8f8Bjpto6EowC/kAAAAASUVORK5CYII=\n", "text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "combined[\"ap_per\"] = combined[\"AP Test Takers \"] / combined[\"total_enrollment\"]\n", "\n", "combined.plot.scatter(x='ap_per', y='sat_score')" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "It looks like there is a relationship between the percentage of students in a school who take the AP exam, and their average SAT scores. It's not an extremely strong correlation, though." ] } ], "metadata": { "kernelspec": { "display_name": "Python 3", "language": "python", "name": "python3" }, "language_info": { "codemirror_mode": { "name": "ipython", "version": 3 }, "file_extension": ".py", "mimetype": "text/x-python", "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", "version": "3.4.3" } }, "nbformat": 4, "nbformat_minor": 2 }