mirror of
https://github.com/gsi-upm/sitc
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550 lines
78 KiB
Plaintext
550 lines
78 KiB
Plaintext
{
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"cells": [
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{
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"cell_type": "markdown",
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"metadata": {},
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"source": [
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"![](files/images/EscUpmPolit_p.gif \"UPM\")"
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]
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},
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{
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"cell_type": "markdown",
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"metadata": {},
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"source": [
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"# Course Notes for Learning Intelligent Systems"
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]
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},
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{
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"cell_type": "markdown",
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"metadata": {},
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"source": [
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"Department of Telematic Engineering Systems, Universidad Politécnica de Madrid, © 2016 Carlos A. Iglesias"
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]
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},
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{
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"cell_type": "markdown",
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"metadata": {},
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"source": [
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"## [Introduction to Machine Learning](2_0_0_Intro_ML.ipynb)"
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]
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},
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{
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"cell_type": "markdown",
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"metadata": {},
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"source": [
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"# Table of Contents\n",
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"* [kNN Model](#kNN-Model)\n",
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"* [Load data and preprocessing](#Load-data-and-preprocessing)\n",
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"* [Train classifier](#Train-classifier)\n",
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"* [Evaluating the algorithm](#Evaluating-the-algorithm)\n",
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" * [Precision, recall and f-score](#Precision,-recall-and-f-score)\n",
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"\t* [Confusion matrix](#Confusion-matrix)\n",
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"\t* [K-Fold validation](#K-Fold-validation)\n",
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"* [Tuning the algorithm](#Tuning-the-algorithm)\n",
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"* [References](#References)"
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]
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},
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{
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"cell_type": "markdown",
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"metadata": {},
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"source": [
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"# kNN Model"
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]
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},
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{
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"cell_type": "markdown",
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"metadata": {},
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"source": [
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"The goal of this notebook is to learn how to train a model, make predictions with that model and evaluate these predictions.\n",
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"\n",
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"The notebook uses the [kNN (k nearest neighbors) algorithm](https://en.wikipedia.org/wiki/K-nearest_neighbors_algorithm)."
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]
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},
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{
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"cell_type": "markdown",
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"metadata": {},
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"source": [
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"## Loading data and preprocessing\n",
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"\n",
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"The first step is loading and preprocessing the data as explained in the previous notebooks."
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]
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},
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{
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"cell_type": "code",
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"execution_count": 1,
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"metadata": {},
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"outputs": [],
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"source": [
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"# library for displaying plots\n",
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"import matplotlib.pyplot as plt\n",
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"\n",
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"# display plots in the notebook \n",
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"%matplotlib inline"
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]
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},
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{
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"cell_type": "code",
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"execution_count": 2,
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"metadata": {},
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"outputs": [],
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"source": [
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"## First, we repeat the load and preprocessing steps\n",
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"\n",
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"# Load data\n",
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"from sklearn import datasets\n",
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"iris = datasets.load_iris()\n",
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"\n",
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"# Training and test spliting\n",
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"from sklearn.model_selection import train_test_split\n",
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"\n",
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"x_iris, y_iris = iris.data, iris.target\n",
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"\n",
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"# Test set will be the 25% taken randomly\n",
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"x_train, x_test, y_train, y_test = train_test_split(x_iris, y_iris, test_size=0.25, random_state=33)\n",
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"\n",
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"# Preprocess: normalize\n",
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"from sklearn import preprocessing\n",
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"scaler = preprocessing.StandardScaler().fit(x_train)\n",
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"x_train = scaler.transform(x_train)\n",
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"x_test = scaler.transform(x_test)"
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]
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},
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{
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"cell_type": "markdown",
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"metadata": {
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"collapsed": true
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},
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"source": [
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"## Train classifier"
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]
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},
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{
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"cell_type": "markdown",
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"metadata": {},
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"source": [
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"The usual steps for creating a classifier are:\n",
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"1. Create classifier object\n",
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"2. Call *fit* to train the classifier\n",
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"3. Call *predict* to obtain predictions\n",
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"\n",
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"Once the model is created, the most relevant methods are:\n",
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"* model.fit(x_train, y_train): train the model\n",
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"* model.predict(x): predict\n",
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"* model.score(x, y): evaluate the prediction"
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]
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},
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{
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"cell_type": "code",
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"execution_count": 3,
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"metadata": {},
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"outputs": [
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{
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"data": {
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"text/plain": [
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"KNeighborsClassifier(algorithm='auto', leaf_size=30, metric='minkowski',\n",
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" metric_params=None, n_jobs=1, n_neighbors=15, p=2,\n",
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" weights='uniform')"
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]
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},
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"execution_count": 3,
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"metadata": {},
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"output_type": "execute_result"
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}
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],
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"source": [
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"from sklearn.neighbors import KNeighborsClassifier\n",
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"import numpy as np\n",
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"\n",
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"# Create kNN model\n",
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"model = KNeighborsClassifier(n_neighbors=15)\n",
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"\n",
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"# Train the model using the training sets\n",
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"model.fit(x_train, y_train) "
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]
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},
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{
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"cell_type": "code",
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"execution_count": 4,
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"metadata": {},
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"outputs": [
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{
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"name": "stdout",
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"output_type": "stream",
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"text": [
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"Prediction [1 0 1 1 1 0 0 1 0 2 0 0 1 2 0 1 2 2 1 1 0 0 1 0 0 2 1 1 2 2 2 2 0 0 1 1 0\n",
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" 1 2 1 2 0 2 0 1 0 2 1 0 2 2 0 0 2 0 0 0 2 2 0 1 0 1 0 1 1 1 1 1 0 1 0 1 2\n",
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" 0 0 0 0 2 2 0 1 1 2 1 0 0 2 1 1 0 1 1 0 2 1 2 1 2 0 2 0 0 0 2 1 2 1 2 1 2\n",
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" 0]\n",
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"Expected [1 0 1 1 1 0 0 1 0 2 0 0 1 2 0 1 2 2 1 1 0 0 2 0 0 2 1 1 2 2 2 2 0 0 1 1 0\n",
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" 1 2 1 2 0 2 0 1 0 2 1 0 2 2 0 0 2 0 0 0 2 2 0 1 0 1 0 1 1 1 1 1 0 1 0 1 2\n",
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" 0 0 0 0 2 2 0 1 1 2 1 0 0 1 1 1 0 1 1 0 2 2 2 1 2 0 1 0 0 0 2 1 2 1 2 1 2\n",
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" 0]\n"
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]
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}
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],
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"source": [
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"print(\"Prediction \", model.predict(x_train))\n",
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"print(\"Expected \", y_train)"
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]
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},
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{
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"cell_type": "code",
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"execution_count": 7,
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"metadata": {},
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"outputs": [
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{
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"name": "stdout",
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"output_type": "stream",
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"text": [
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"Accuracy in training 0.964285714286\n"
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]
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}
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],
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"source": [
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"# Evaluate Accuracy in training\n",
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"\n",
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"from sklearn import metrics\n",
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"y_train_pred = model.predict(x_train)\n",
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"print(\"Accuracy in training\", metrics.accuracy_score(y_train, y_train_pred))"
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]
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},
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{
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"cell_type": "code",
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"execution_count": 8,
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"metadata": {},
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"outputs": [
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{
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"name": "stdout",
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"output_type": "stream",
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"text": [
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"Accuracy in testing 0.921052631579\n"
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]
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}
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],
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"source": [
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"# Now we evaluate error in testing\n",
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"y_test_pred = model.predict(x_test)\n",
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"print(\"Accuracy in testing \", metrics.accuracy_score(y_test, y_test_pred))"
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]
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},
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{
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"cell_type": "markdown",
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"metadata": {},
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"source": [
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"Now we are going to visualize the Nearest Neighbors classification. It will plot the decision boundaries for each class.\n",
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"\n",
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"We are going to import a function defined in the file [util_knn.py](files/util_knn.py) using the *magic command* **%run**."
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]
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},
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{
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"cell_type": "code",
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"execution_count": 12,
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"metadata": {},
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"outputs": [
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{
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"data": {
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"image/png": 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MvogMAaYCZwdqb+ysWcWPe6Sl0SMtrSxxK1XpaQJXZZWZuZDMzIUh1RVjTOkVRMYD1wBe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\nF7z88g243V46dDiHYcOm+uJ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lSbyS2LlvH79s3463oHx3MC/5t59+eTrdenYjMTWR5ObJ\nHDX9KIZPPHDlhH0797H9l+0UeCvmzunXPn0tjes0hmOBhpDwVAL3vXNfhfQdSfv27WT79l8oKPBG\nvzMdjatS6KRbjBljGDVpEpO+/pq6NhtH1K7NZ+PG0aR+8OtiBxJs4CYi3PjcjVx+9+XkZedxdLOj\nSUxKxBjDpFGT+HrS19jq2qh9RG3GfTaO+k3C6zdcIkLrrq3Z9uM2EkwCdRrVoUGTBlHtM5KMMUya\nMYyvF0zCVjuR2on1GXfP4sju4FQqDDoSj7H3ly/ny0WL+N3r5Xe3m6t27+bG55+PeD9HNjqSY086\nlsQk3/f28veXs+jLRXh/9+L+3c3uq3bz/I2R77ekon4Ltxbi3eFl7zV7K6TfcrNGw8uXv8+iX6fi\n3eLGvTWX3YP/5Pk3+8c4OFWdaRKPsXWbN3OJ282R+C7GObCwkLVbt4bVRlmmTzev24z7EjdFHRcO\nLGTr2vD6LYtY9Rspm7esxX1Z7oH4BxWwdfOG6HWoc+PqMDSJx1iLRo340uGg6MTtuUCLo4+Oer+N\nWjTC8aUD/46PblF1+y03K5k2angijvlHHIj/U+HoRidUSN9KBaJz4jF2ddeufLZ8Oa3Xr+dYm40t\nCQnMG37IJduDKuvfd9eru7L8s+Wsb70e27E2ErYkMHxe6P2WVaz6LeJyunBlu6jbsG5I9b35Xrxu\nb/ERkV27Xs3y9e+zvuVX2BolkrDZxvB7ZkYvYKUOQ++xWQkYY1izeTNZTiftUlOpkxLaWYnlHaAZ\nY9i8ZjPOLCep7VIr7GzIWPX7SO8nWPfZWkCw16zFE98/yHEnHRe0/gdPf8Csh2aBEZq2bMv9wz+j\ndu36vvg3r8HpzCI1tR0pKXUqJH5VfemNkqsg/YUdnvcfeZ93H1oEZiVwLCQMo2b9//LWzpcC1l8z\nbw3PDHsG90I3HAu225NI+74HD9zxecUGrhTlPO1eVS6avMtmzfy1YG4ArGvGFN7P/n+mBq3/09Kf\ncF/tLq5ecHc+v7QNdBl9pWJLd2zGEU3gZdegSX1IWAgUWiXLsNntQevXO64e9u/s/tWpW69hlKNU\nKnyaxFW1cMOrN5Bc80dISIPE84EBDH4x+LXte9R6iaY725F8Wk2SL65F8k01ufW6KRUWr1Kh0jnx\nOKGj8PLzuDx89MRHZO/Kpvt13WnRoZSbXczOoKDAy9q1n+N0ZtGqVVfq1Sv98r1KRYvOiSsF2JPt\nZIwJ8dswYzY2oL1Nvz1V5abTKXFAR+FKqWAOm8RFpLGIfC0imSKyXkQCnpkhIi+KyC8iskZE2kY+\n1OpJE3iM6RUEVSUXynSKF7jTGLPGuuP9DyLyuTHmp6IK1h3umxtjThSRTsBrgN7dVSmloiyU27Pt\nAHZYj/eLyEbgOOAnv2oXA9OsOstFpI6IHGOM2RmFmKu8ihp9r/5sNZMfmExedh4d+3Rk4OMDSXIk\nVUzn8SRjtv4kUpVWWHPiInIC0BYoedbDcYD/pej+sspUmCoqV/zvh//xzIBn2PHvHWR9nMWinxYx\nadSkiuk8Hum0iqqkQk7i1lTKe8AIY8z+6IVUfVXkYO+HT38gf3A+9AZagecVD8s/0DMSlYo3IR1i\nKCKJ+BL4dGPMRwGq/AX437ixsVV2iLF+x4n3SEujR1payMGqyEk+Ihnbbza8WLcX+wvsNYOfwaiU\nqjiZmQvJzFwYUt2QTvYRkWnALmPMnUFe7w3caoy5UETSgeeNMYfs2NSTfQ4Vq6nWnN05jOw4kpye\nORSkFmB/xc7NT9/Mmf3PjE1A8ULnxlUMlOtkHxHpAlwNrBeR1YAB7geaAsYYM9EYM1dEeovIr0Au\ncH3kwq+6YpkPatWrxdPLn+aL179gf9Z+OszsQOvurWMXkFKqTPS0+xjRAV2c0w9QVaDSRuJ6xqZS\nSsUxvXZKBdMBnFIqknQkXkFmZ2gCr1L0uHFVSWgSV0qpOKZJvALoCLyK0tG4qgQ0iSulVBzTJB5l\nOgpXSkWTJvEo0gReDeiUiooxTeJRoglcKVURNIkrpVQc0yQeYXo8eDWkUyoqhjSJR5Amb6VURdMk\nHiGawKu5jNk6IlcxoUlcKaXimCbxCNBRuFIqVjSJl5MmcHUQnVJRFUwvRVtGmrxVSIqSum4wKkoO\nOxIXkUkislNE1gV5vbuI7BORVda/ByIfZuWif4+qVDoaVxUolJH4ZOAlYFopdRYbYy6KTEhKKaVC\nddiRuDFmCbD3MNUC3vutKtJRuApJydG4js5VlERqx2a6iKwWkU9FpMreMl0TuFKqsonEjs0fgKbG\nGKeIXAB8CLQMVnms393ue6Sl0SMtLQIhRJ8mcKVURcnMXEhm5sKQ6oox5vCVRJoCc4wxp4RQ93fg\nNGPMngCvGeOXxOOJJnEVEbohqTLo108wxgSctg51JC4EmfcWkWOMMTutxx3xfTEcksDjlf7NKaUq\ns3bdxcQAAAR7SURBVMMmcRGZCfQA6onIH8AYwA4YY8xE4HIRGQrkA3nAFdELt2JpAldKVXYhTadE\nrLM4mk7RBK6iRjcuFabSplP0tHullIpjmsQD0IGSUipeaBIvQRO4ijo98UdFkF4Ay6LJWykVj3Qk\njiZwpVT80iSuVCzo7dxUhFT7JK6jcKVUPKvWSVwTuFIq3lXbJK4JXClVFVS7JD47QxO4qkR0XlyV\nU7VL4kopVZVUqySuI3BVKeloXJVDtUnimsCVUlVRtUjimsCVUlVVtUjiSlV6OqWiyqjKJ3EdhSul\nqrJQ7uwzCegD7Ax2j00ReRG4AMgFBhpj1kQ0yjLQ5K2Uqg5CGYlPBs4P9qJ1h/vmxpgTgZuA1yIU\nW5mVN4FnLsyMTCBxQpe3kojSlEqod02vKqrb8h42iRtjlgB7S6lyMTDNqrscqCMix0QmvPBFYgRe\naf/Io0SXt2qrbkmtui1vJObEjwO2+j3/yypTSikVZVVqx6bOg6u4p5eoVWEK6W73ItIUmBNox6aI\nvAYsMMa8az3/CehujNkZoO7hO1NKKXWIYHe7D/X2bGL9C+Rj4FbgXRFJB/YFSuClBaGUUqpsQjnE\ncCbQA6gnIn8AYwA7YIwxE40xc0Wkt4j8iu8Qw+ujGbBSSqkDQppOUUopVTlVqR2bkSIiCSKySkQ+\njnUs0SYim0VkrYisFpEVsY4n2kSkjojMFpGNIpIpIp1iHVO0iEhL63NdZf2fJSLDYx1XNInIHSKy\nQUTWicgMEbHHOqZo05F4ACJyB3AaUNsYc1Gs44kmEfkfcJoxprRzAaoMEZkCLDLGTBaRRCDFGJMd\n47CiTkQSgD+BTsaYrYerH49E5FhgCXCyMcYjIu8CnxpjpsU4tKjSkXgJItIY6A28GetYKohQTbYD\nEakNdDXGTAYwxnirQwK3nAP8VlUTuB8bcETRFzSwLcbxRF21+OMN03PAXUB1+YligPkislJEbox1\nMFGWCuwSkcnWFMNEEakR66AqyBXA27EOIpqMMduAZ4A/8J10uM8Y82Vso4o+TeJ+RORCfBf6WkPp\nh1VWJV2MMafj+/Vxq4icGeuAoigRaA9MMMa0h/9v5w5VIgrCKI7/DyiIbrAJBgWDjyCiSRTBslkN\nRqNZfBT7YlncbvABRLGItg2uYBCMFpHPcCdos4zDDOdX5t6bDlw4XD7uDB/AadlI+UmaBvpA07uI\nJM3THQOyDCwCPUmHZVPl5xL/bRPopznxBbAlqel5WkS8pvUNGAFrZRNl9QJMIuI23Q/pSr11e8Bd\nesct2wHGEfEeEV/AJbBROFN2LvEfIuIsIpYiYgXYB64j4qh0rlwkzUrqpes5YBd4KJsqn7QJbSJp\nNT3aBh4LRvovBzQ+SkmegXVJM5JE936fCmfK7q87Nq1NC8AoHYcwBQwi4qpwptxOgEEaMYxpfHOa\npFm6L9Tj0llyi4gbSUPgHvhM63nZVPn5F0Mzs4p5nGJmVjGXuJlZxVziZmYVc4mbmVXMJW5mVjGX\nuJlZxVziZmYVc4mbmVXsG46Y2BK+GKQNAAAAAElFTkSuQmCC\n",
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"text/plain": [
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"<matplotlib.figure.Figure at 0x7fc7cb622908>"
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]
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},
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"metadata": {},
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"output_type": "display_data"
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},
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{
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"data": {
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"image/png": 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N4kopFcdCvbOPUiqCdCxcRYr2xJVSKo5pEldKqTgWchIXkQQRWSUiHwd4bYCI/GW/vkpE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\nRK5CYII=\n",
|
|
"text/plain": [
|
|
"<matplotlib.figure.Figure at 0x7fc7cb632518>"
|
|
]
|
|
},
|
|
"metadata": {},
|
|
"output_type": "display_data"
|
|
}
|
|
],
|
|
"source": [
|
|
"%run util_knn.py\n",
|
|
"plot_classification_iris()"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"## Evaluating the algorithm"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"### Precision, recall and f-score"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"For evaluating classification algorithms, we usually calculate three metrics: precision, recall and F1-score\n",
|
|
"\n",
|
|
"* **Precision**: This computes the proportion of instances predicted as positives that were correctly evaluated (it measures how right our classifier is when it says that an instance is positive).\n",
|
|
"* **Recall**: This counts the proportion of positive instances that were correctly evaluated (measuring how right our classifier is when faced with a positive instance).\n",
|
|
"* **F1-score**: This is the harmonic mean of precision and recall, and tries to combine both in a single number."
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "code",
|
|
"execution_count": 14,
|
|
"metadata": {},
|
|
"outputs": [
|
|
{
|
|
"name": "stdout",
|
|
"output_type": "stream",
|
|
"text": [
|
|
" precision recall f1-score support\n",
|
|
"\n",
|
|
" setosa 1.00 1.00 1.00 8\n",
|
|
" versicolor 0.79 1.00 0.88 11\n",
|
|
" virginica 1.00 0.84 0.91 19\n",
|
|
"\n",
|
|
"avg / total 0.94 0.92 0.92 38\n",
|
|
"\n"
|
|
]
|
|
}
|
|
],
|
|
"source": [
|
|
"print(metrics.classification_report(y_test, y_test_pred, target_names=iris.target_names))"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"### Confusion matrix"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"Another useful metric is the confusion matrix"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "code",
|
|
"execution_count": 15,
|
|
"metadata": {},
|
|
"outputs": [
|
|
{
|
|
"name": "stdout",
|
|
"output_type": "stream",
|
|
"text": [
|
|
"[[ 8 0 0]\n",
|
|
" [ 0 11 0]\n",
|
|
" [ 0 3 16]]\n"
|
|
]
|
|
}
|
|
],
|
|
"source": [
|
|
"print(metrics.confusion_matrix(y_test, y_test_pred))"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"We see we classify well all the 'setosa' and 'versicolor' samples. "
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"### K-Fold validation"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"In order to avoid bias in the training and testing dataset partition, it is recommended to use **k-fold validation**."
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "code",
|
|
"execution_count": 8,
|
|
"metadata": {},
|
|
"outputs": [
|
|
{
|
|
"name": "stdout",
|
|
"output_type": "stream",
|
|
"text": [
|
|
"[ 0.93333333 0.8 1. 0.93333333 0.93333333 0.93333333\n",
|
|
" 1. 1. 0.86666667 1. ]\n"
|
|
]
|
|
}
|
|
],
|
|
"source": [
|
|
"from sklearn.model_selection import cross_val_score, KFold\n",
|
|
"from sklearn.pipeline import Pipeline\n",
|
|
"from sklearn.preprocessing import StandardScaler\n",
|
|
"\n",
|
|
"# create a composite estimator made by a pipeline of preprocessing and the KNN model\n",
|
|
"model = Pipeline([\n",
|
|
" ('scaler', StandardScaler()),\n",
|
|
" ('kNN', KNeighborsClassifier())\n",
|
|
"])\n",
|
|
"\n",
|
|
"# create a k-fold cross validation iterator of k=10 folds\n",
|
|
"cv = KFold(10, shuffle=True, random_state=33)\n",
|
|
"\n",
|
|
"# by default the score used is the one returned by score method of the estimator (accuracy)\n",
|
|
"scores = cross_val_score(model, x_iris, y_iris, cv=cv)\n",
|
|
"print(scores)"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {
|
|
"collapsed": true
|
|
},
|
|
"source": [
|
|
"We get an array of k scores. We can calculate the mean and the standard error to obtain a final figure"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "code",
|
|
"execution_count": 9,
|
|
"metadata": {},
|
|
"outputs": [
|
|
{
|
|
"name": "stdout",
|
|
"output_type": "stream",
|
|
"text": [
|
|
"Mean score: 0.940 (+/- 0.021)\n"
|
|
]
|
|
}
|
|
],
|
|
"source": [
|
|
"from scipy.stats import sem\n",
|
|
"def mean_score(scores):\n",
|
|
" return (\"Mean score: {0:.3f} (+/- {1:.3f})\").format(np.mean(scores), sem(scores))\n",
|
|
"print(mean_score(scores))"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"So, we get an average accuracy of 0.940."
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"## Tuning the algorithm"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"We are going to tune the algorithm, and calculate which is the best value for the k parameter."
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "code",
|
|
"execution_count": 18,
|
|
"metadata": {},
|
|
"outputs": [
|
|
{
|
|
"data": {
|
|
"text/plain": [
|
|
"<matplotlib.text.Text at 0x7fc7cb526160>"
|
|
]
|
|
},
|
|
"execution_count": 18,
|
|
"metadata": {},
|
|
"output_type": "execute_result"
|
|
},
|
|
{
|
|
"data": {
|
|
"image/png": 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RbbKanweMymQxMGv+/DBb69FBJsPfsCEsmpTV2g+FGlVIxsFzsCqget1dxJLk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\nTkSuQmCC\n",
|
|
"text/plain": [
|
|
"<matplotlib.figure.Figure at 0x7fc7cb726ac8>"
|
|
]
|
|
},
|
|
"metadata": {},
|
|
"output_type": "display_data"
|
|
}
|
|
],
|
|
"source": [
|
|
"k_range = range(1, 21)\n",
|
|
"accuracy = []\n",
|
|
"for k in k_range:\n",
|
|
" m = KNeighborsClassifier(k)\n",
|
|
" m.fit(x_train, y_train)\n",
|
|
" y_test_pred = m.predict(x_test)\n",
|
|
" accuracy.append(metrics.accuracy_score(y_test, y_test_pred))\n",
|
|
"plt.plot(k_range, accuracy)\n",
|
|
"plt.xlabel('k value')\n",
|
|
"plt.ylabel('Accuracy')\n"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"The result is very dependent of the input data. Execute again the train_test_split and test again how the result changes with k."
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"## References"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"* [KNeighborsClassifier API scikit-learn](http://scikit-learn.org/stable/modules/generated/sklearn.neighbors.KNeighborsClassifier.html)\n",
|
|
"* [Learning scikit-learn: Machine Learning in Python](http://proquest.safaribooksonline.com/book/programming/python/9781783281930/1dot-machine-learning-a-gentle-introduction/ch01s02_html), Raúl Garreta; Guillermo Moncecchi, Packt Publishing, 2013.\n"
|
|
]
|
|
},
|
|
{
|
|
"cell_type": "markdown",
|
|
"metadata": {},
|
|
"source": [
|
|
"## Licence\n",
|
|
"The notebook is freely licensed under under the [Creative Commons Attribution Share-Alike license](https://creativecommons.org/licenses/by/2.0/). \n",
|
|
"\n",
|
|
"© 2016 Carlos A. Iglesias, Universidad Politécnica de Madrid."
|
|
]
|
|
}
|
|
],
|
|
"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": "3.6.3"
|
|
}
|
|
},
|
|
"nbformat": 4,
|
|
"nbformat_minor": 1
|
|
}
|