본문 바로가기
장바구니0

Python Machine Learning Cookbook > PACKT 원서리스트

도서간략정보

Python Machine Learning Cookbook
판매가격 32,000원
저자 Joshi
도서종류 외국도서
출판사 PACKT
발행언어 영어
발행일 2016-06
페이지수 304
ISBN 9781786464477
도서구매안내 온, 오프라인 서점에서 구매 하실 수 있습니다.

구매기능

  • 도서 정보

    도서 상세설명

    1: The Realm of Supervised Learning
    Introduction
    Preprocessing data using different techniques
    Label encoding
    Building a linear regressor
    Computing regression accuracy
    Achieving model persistence
    Building a ridge regressor
    Building a polynomial regressor
    Estimating housing prices
    Computing the relative importance of features
    Estimating bicycle demand distribution

    2: Constructing a Classifier
    Introduction
    Building a simple classifier
    Building a logistic regression classifier
    Building a Naive Bayes classifier
    Splitting the dataset for training and testing
    Evaluating the accuracy using cross-validation
    Visualizing the confusion matrix
    Extracting the performance report
    Evaluating cars based on their characteristics
    Extracting validation curves
    Extracting learning curves
    Estimating the income bracket

    3: Predictive Modeling
    Introduction
    Building a linear classifier using Support Vector Machine (SVMs)
    Building a nonlinear classifier using SVMs
    Tackling class imbalance
    Extracting confidence measurements
    Finding optimal hyperparameters
    Building an event predictor
    Estimating traffic

    4: Clustering with Unsupervised Learning
    Introduction
    Clustering data using the k-means algorithm
    Compressing an image using vector quantization
    Building a Mean Shift clustering model
    Grouping data using agglomerative clustering
    Evaluating the performance of clustering algorithms
    Automatically estimating the number of clusters using DBSCAN algorithm
    Finding patterns in stock market data
    Building a customer segmentation model

    5: Building Recommendation Engines
    Introduction
    Building function compositions for data processing
    Building machine learning pipelines
    Finding the nearest neighbors
    Constructing a k-nearest neighbors classifier
    Constructing a k-nearest neighbors regressor
    Computing the Euclidean distance score
    Computing the Pearson correlation score
    Finding similar users in the dataset
    Generating movie recommendations

    6: Analyzing Text Data
    Introduction
    Preprocessing data using tokenization
    Stemming text data
    Converting text to its base form using lemmatization
    Dividing text using chunking
    Building a bag-of-words model
    Building a text classifier
    Identifying the gender
    Analyzing the sentiment of a sentence
    Identifying patterns in text using topic modeling

    7: Speech Recognition
    Introduction
    Reading and plotting audio data
    Transforming audio signals into the frequency domain
    Generating audio signals with custom parameters
    Synthesizing music
    Extracting frequency domain features
    Building Hidden Markov Models
    Building a speech recognizer

    8: Dissecting Time Series and Sequential Data
    Introduction
    Transforming data into the time series format
    Slicing time series data
    Operating on time series data
    Extracting statistics from time series data
    Building Hidden Markov Models for sequential data
    Building Conditional Random Fields for sequential text data
    Analyzing stock market data using Hidden Markov Models

    9: Image Content Analysis
    Introduction
    Operating on images using OpenCV-Python
    Detecting edges
    Histogram equalization
    Detecting corners
    Detecting SIFT feature points
    Building a Star feature detector
    Creating features using visual codebook and vector quantization
    Training an image classifier using Extremely Random Forests
    Building an object recognizer

    10: Biometric Face Recognition
    Introduction
    Capturing and processing video from a webcam
    Building a face detector using Haar cascades
    Building eye and nose detectors
    Performing Principal Components Analysis
    Performing Kernel Principal Components Analysis
    Performing blind source separation
    Building a face recognizer using Local Binary Patterns Histogram

    11: Deep Neural Networks
    Introduction
    Building a perceptron
    Building a single layer neural network
    Building a deep neural network
    Creating a vector quantizer
    Building a recurrent neural network for sequential data analysis
    Visualizing the characters in an optical character recognition database
    Building an optical character recognizer using neural networks

    12: Visualizing Data
    Introduction
    Plotting 3D scatter plots
    Plotting bubble plots
    Animating bubble plots
    Drawing pie charts
    Plotting date-formatted time series data
    Plotting histograms
    Visualizing heat maps
    Animating dynamic signals

    backindex: Appendix A: Index
  • 사용후기

    사용후기가 없습니다.

  • 배송/교환정보

    배송정보

    배송 안내 입력전입니다.

    교환/반품

    교환/반품 안내 입력전입니다.

선택하신 도서가 장바구니에 담겼습니다.

계속 둘러보기 장바구니보기
회사소개 개인정보 이용약관
Copyright © 2001-2019 도서출판 홍릉. All Rights Reserved.
상단으로