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Python Machine Learning > PACKT 원서리스트

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Python Machine Learning
판매가격 45,000원
저자 Raschka
도서종류 외국도서
출판사 PACKT
발행언어 영어
발행일 2015-09
페이지수 454
ISBN 9781783555130
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  • 도서 정보

    도서 상세설명

    1: Giving Computers the Ability to Learn from Data
    Building intelligent machines to transform data into knowledge
    The three different types of machine learning
    An introduction to the basic terminology and notations
    A roadmap for building machine learning systems
    Using Python for machine learning
    Summary

    2: Training Machine Learning Algorithms for Classification
    Artificial neurons – a brief glimpse into the early history of machine learning
    Implementing a perceptron learning algorithm in Python
    Adaptive linear neurons and the convergence of learning
    Summary

    3: A Tour of Machine Learning Classifiers Using Scikit-learn
    Choosing a classification algorithm
    First steps with scikit-learn
    Modeling class probabilities via logistic regression
    Maximum margin classification with support vector machines
    Solving nonlinear problems using a kernel SVM
    Decision tree learning
    K-nearest neighbors – a lazy learning algorithm
    Summary

    4: Building Good Training Sets – Data Preprocessing
    Dealing with missing data
    Handling categorical data
    Partitioning a dataset in training and test sets
    Bringing features onto the same scale
    Selecting meaningful features
    Assessing feature importance with random forests
    Summary

    5: Compressing Data via Dimensionality Reduction
    Unsupervised dimensionality reduction via principal component analysis
    Supervised data compression via linear discriminant analysis
    Using kernel principal component analysis for nonlinear mappings
    Summary

    6: Learning Best Practices for Model Evaluation and Hyperparameter Tuning
    Streamlining workflows with pipelines
    Using k-fold cross-validation to assess model performance
    Debugging algorithms with learning and validation curves
    Fine-tuning machine learning models via grid search
    Looking at different performance evaluation metrics
    Summary

    7: Combining Different Models for Ensemble Learning
    Learning with ensembles
    Implementing a simple majority vote classifier
    Evaluating and tuning the ensemble classifier
    Bagging – building an ensemble of classifiers from bootstrap samples
    Leveraging weak learners via adaptive boosting
    Summary

    8: Applying Machine Learning to Sentiment Analysis
    Obtaining the IMDb movie review dataset
    Introducing the bag-of-words model
    Training a logistic regression model for document classification
    Working with bigger data – online algorithms and out-of-core learning
    Summary

    9: Embedding a Machine Learning Model into a Web Application
    Serializing fitted scikit-learn estimators
    Setting up a SQLite database for data storage
    Developing a web application with Flask
    Turning the movie classifier into a web application
    Deploying the web application to a public server
    Summary

    10: Predicting Continuous Target Variables with Regression Analysis
    Introducing a simple linear regression model
    Exploring the Housing Dataset
    Implementing an ordinary least squares linear regression model
    Fitting a robust regression model using RANSAC
    Evaluating the performance of linear regression models
    Using regularized methods for regression
    Turning a linear regression model into a curve – polynomial regression
    Summary

    11: Working with Unlabeled Data – Clustering Analysis
    Grouping objects by similarity using k-means
    Organizing clusters as a hierarchical tree
    Locating regions of high density via DBSCAN
    Summary

    12: Training Artificial Neural Networks for Image Recognition
    Modeling complex functions with artificial neural networks
    Classifying handwritten digits
    Training an artificial neural network
    Developing your intuition for backpropagation
    Debugging neural networks with gradient checking
    Convergence in neural networks
    Other neural network architectures
    A few last words about neural network implementation
    Summary

    13: Parallelizing Neural Network Training with Theano
    Building, compiling, and running expressions with Theano
    Choosing activation functions for feedforward neural networks
    Training neural networks efficiently using Keras
    Summary

    backindex: Appendix A: Index
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