Applied Machine Learning by David Forsyth
Machine learning methods are now an important tool for scientists, researchers, engineers and students in a wide range of areas. This book is written for people who want to adopt and use the main tools of machine learning, but arent necessarily going to want to be machine learning researchers. Intended for students in final year undergraduate or first year graduatecomputer science programs in machine learning, this textbook is amachine learning toolkit. Applied Machine Learning covers many topicsfor people who want to use machine learning processes to get thingsdone, with a strong emphasis on using existing tools and packages,rather than writing ones own code.
A companion to the author'sProbability and Statistics for Computer Science, this book picks up where the earlier book left off (but also supplies a summary of probability that the reader can use).
Emphasizing the usefulness ofstandard machinery from appliedstatistics, this textbook gives an overview of the major applied areas inlearning, including coverage of: classification using standard machinery (naive bayes; nearestneighbor; SVM) clustering and vector quantization (largely as in PSCS) PCA (largely as in PSCS) variants of PCA (NIPALS; latent semantic analysis; canonicalcorrelation analysis) linear regression (largely as in PSCS) generalized linear models including logistic regression model selection with Lasso, elasticnet robustness and m-estimators Markov chains and HMMs (largely as in PSCS) EM in fairly gory detail; long experience teaching this suggests onedetailed example is required, whichstudents hate; but once theyve been through that, the next one is easy simple graphical models (in the variational inference section) classification with neural networks, with a particular emphasis onimage classification autoencoding with neural networks structure learning
A companion to the author'sProbability and Statistics for Computer Science, this book picks up where the earlier book left off (but also supplies a summary of probability that the reader can use).
Emphasizing the usefulness ofstandard machinery from appliedstatistics, this textbook gives an overview of the major applied areas inlearning, including coverage of: classification using standard machinery (naive bayes; nearestneighbor; SVM) clustering and vector quantization (largely as in PSCS) PCA (largely as in PSCS) variants of PCA (NIPALS; latent semantic analysis; canonicalcorrelation analysis) linear regression (largely as in PSCS) generalized linear models including logistic regression model selection with Lasso, elasticnet robustness and m-estimators Markov chains and HMMs (largely as in PSCS) EM in fairly gory detail; long experience teaching this suggests onedetailed example is required, whichstudents hate; but once theyve been through that, the next one is easy simple graphical models (in the variational inference section) classification with neural networks, with a particular emphasis onimage classification autoencoding with neural networks structure learning