Reference books on machine learning in Clojure are as follows. Unfortunately, they are not published in Japanese.Reference books on Clojure in general will be discussed separately.
Reference books on machine learning in Clojure
This will be the one that describes the most practical examples among the reference books introduced here.
「Mastering Clojure Data Analysis」
Chapter 1 : Network Analysis - The Six Degrees of Kevin Bacon
Chapter 2 : GIS Analysis - Mapping Climate Change
Chapter 3 : Topic Modeling - Changing Concerns in the State of the Union Addresses
Chapter 4 : Classifying UFO - Sightings
Chapter 5 : Benford's Law - Detecting Natural Progressions of Numbers
Chapter 6 : Sentiment Analysis - Categorizing Hotel Reviews
Chapter 7 : Null Hypothesis Test - Analyzing Crime Data
Chapter 8 : A/B Testing - Statical Experiments for Web
Chapter 9 : Analyzing Social Data Participation
Chapter 10 : Modeling Stock Data
「Clojure Data Structures and Algorithm Cookbook」 Chapter 1 : Revisiting Arrays Chapter 2 : Alternative Linked Lists Chapter 3 : Walking Down Forests of Data Chapter 4 : Making Decisions with the Help of Science Chapter 5 : Programming with Logic Chapter 6 : Sharing by Communicating Chapter 7 : Transformations as First-class Citizens
「Clojure for Machine Learning」 Chapter 1 : Working with Matrices Chapter 2 : Understanding Linear Regression Chapter 3 : Categorizing Data Chapter 4 : Building Neural Networks Chapter 5 : Selecting and Evaluating Data Chapter 6 : Building Support Vector Machines Chapter 7 : Clustering Data Chapter 8 : Anomaly Detection and Recommendation Chapter 9 : Large-scale Machine Learning
「Clojure Data Science」 Chapter 1 : Statistics Chapter 2 : Inference Chapter 3 : Correlation Chapter 4 : Classification Chapter 5 : Big Data Chapter 6 : Clustering Chapter 7 : Recommender Systems Chapter 8 : Network Analysis Chapter 9 : Time Series Chapter 10 : Visualization
「Clojure Data Analysis Cookbook 2nd」 Chapter 1 : Importing Data for Analysis Chapter 2 : Cleaning and Validating Data Chapter 3 : Managing Complexity with Concurrent Chapter 4 : Improving Performance with Parallel Programming Chapter 5 : Distributed Data Processing with Cascalog Chapter 6 : Working with Incanter Datasets Chapter 7 : Statical Data Analysis with Incanter Chapter 8 : Working with Mathematica and R Chapter 9 : Clustering, Classifying, and Working with Weka Chapter 10 : Working with Unstructured and Texual Data Chapter 11 : Graphing in Incanter Chapter 12 : Creating Charts for the Web
コメント