Jump to content

User:Gk.mansoor/Books/Machine Learning Algorithms - An Overview

From Wikipedia, the free encyclopedia
This is the current revision of this page, as edited by Gk.mansoor (talk | contribs) at 12:50, 26 January 2014 (Created page with '{{saved book |title= |subtitle= |cover-image= |cover-color=}} == Machine Learning Algorithms == === An Overview === ;Introduction :Class membership probab...'). The present address (URL) is a permanent link to this version.
(diff) ← Previous revision | Latest revision (diff) | Newer revision → (diff)


Machine Learning Algorithms

[edit]

An Overview

[edit]
Introduction
Class membership probabilities
Computational learning theory
Data mining
Inductive bias
Machine learning
Overfitting
Version space
Supervised Learning - Types
Active learning (machine learning)
Learning to rank
Semi-supervised learning
Structured prediction
Supervised learning
Supervised Learning Algorithms
Backpropagation
Boosting (machine learning)
Case-based reasoning
Data pre-processing
Decision tree learning
Ensemble learning
Inductive logic programming
K-nearest neighbors algorithm
Kriging
Learning automata
Level of measurement
Minimum message length
Multilinear subspace learning
Proaftn
Probably approximately correct learning
Random forest
Ripple-down rules
Similarity learning
Statistical relational learning
Support vector machine
Variable kernel density estimation
Supervised Learning - Bayesian Statistics
Bayesian network
Bayesian statistics
Naive Bayes classifier
Unsupervised Learning - Types
Adaptive resonance theory
Artificial neural network
Blind signal separation
Cluster analysis
Hidden Markov model
Self-organizing map
Unsupervised learning
Transduction
Transduction (machine learning)
Reinforcement Learning - Types
Dynamic treatment regime
Error-driven learning
Fictitious play
Learning classifier system
Optimal control
Q-learning
Reinforcement learning
SARSA
Temporal difference learning
Inductive Transfer
Inductive transfer
Multi-task learning
Association Rule Mining
Association rule learning
Manifold Learning
Nonlinear dimensionality reduction
Deep Learning
Deep learning