部分目录:
- ch1 machine learning? where to use?application example.
more examples of fielded applications
- ch2 input :concept instance attribute 输入
sparse data,string and date attribute
- ch3 output--knowledge representation different representation to different algorithms 输出
interactive decision tree
- ch4 basic methods of machine learning 算法基本思想
multinominal Bayes models for document classification,logistic regression
- ch5 performence evaluation
Kappa statistic for measuring the success of a predictor ;cost-sensitive learning bulid a cost-sensitive model ;cost curves
- ch6 machine learning algorithms
NN ; Bayesin network classifiers;heuristics used in the successful RIPPER rule learner;model tree to rules for numeric prediction ; apply locally weighted regression to classification problems;X-mean clustering algorithm
new attribute selection schemes such as race search and
the use of support vector machines and new methods for combining models
such as additive regression, additive logistic regression, logistic model trees, and
option trees;LogitBoost ; useful transformations (principal components analysis and transformations for text mining and time series); using unlabeled
data to improve classification( co-training and co-EM methods).