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Machine Learning - DISCo

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Split infomation, 73-74<br />

Squashing function, 96<br />

Stacking problems. See also SafeToStack<br />

analytical learning in, 310<br />

explanation-based learning in, 3 10<br />

genetic programming in, 263-265<br />

PRODIGY in, 327<br />

Standard deviation, 133, I 36-1 37<br />

State-transition function, 380<br />

Statistics:<br />

basic definitions, 133<br />

influence on machine learning, 4<br />

Stochastic gradient descent, 93-94,<br />

98-100, 104-105<br />

Student t tests, 147-150, 152<br />

Substitution, 285, 296<br />

Sum rule, 159<br />

t tests, 147-150, 152<br />

TANGENTPROP algorithm, 347-350, 362<br />

BACKPROPAGATION algorithm,<br />

comparison with, 349<br />

in EBNN algorithm, 352<br />

search of hypothesis space<br />

Two-point crossover operator, 255,<br />

by KBANN and BACKPROPAGATION 257-258<br />

algorithms, comparison with, Two-sided bounds, 141<br />

350-35 1<br />

tanh function, 97<br />

Target concept, 22-23,4041<br />

Unbiased estimator, 133, 137<br />

PAC learning of, 211-213<br />

Unbiased learners, 4042<br />

Target function, 7-8, 17<br />

sample complexity of, 212-2 13<br />

continuous-valued. See Continuous-<br />

Uniform crossover operator, 255<br />

valued target function<br />

Unifying substitution, 285, 296<br />

representation of, 8-9, 14, 17<br />

TD-GAMMON, 3, 14, 369, 383<br />

TD(Q and BACKPROPAGATION algorithm<br />

in, 384<br />

TD(h), 383-384, 387<br />

Temporal credit assignment, in<br />

reinforcement learning, 369<br />

Temporal difference learning, 383-384,<br />

386-387<br />

Terms, in logic, 284, 285<br />

Text classification, naive Bayes classifier<br />

in, 180-184<br />

Theorem of total probability, 159<br />

0-subsumption, 302<br />

with entailment and<br />

more-general-than partial ordering,<br />

299-300<br />

Tournament selection, 256<br />

Training and validation set approach, 69.<br />

See also Validation set<br />

Training derivatives, 117-1 18<br />

Training error:<br />

of continuous-valued hypotheses, 89-90<br />

of discrete-valued hypotheses, 205<br />

in multilayer networks, 98<br />

alternative error functions, 117-1 18<br />

Training examples, 5-6, 17, 23. See also<br />

Sample complexity<br />

explanation in PROLOG-EBG, 314-3 18<br />

in PAC learning, 205-207<br />

bounds on, 226<br />

Voronoi diagram of, 233<br />

Training experience, 5-6, 17<br />

Training values, rule for estimation of, 10<br />

True error, 130-131, 133, 137, 150,<br />

204-205<br />

of two hypotheses, differences in,<br />

143-144<br />

in version spaces, 208-209<br />

Unsupe~ised learning, 191<br />

Utility analysis, in explanation-based<br />

learning, 327-328<br />

Validation set. See also Training and<br />

validation set approach<br />

cross-validation and, 111-1 12<br />

error over, 110<br />

Vapnik-Chervonenkis (VC) dimension. See<br />

VC dimension<br />

i<br />

I

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