Semi-Supervised Learning
作者:Raymond Board, Leonard Pitt
摘要
The distribution-independent model of (supervised) concept learning due to Valiant (1984) is extended to that of semi-supervised learning (ss-learning), in which a collection of disjoint concepts is to be simultaneously learned with only partial information concerning concept membership available to the learning algorithm. It is shown that many learnable concept classes are also ss-learnable. A new technique of learning, using an intermediate oracle, is introduced. Sufficient conditions for a collection of concept classes to be ss-learnable are given.
论文关键词:concept learning, classification, pac-learning, Boolean formulas, polynomial-time identification
论文评审过程:
论文官网地址:https://doi.org/10.1023/A:1022653227824