HYPOTHESIS-DRIVEN CONSTRUCTIVE INDUCTION IN AQ17-HCI - A METHOD AND EXPERIMENTS

被引:68
作者
WNEK, J
MICHALSKI, RS
机构
[1] Center for Artificial Intelligence, George Mason University, Fairfax, VA
关键词
CONCEPT LEARNING; CONSTRUCTIVE INDUCTION; DECISION RULES; DECISION TREES; DECISION LISTS; DIAGRAMMATIC VISUALIZATION;
D O I
10.1023/A:1022622132310
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The proposed method for constructive induction searches for concept descriptions in a representation space that is being iteratively improved. In each iteration, the system learns concept description from training examples projected into a newly constructed representation space, using an Aq algorithm-based inductive learning system (AQ15). The learned description is analyzed to determine desirable problem-oriented modifications of the representation space. These modifications include generating new attributes, removing redundant or insignificant ones, and/or agglomerating attribute values into larger units. New attributes are constructed by assigning names to groups of the best-performing characteristic rules for each decision class, and then are used to define the representation space for the next iteration. This iterative process repeats until the created hypotheses satisfy a stopping criterion. In several experiments on learning discrete functions, the developed AQ17-HCI system consistently outperformed, in terms of the prediction accuracy on new examples, all systems that it was compared to, including the AQ15 rule learning system, GREEDY3 and GROVE decision-list learning systems, and RED-WOOD and FRINGE decision-tree learning systems. Although the proposed method was developed for the A(q)-based rule learning system, it can potentially be adapted to any other inductive learning system. In this sense, it represents a universal new approach to constructive induction.
引用
收藏
页码:139 / 168
页数:30
相关论文
共 60 条
[1]  
ARCISZEWSKI T, 1992, J KNOWLEDGE ENG HEUR, V5, P22
[2]  
BALA JW, 1992, 9TH P INT C MACH LEA, P20
[3]  
BENTRUP JA, 1987, ISG872 U ILL DEP COM
[4]  
BLOEDORN E, 1993, 2ND P INT WORKSH MUL, P188
[5]  
BLOEDORN E, 1991, 3RD P INT C TOOLS AI
[6]  
Breiman L., 1984, CLASSIFICATION REGRE
[7]  
CARPINETO C, 1992, 9TH P INT C MACH LEA, P43
[8]  
Cestnik B., 1987, PROGR MACHINE LEARNI, P31
[9]  
Clark P., 1989, Machine Learning, V3, P261, DOI 10.1023/A:1022641700528
[10]  
DERAEDT L, 1989, P EWSL 89, P189