Lower bounds on learning decision lists and trees

被引:0
|
作者
Hancock, T
Jiang, T
Li, M
Tromp, J
机构
[1] MCMASTER UNIV,DEPT COMP SCI & SYST,HAMILTON,ON L8S 4K1,CANADA
[2] UNIV WATERLOO,DEPT COMP SCI,WATERLOO,ON N3L 3G1,CANADA
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暂无
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
k-Decision lists and decision trees play important roles in learning theory as well as in practical learning systems. k-Decision lists generalize classes such as monomials, k-DNF, and k-CNF, and like these subclasses they are polynomially PAC-learnable [R. Rivest, Mach. Learning 2 (1987), 229-246], This leaves open the question of whether k-decision lists can be learned as efficiently as k-DNF. We answer this question negatively in a certain sense, thus disproving a claim in a popular textbook [M. Anthony and N. Biggs, ''Computational Learning Theory,'' Cambridge Univ. Press, Cambridge, UK, 1992]. Decision trees, on the other hand, are not even known to be polynomially PAC-learnable, despite their widespread practical application. We will show that decision trees are not likely to be efficiently PAC-learnable. We summarize our specific results. The following problems cannot be approximated in polynomial time within a factor of 2(log delta n) for any delta > 1, unless NP subset of DTIME[2(polylog n)]: a generalized set cover, k-decision lists, k-decision lists by monotone decision lists, and decision trees. Decision lists cannot be approximated in polynomial time within a factor oi n(delta), for some constant delta > 0, unless NP = P. Also, k-decision lists with l 0-1 alternations cannot be approximated within a factor log' n unless NP subset of DTIME[n(O(log log n))] (providing an interesting comparison to the upper bound obtained by A. Dhagat and L. Hellerstein [in ''FOCS '94,'' pp. 64-74]). (C) 1996 Academic Press, Inc.
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页码:114 / 122
页数:9
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