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Decision list compression by mild random restrictions

机译:轻度随机限制压缩决策列表

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A decision list is an ordered list of rules. Each rule is specified by a term, which is a conjunction of literals, and a value. Given an input, the output of a decision list is the value corresponding to the first rule whole term is satisfied by the input. Decision lists generalize both CNFs and DNFs, and have been studied both in complexity theory and in learning theory.The size of a decision list is the number of rules, and its width is the maximal number of variables in a term. We prove that decision lists of small width can always be approximated by decision lists of small size, where we obtain sharp bounds (up to constants). This in particular resolves a conjecture of Gopalan, Meka and Reingold (Computational Complexity, 2013) on DNF sparsification.An ingredient in our proof is a new random restriction lemma, which allows to analyze how DNFs (and more generally, decision lists) simplify if a small fraction of the variables are fixed. This is in contrast to the more commonly used switching lemma, which requires most of the variables to be fixed.
机译:决策列表是规则的有序列表。每个规则由一个术语指定,该术语是文字和值的结合。在给定输入的情况下,决策列表的输出是与输入满足的第一项规则相对应的值。决策列表对CNF和DNF都进行了概括,并且在复杂性理论和学习理论中都进行了研究。决策列表的大小是规则的数量,其宽度是一个术语中变量的最大数量。我们证明了小宽度的决策列表始终可以由小尺寸的决策列表近似,从而获得尖锐的边界(最大为常数)。这尤其解决了Gopalan,Meka和Reingold(Computational Complexity,2013)关于DNF稀疏化的猜想。我们证明的一个因素是新的随机限制引理,该引理允许分析DNF(更笼统地说是决策列表)如何简化一小部分变量是固定的。这与更常用的切换引理相反,后者需要固定大多数变量。

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