广义二叉搜索

R. Nowak
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引用次数: 87

摘要

本文研究了经典的二叉查找问题的推广,该问题是在一个排序列表中定位一个期望值。经典问题可以被看作是基于以函数的点样本形式的查询,从有限类这样的函数中确定正确的一维二值阈值函数。经典问题也等价于阈值位置的简单二进制编码。本文将二分查找扩展到学习更一般的二值函数。具体来说,如果目标函数和查询的集合满足某些几何关系,那么基于选择在每个步骤中具有最大区别性的查询的算法将在考虑的函数数量的对数步骤中确定正确的函数。满足几何关系的类的例子包括多维的线性分隔符。还讨论了处理噪声的扩展。可能的应用包括机器学习、信道编码和顺序实验设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized binary search
This paper studies a generalization of the classic binary search problem of locating a desired value within a sorted list. The classic problem can be viewed as determining the correct one-dimensional, binary-valued threshold function from a finite class of such functions based on queries taking the form of point samples of the function. The classic problem is also equivalent to a simple binary encoding of the threshold location. This paper extends binary search to learning more general binary-valued functions. Specifically, if the set of target functions and queries satisfy certain geometrical relationships, then an algorithm, based on selecting a query that is maximally discriminating at each step, will determine the correct function in a number of steps that is logarithmic in the number of functions under consideration. Examples of classes satisfying the geometrical relationships include linear separators in multiple dimensions. Extensions to handle noise are also discussed. Possible applications include machine learning, channel coding, and sequential experimental design.
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