Learning probabilistic prediction functions

A. D. Santis, G. Markowsky, M. Wegman
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引用次数: 90

Abstract

The question of how to learn rules, when those rules make probabilistic statements about the future, is considered. Issues are discussed that arise when attempting to determine what a good prediction function is, when those prediction functions make probabilistic assumptions. Learning has at least two purposes: to enable the learner to make predictions in the future and to satisfy intellectual curiosity as to the underlying cause of a process. Two results related to these distinct goals are given. In both cases, the inputs are a countable collection of functions which make probabilistic statements about a sequence of events. One of the results shows how to find one of the functions, which generated the sequence, the other result allows to do as well in terms of predicting events as the best of the collection. In both cases the results are obtained by evaluating a function based on a tradeoff between its simplicity and the accuracy of its predictions.<>
学习概率预测函数
当这些规则对未来做出概率陈述时,如何学习规则的问题被考虑在内。当试图确定一个好的预测函数是什么时,当这些预测函数做出概率假设时,讨论了出现的问题。学习至少有两个目的:使学习者能够对未来作出预测,并满足对过程的根本原因的求知欲。给出了与这些不同目标相关的两个结果。在这两种情况下,输入都是可数函数的集合,这些函数对一系列事件做出概率性陈述。其中一个结果显示了如何找到生成序列的函数之一,另一个结果允许在预测事件方面做得一样好,是集合中最好的。在这两种情况下,结果都是通过权衡函数的简单性和预测的准确性来获得的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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