Multi-valued functional decomposition as a machine learning method

C. Files, M. Perkowski
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引用次数: 48

Abstract

In the past few years, several authors have presented methods of using functional decomposition as applied to machine learning. These authors explore the ideas of functional decomposition, but left the concepts of machine learning to the papers that they reference. In general, they never fully explain why a logic synthesis method should be applied to machine learning. This paper explores and presents the basic concepts of machine learning, and how some concepts match nicely with multi-valued logic synthesis, while others pose great difficulties. The main reason for using multi-valued synthesis is that many problems are naturally multi-valued (i.e., values taken from a discrete set). Thus, mapping the problem directly to a multi-valued set of inputs and outputs is much more natural than encoding the problem into a binary form. The paper also shows that any multi-valued logic synthesis method could be applied to the machine learning problem. But, this paper focuses on multivalued functional decomposition because of its generality of minimizing a given data set.
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多值泛函分解作为一种机器学习方法
在过去的几年里,一些作者提出了将功能分解应用于机器学习的方法。这些作者探索了功能分解的思想,但将机器学习的概念留给了他们引用的论文。一般来说,他们从来没有完全解释为什么逻辑综合方法应该应用于机器学习。本文探讨并介绍了机器学习的基本概念,以及一些概念如何与多值逻辑综合很好地匹配,而另一些概念则存在很大的困难。使用多值综合的主要原因是许多问题自然是多值的(即,从离散集合中取值)。因此,将问题直接映射到输入和输出的多值集合比将问题编码为二进制形式要自然得多。本文还证明了任何多值逻辑综合方法都可以应用于机器学习问题。但是,由于多值泛函分解具有最小化给定数据集的通用性,因此本文主要研究多值泛函分解。
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