伽罗瓦晶格:概念学习的框架。设计、评估和改进

E. Mephu-nguifo
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引用次数: 19

摘要

之前报道的LEGAL系统是一个基于伽罗瓦晶格的经验机器学习系统。它的目的是首先从一个由一组用二元属性描述的对象表示的概念产生一个半格。然后利用半格中一些选定的属性连词和多数投票原则,LEGAL从看不见的对象中预测新的例子。本文介绍了一个新的版本LEGAL-E及其在两个生物学问题上的应用:剪接位点预测和启动子识别。所得到的结果远远优于一些符号学习系统的结果,并且与一些最好的神经网络方法的结果相当。此外,还描述了LEGAL-E和神经网络共有的一些经验性质。最后,本文展示了如何将半格作为一种动态神经网络架构,以结合两种学习技术进行知识细化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Galois Lattice: a framework for concept learning. Design, evaluation and refinement
The previously-reported LEGAL system is an empirical machine learning system based on Galois Lattice. Its aim is first to produce a semi-lattice from a concept denoted by a set of objects which are described with binary attributes. Then using some selected attribute conjunctions in the semi-lattice and a majority vote principle, LEGAL predicts new examples from unseen objects. This paper describes a new version LEGAL-E and its application to two biological problems: the prediction of splice junctions sites and the promoter recognition. Results obtained are far better than those of some symbolic learning systems, and are as better as those of some best neural networks methods. Moreover some empirical properties shared by LEGAL-E and neural networks are described. Finally this paper shows how the semi-lattice can be used as a dynamic neural network architecture in order to combine both learning techniques for knowledge refinement.<>
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