Joint concept formation

Huan Liu, W. Wen
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引用次数: 3

Abstract

Abstract Many concept formation systems construct disjoint-concept trees. However, a priori imposed tree structures may restrict the application of these systems in some domains. A joint concept formation scheme is thus proposed, which learns from observation, and constructs acyclic directed concept graphs (trees are a special case). We show that the joint concept formation system can avoid or alleviate some problems the disjoint concept formation system would face, such as the unique winner and oscillation problems. We also demonstrate that a joint concept formation system is able to generate a concept tree if such a regularity is found among the data. The experimental results are consistent with the expectations that the joint system is a generalized version of the disjoint system and improves the learning performance. Joint concept formation extends the classic works, such as COBWEB and ARACHNE.
节理概念形成
许多概念形成系统构造不相交的概念树。然而,先验强加的树结构可能会限制这些系统在某些领域的应用。提出了一种联合概念形成方案,该方案从观察中学习,构造无环有向概念图(树是特例)。研究表明,联合概念形成系统可以避免或缓解不联合概念形成系统所面临的一些问题,如唯一赢家问题和振荡问题。我们还证明了如果数据之间存在这样的规律性,联合概念形成系统就能够生成概念树。实验结果与期望一致,即联合系统是不连接系统的广义版本,并提高了学习性能。联合概念的形成延伸了经典作品,如COBWEB和ARACHNE。
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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