利用笛卡尔粒子特征的知识发现与应用

J. Shanahan, J. Baldwin, T. Martin
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引用次数: 0

摘要

当前的知识发现方法可以根据发现的模型使用以下标准进行区分:有效性、可理解性(对该领域的用户或专家而言)和可演化性(随着时间的推移适应不断变化的环境的能力)。目前大多数方法都满足可理解性和有效性,但往往忽略了知识的进化。我们展示了基于笛卡尔颗粒特征的知识表示和相应的归纳算法如何在各种问题领域(包括控制、图像理解和医学诊断)中有效地解决这些知识发现标准(在本文中,讨论仅限于可理解性和有效性)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge discovery using Cartesian granule features with applications
Current approaches to knowledge discovery can be differentiated based on the discovered models using the following criteria: effectiveness, understandability (to a user or expert in the domain) and evolvability (the ability to adapt over time to a changing environment). Most current approaches satisfy understandability or effectiveness, but not simultaneously while tending to ignore knowledge evolution. We show how knowledge representation based upon Cartesian granule features and a corresponding induction algorithm can effectively address these knowledge discovery criteria (in this paper, the discussion is limited to understandability and effectiveness) across a wide variety of problem domains, including control, image understanding and medical diagnosis.
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