Support logic for feature representation, pattern recognition and machine learning

J. Baldwin, R. Gooch, T. Martin
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引用次数: 4

Abstract

The formalism of support logic provides a framework for deductive inference, with mathematically sound and consistent treatment of uncertainty and evidence which is aggregated through the reasoning process. The authors apply support logic programming to pattern recognition. Initially, a pattern classifier is constructed by encoding expert knowledge of the problem domain into rules of support logic. Fuzzy sets allow the general properties of features to be described precisely. Semantic unification provides an alternative to the usual metric-based similarity criteria. The validity of the approach is established by cross-validating the support logic classifier against models from alternative paradigms. The authors then attempt to circumvent the requirement for a domain expert, and assess the extent to which data-driven learning processes can be used to automatically derive components of the support logic classifier.<>
支持特征表示、模式识别和机器学习的逻辑
支持逻辑的形式主义为演绎推理提供了一个框架,通过推理过程对不确定性和证据进行数学上合理和一致的处理。作者将支持逻辑编程应用于模式识别。首先,通过将问题领域的专家知识编码为支持逻辑的规则来构建模式分类器。模糊集允许精确地描述特征的一般属性。语义统一为通常基于度量的相似性标准提供了另一种选择。该方法的有效性是通过交叉验证支持逻辑分类器对来自备选范式的模型的有效性来建立的。然后,作者试图规避对领域专家的需求,并评估数据驱动的学习过程可用于自动派生支持逻辑分类器组件的程度。
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