Discrete approach for automatic knowledge extraction from precedent large-scale data, and classification

V. Ryazanov, Victor A. Vorontchikhin
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Abstract

The proposed method for automatic knowledge extraction from large-scale data is based on the idea of analysing neighborhoods of "supporting" objects and construction of data covered by sets of hyper parallelepipeds. A simple procedure to choose the supporting objects is applied. Knowledge extraction (logical regularities search) is based on the solution of special discrete linear optimization tasks associated with supporting objects. Two practical tasks are considered for method illustration.
离散方法用于从前例大规模数据中自动提取知识,并进行分类
该方法基于对“支持”对象的邻域分析和超平行六面体集所覆盖的数据的构造思想,从大规模数据中自动提取知识。应用了一个简单的程序来选择支撑对象。知识提取(逻辑规律搜索)是基于与支持对象相关联的特殊离散线性优化任务的求解。为了说明方法,考虑了两个实际任务。
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