基于智能代理推理的深度学习和数据挖掘分类

A. Chemchem, F. Alin, M. Krajecki
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引用次数: 11

摘要

在过去的几年里,机器学习和数据挖掘方法(MLDM)不断发展,以加速从数据中发现知识(KDD)的过程。今天的挑战是从这些提取出来的知识中选择最相关的知识。本文针对这些目的,开发了一种新的元知识提取的知识挖掘概念,并扩展了最流行的机器学习方法来提取元模型。将这种新的知识分类概念集成到认知代理体系结构中,从而加快了其推理过程。有了这个新的体系结构,代理将能够只选择可操作的规则类,而不是试图详尽地推断其整个规则库。
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Deep Learning and Data Mining Classification through the Intelligent Agent Reasoning
Over the last few years, machine learning and data mining methods (MLDM) are constantly evolving, in order to accelerate the process of knowledge discovery from data (KDD). Today's challenge is to select only the most relevant knowledge from those extracted. The present paper is directed to these purposes, by developing a new concept of knowledge mining for meta-knowledge extraction, and extending the most popular machine learning methods to extract meta-models. This new concept of knowledge classification is integrated on the cognitive agent architecture, so as to speed-up its inference process. With this new architecture, the agent will be able to select only the actionable rule class, instead of trying to infer its whole rule base exhaustively.
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