Inference Engine driven by Situation-Based Correlation

IF 1.8 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
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引用次数: 0

Abstract

Drawing an intelligible inference is a challenging aspect of correlation studies in data mining. Regression analysis and inferences drawn based on correlation of system state play important role in decision making. However, traditional regression algorithms operate on data in an opaque manner thereby shielding end user from knowing the reasoning behind the inference drawn. Such techniques also fail to learn from repetitive historical conditions occurring in the system over a longer time-span. In this paper, we propose a novel situation- based correlation technique which can be used to not only predict system behavior but also to convey reasoning behind the prediction. “Situation” can be defined as a more inclusive version of the system state, which encompasses variables, parameters, rules, and relationships that describe the behavior of the system over the span of finite time interval. The proposed algorithm identifies similar situations in high dimensional time- series records and produces interpretable digital record of matching situations. We then deploy the proposed situation- based correlation algorithm as core of inference engine to successfully demonstrate fully functional expert system. (Abstract)
基于情境关联驱动的推理引擎
绘制可理解的推理是数据挖掘中相关性研究的一个具有挑战性的方面。回归分析和基于系统状态相关性的推断在决策中起着重要的作用。然而,传统的回归算法以不透明的方式对数据进行操作,从而使最终用户无法了解所得出的推理背后的推理。这样的技术也不能从系统在较长时间跨度内发生的重复历史条件中学习。在本文中,我们提出了一种新的基于情境的相关技术,它不仅可以用来预测系统行为,而且可以传达预测背后的推理。“情境”可以定义为系统状态的一个更包容的版本,它包含变量、参数、规则和关系,这些变量、参数、规则和关系描述了系统在有限时间间隔内的行为。该算法在高维时间序列记录中识别相似情况,并产生匹配情况的可解释数字记录。然后,我们将所提出的基于情境的关联算法作为推理引擎的核心,成功地演示了全功能的专家系统。(抽象)
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来源期刊
CiteScore
5.10
自引率
0.00%
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0
审稿时长
19 weeks
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