A Heuristically Self-Organised Linguistic Attribute Deep Learning in Edge Computing For IoT Intelligence
Hongmei He, Zhenhuan Zhu

TL;DR
This paper introduces a heuristic method for constructing a linguistic attribute hierarchy with decision trees to improve IoT data fusion and decision-making efficiency on edge devices, addressing the curse of dimensionality.
Contribution
It proposes a novel heuristic approach for self-organizing linguistic attribute hierarchies embedded with decision trees, outperforming genetic algorithms in efficiency for IoT applications.
Findings
Effective handling of high-dimensional data in IoT edge devices.
Comparable or better decision accuracy than single decision trees.
Significantly more efficient than genetic algorithms for hierarchy construction.
Abstract
With the development of Internet of Things (IoT), IoT intelligence becomes emerging technology. "Curse of Dimensionality" is the barrier of data fusion in edge devices for the success of IoT intelligence. A Linguistic Attribute Hierarchy (LAH), embedded with Linguistic Decision Trees (LDTs), can represent a new attribute deep learning. In contrast to the conventional deep learning, an LAH could overcome the shortcoming of missing interpretation by providing transparent information propagation through the rules, produced by LDTs in the LAH. Similar to the conventional deep learning, the computing complexity of optimising LAHs blocks the applications of LAHs. In this paper, we propose a heuristic approach to constructing an LAH, embedded with LDTs for decision making or classification by utilising the distance correlations between attributes and between attributes and the goal variable.…
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Taxonomy
TopicsRough Sets and Fuzzy Logic · Text and Document Classification Technologies · Neural Networks and Applications
