Effective Selection of Entities From Heterogeneous and Large Resources Using a Cooperative Neuro-Fuzzy System

IF 0.7 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
P. Sajja, Rasendu Mishra
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引用次数: 0

Abstract

This paper focuses on using the cooperative neuro-fuzzy system for the effective and customised selection of entities from large and heterogeneous resources by presenting a general architecture. An experiment is carried out with the fast-moving consumer goods to prove the utility of the architecture. It is observed that most consumers go for the frequent purchase of fast-moving consumer items. Further, various brands, costs, discounts, schemes, quantities, and reviews might make it challenging. Hence, such decisions need to be intelligent and practically feasible in terms of time and effort. The paper discusses neural networks to categorise the entities, type-1 & 2 fuzzy membership functions with rules, training sets, and graphical views of the fuzzy rules and the experiment details. Besides the generic approach and experiment, the paper also discusses the work done so far with their limitations and applications in other domains. At the end, the paper presents the limitations and possible future enhancements.
基于协同神经模糊系统的异构大资源实体的有效选择
本文通过提出一种通用的体系结构,重点研究了利用协同神经模糊系统从大型异构资源中进行有效的定制化实体选择。以快速消费品为对象进行了实验,验证了该体系结构的有效性。据观察,大多数消费者倾向于频繁购买快速消费品。此外,各种品牌、成本、折扣、方案、数量和评价可能会使其具有挑战性。因此,这样的决策需要是明智的,并且在时间和精力方面实际上是可行的。本文讨论了神经网络对实体的分类,带规则的1型和2型模糊隶属函数,训练集,模糊规则的图形视图和实验细节。除了一般的方法和实验外,本文还讨论了迄今为止所做的工作,以及它们的局限性和在其他领域的应用。最后,本文提出了局限性和未来可能的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of System Dynamics Applications
International Journal of System Dynamics Applications COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
自引率
38.90%
发文量
26
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