首页> 外文期刊>Knowledge-Based Systems >Bidirectional and multidirectional associative memories as models in linkage analysis in data analytics: Conceptual and algorithmic developments
【24h】

Bidirectional and multidirectional associative memories as models in linkage analysis in data analytics: Conceptual and algorithmic developments

机译:双向和多向联想记忆作为数据分析中链接分析的模型:概念和算法发展

获取原文
获取原文并翻译 | 示例

摘要

Associative and bidirectional associative memories are examples of associative structures studied intensively in the literature and exhibiting a large volume of applied studies. The underlying idea is to reveal and describe linkages among data and express them in a form of an associative mapping. Such mappings are constructed in a way so that the recall processes (both one-directional and bidirectional) lead to the recalled items characterized by a minimal recall error. Associative memories, morphological memories, and fuzzy associative memories have been studied in numerous areas yielding efficient applications to image recall and enhancements and fuzzy controllers (which can be regarded as one-directional associative memories). In this study, we revisit and augment the concept of associative memories by offering some new conceptual design insights where the corresponding mappings are realized on a basis of a related collection of landmarks (prototypes) over which an associative mapping becomes spanned. In light of the bidirectional character of mappings, we develop an augmentation of the existing fuzzy clustering (Fuzzy C-Means) in the form of a so-called collaborative fuzzy clustering. Here an interaction in the construction of prototypes is optimized so that the bidirectional recall error can be minimized. Further conceptual architectural augmentations are discussed including a relational description of associative memories and linkage analysis accomplished in the presence of explanatory spaces. We generalize the mapping into its granular version in which numeric prototypes formed through the clustering process are made granular so that the quality of the recall can be quantified. Several scenarios of allocation of information granularity aimed at the optimization of the characteristics of recalled results (information granules) quantified in terms of coverage and specificity are proposed. Illustrative examples are presented as well. Crown Copyright (C) 2017 Published by Elsevier B.V. All rights reserved.
机译:联想和双向联想记忆是在文献中深入研究的联想结构的例子,并且展现出大量的应用研究。基本思想是揭示和描述数据之间的链接,并以关联映射的形式表达它们。这样的映射以一种方式构造,使得召回过程(单向和双向)导致以最小召回误差为特征的被召回项目。联想记忆,形态记忆和模糊联想记忆已在许多领域进行了研究,为图像调用和增强以及模糊控制器(可以看作是单向联想记忆)提供了有效的应用。在这项研究中,我们通过提供一些新的概念设计见解来重新审视和增强联想记忆的概念,其中在对应的地标(原型)的集合基础上实现了对应的映射,在这些地标上跨越了联想的映射。鉴于映射的双向特性,我们以所谓的协作模糊聚类的形式对现有的模糊聚类(模糊C均值)进行了扩充。在此,优化了原型构建过程中的交互作用,以便可以将双向召回错误最小化。讨论了进一步的概念性架构扩充,包括关联内存的关系描述和在存在解释性空间的情况下完成的链接分析。我们将映射概括为它的粒度版本,在该粒度版本中,通过聚类过程形成的数字原型被粒度化,以便可以量化召回的质量。提出了几种信息粒度分配方案,这些方案旨在优化根据覆盖范围和特异性量化的召回结果(信息颗粒)的特征。还提供了说明性示例。官方版权(C)2017,由Elsevier B.V.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号