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Landmark map: An extension of the self-organizing map for a user-intended nonlinear projection

机译:地标地图:自组织地图的扩展,用于用户预期的非线性投影

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A self-organizing map (SOM) is an unsupervised artificial neural network that is widely used in, e.g., data mining and visualization. Supervised and semi-supervised learning methods have been proposed for the SOM. However, their teacher labels do not describe the relationship between the data and the location of nodes. This study proposes a landmark map (LAMA), which is an extension of SOMs that utilizes several landmarks, e.g., pairs of nodes and data points. LAMA is designed to obtain a user-intended nonlinear projection to achieve, e.g., the landmark-oriented data visualization. To reveal the learning properties of LAMA, the Zoo dataset from the UCI Machine Learning Repository, the McDonald's dataset from Kaggle, and an artificial formant dataset were analyzed. The analysis results of the Zoo dataset indicated that LAMA could provide a new data view such as the landmark-centered data visualization. McDonald's dataset analysis demonstrated menu recommendation examples based on a few designated items. Furthermore, the artificial formant data analysis revealed that LAMA successfully provided the intended nonlinear projection associating articular movement with vertical and horizontal movement of a computer cursor. Potential applications of LAMA include data mining, recommendation systems, and human-computer interaction. (C) 2020 Elsevier B.V. All rights reserved.
机译:自组织图(SOM)是一种无监督的人工神经网络,广泛用于例如数据挖掘和可视化。已经为SOM提出了监督和半监督学习方法。但是,其教师标签未描述数据与节点位置之间的关系。这项研究提出了地标地图(LAMA),它是SOM的扩展,它利用了几个地标,例如成对的节点和数据点。 LAMA旨在获得用户期望的非线性投影,以实现例如面向地标的数据可视化。为了揭示LAMA的学习特性,分析了UCI机器学习存储库中的Zoo数据集,Kaggle的McDonald's数据集和人工共振峰数据集。 Zoo数据集的分析结果表明,LAMA可以提供一个新的数据视图,例如以地标为中心的数据可视化。麦当劳的数据集分析展示了基于一些指定项目的菜单推荐示例。此外,人工共振峰数据分析表明,LAMA成功提供了预期的非线性投影,将关节运动与计算机光标的垂直和水平运动相关联。 LAMA的潜在应用包括数据挖掘,推荐系统和人机交互。 (C)2020 Elsevier B.V.保留所有权利。

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