数据挖掘中的空间依赖关系和语义概念建模

Ranga Raju Vatsavai
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引用次数: 1

摘要

数据挖掘是在大型数据集中发现新的模式和关系的过程。然而,一些研究表明,由于违反了基本的地理空间原则,一般的数据挖掘技术往往不能从空间数据中提取有意义的模式和关系。在本教程中,我们将介绍数据挖掘中空间和语义概念显式建模背后的基本原则。我们特别关注在广泛使用的分类、聚类和预测算法中对这些概念进行建模。分类是学习结构或模型(从用户给定的输入)并将已知模型应用于新数据的过程。聚类是在数据中发现“相似”的组和结构的过程,而无需在数据中应用任何已知结构。预测是寻找一个函数的过程,这个函数能以最小的误差对数据进行建模(解释)。在所有这些方法中,一个共同的假设是数据是独立且均匀分布的。这种假设不适用于空间数据,因为空间依赖性和空间异质性是一种常态。此外,空间语义常常被数据挖掘算法所忽略。在本教程中,我们将介绍数据挖掘中空间依赖性和语义概念显式建模的最新进展。
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Modeling spatial dependencies and semantic concepts in data mining
Data mining is the process of discovering new patterns and relationships in large datasets. However, several studies have shown that general data mining techniques often fail to extract meaningful patterns and relationships from the spatial data owing to the violation of fundamental geospatial principles. In this tutorial, we introduce basic principles behind explicit modeling of spatial and semantic concepts in data mining. In particular, we focus on modeling these concepts in the widely used classification, clustering, and prediction algorithms. Classification is the process of learning a structure or model (from user given inputs) and applying the known model to the new data. Clustering is the process of discovering groups and structures in the data that are "similar," without applying any known structures in the data. Prediction is the process of finding a function that models (explains) the data with least error. One common assumption among all these methods is that the data is independent and identically distributed. Such assumptions do not hold well in spatial data, where spatial dependency and spatial heterogeneity are a norm. In addition, spatial semantics are often ignored by the data mining algorithms. In this tutorial we cover recent advances in explicitly modeling of spatial dependencies and semantic concepts in data mining.
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