【24h】

Extending the Growing Neural Gas Classifier for Context Recognition

机译:扩展用于上下文识别的神经气体分类器

获取原文
获取原文并翻译 | 示例

摘要

Context awareness is one of the building blocks of many applications in pervasive computing. Recognizing the current context of a user or device, that is, the situation in which some action happens, often requires dealing with data from different sensors, and thus different domains. The Growing Neural Gas algorithm is a classification algorithm especially designed for un-supervised learning of unknown input distributions; a variation, the Lifelong Growing Neural Gas (LLGNG), is well suited for arbitrary long periods of learning, as its internal parameters are self-adaptive. These features are ideal for automatically classifying sensor data to recognize user or device context. However, as most classification algorithms, in its standard form it is only suitable for numerical input data. Many sensors which are available on current information appliances are nominal or ordinal in type, making their use difficult. Additionally, the automatically created clusters are usually too fine-grained to distinguish user-context on an application level. This paper presents general and heuristic extensions to the LLGNG classifier which allow its direct application for context recognition. On a real-world data set with two months of heterogeneous data from different sensors, the extended LLGNG classifier compares favorably to k-means and SOM classifiers.
机译:上下文感知是普适计算中许多应用程序的组成部分之一。识别用户或设备的当前上下文,即发生某些动作的情况,通常需要处理来自不同传感器的数据,从而需要处理来自不同域的数据。增长神经气体算法是一种分类算法,专门用于未知输入分布的无监督学习。一种变体,即终身生长的神经气体(LLGNG),由于其内部参数是自适应的,因此非常适合任意长时间的学习。这些功能非常适合自动分类传感器数据以识别用户或设备环境。但是,作为大多数分类算法,其标准形式仅适用于数字输入数据。当前信息设备上可用的许多传感器是标称或标称类型的,这使得它们的使用困难。此外,自动创建的群集通常过于细粒度,无法在应用程序级别上区分用户上下文。本文介绍了LLGNG分类器的一般性和启发式扩展,这些扩展允许其直接用于上下文识别。在具有来自不同传感器的两个月异构数据的真实世界数据集上,扩展的LLGNG分类器比k均值和SOM分类器优越。

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