使用自组织映射的上下文感知设备自配置

OC '11 Pub Date : 2011-06-01 DOI:10.1145/1998642.1998647
L. Batyuk, Christian Scheel, S. Çamtepe, S. Albayrak
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引用次数: 8

摘要

现代移动计算设备功能齐全,但也带来了根据当前环境条件不断进行设置调整的负担。而直到今天,这项任务必须由人类用户完成,各种传感器通常部署在这样的手机提供足够的数据为自主配置的学习,自适应系统。但是,这些数据在某些时间点并不完全可用,或者可能包含错误的值。在没有语义层的情况下处理可能不完整的传感器数据来检测上下文变化,这是我们用我们的方法解决的一个科学挑战。提出了一种新的机器学习技术-缺失值som -通过基于上下文信息预测设置调整来解决这一问题。我们的方法以自组织映射为中心,对其进行扩展以提供处理缺失值的方法。我们展示了我们的方法在移动上下文快照以及经典机器学习数据集上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context-aware device self-configuration using self-organizing maps
Modern mobile computing devices are versatile, but bring the burden of constant settings adjustment according to the current conditions of the environment. While until today, this task has to be accomplished by the human user, the variety of sensors usually deployed in such a handset provides enough data for autonomous self-configuration by a learning, adaptive system. However, this data is not fully available at certain points in time, or can contain false values. Handling potentially incomplete sensor data to detect context changes without a semantic layer represents a scientific challenge which we address with our approach. A novel machine learning technique is presented - the Missing-Values-SOM - which solves this problem by predicting setting adjustments based on context information. Our method is centered around a self-organizing map, extending it to provide a means of handling missing values. We demonstrate the performance of our approach on mobile context snapshots, as well as on classical machine learning datasets.
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