用生活日志数据预测个人信息行为

Minkyung Kim, Dong-Wook Lee, Kangseok Kim, Jai-hoon Kim, W. Cho
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引用次数: 6

摘要

近年来,利用各种数字传感器对人体行为进行监测和识别的研究已在各个领域展开。我们称其为“生活日志”——所有关于个人日常生活的数字信息。该研究通常侧重于收集个人生活日志,管理大量的生活日志数据,并从中识别活动和行为模式。提取关键特征和描述模式的方法对于从庞大而复杂的生命日志数据中找到有意义的信息至关重要。这项研究是一个重大的挑战,因为个人的生活日志数据将有助于提供个人生活服务,如医疗保健。在本文中,我们提出了通过追溯过去的经验来预测个人未来行为的过程。行为预测过程由五个阶段组成。首先通过各种传感器采集身体活动,然后通过特征选择提取主要的身体活动。其次,将地点、时间、对象等行为上下文信息标注到每个活动中,以便更准确地识别行为状态;然后将所有具有上下文信息的体育活动序列划分为每个日常集。第三,通过对关键特征的分析,从中提取行为模式。之后,所有的日常序列作为语义活动的集合被传递,用来表示主要的行为状态。第四,从语义活动集合中,根据下一步行为预测使用的行为概率,生成序列树。最后,根据“时间”或“事件”的查询,可以在用户界面中显示预测最高的活动。在用户界面中,通过选择特定的时间点或特定的事件,提供对过去和当前行为的检索以及对预测行为的搜索功能。目前,我们正在构建一个系统来处理提出的行为预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting personal information behaviors with lifelog data
The research for monitoring and recognizing personal behaviors from various digital sensors has recently been doing in a variety of fields. We address this for “lifelog” - all of the digital information about personal daily life. The research typically focuses on collecting personal lifelog, managing huge amount of lifelog data, and recognizing activities and behavior patterns from them. The methods of extracting key features and characterizing patterns would be crucial for finding meaningful information from huge and complex lifelog data. The research is a significant challenge because individual's lifelog data would be useful to provide personal life services such as healthcare. In this paper, we propose the process for predicting personal future behavior by tracing back to the past experiences. The behavior prediction process is composed of five stages. Firstly, physical activities through various sensors are collected and then, major physical activities are extracted through feature selection. Secondly, behavioral context information such as location, time and object is annotated to each activity for recognizing the behavior states more exactly. Then all sequences of physical activities with contextual information are divided into each daily set. Thirdly, behavior patterns from them are extracted by analyzing key features. After that, all daily sequences are transferred as the set of semantic activities for presenting major behavior states. Fourthly, from the set of semantic activities, based on the behavior probability to be used for the behavior prediction in next step, a sequence tree is generated. Finally, the highest predicted activities can be shown in a user interface from the query based on `Time' or `Event'. In a user interface, the functions for retrieving past and current behaviors and searching the predicted behaviors will be provided by choosing specific point in time or the specific event. Currently we are building a system for processing the proposed behavior prediction.
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