使用多时间窗口模型发现自量化模式

IF 12.3 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied Computing and Informatics Pub Date : 2022-03-14 DOI:10.1108/aci-12-2021-0331
Luke McCully, Hung Cao, M. Wachowicz, S. Champion, P. Williams
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引用次数: 0

摘要

目的最近出现了一个被称为量化自我的新研究领域,该领域被描述为通过使用可穿戴技术获取自我监测活动和身体健康相关问题的信息来获得自我知识。然而,人们对时间窗口模型对发现能够产生新的自我认知见解的自我量化模式的影响知之甚少。本文旨在利用多时间窗模型发现自量化模式。设计/方法论/方法本文提出了一种多时间窗口分析工作流,该工作流是基于结合了滑动和阻尼时间窗口模型的在线/离线方法开发的,用于支持流式k-means聚类算法。一个有15名参与者的干预实验用于收集Fitbit数据日志并实现所提出的分析工作流程。发现聚类结果揭示了时间窗模型对探索微观聚类的进化和宏观聚类的标记的影响,以准确解释有规律和不规则的个体物理行为。原创性/价值初步结果证明了它们对寻找有意义的模式的影响。
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Discovering self-quantified patterns using multi-time window models
PurposeA new research domain known as the Quantified Self has recently emerged and is described as gaining self-knowledge through using wearable technology to acquire information on self-monitoring activities and physical health related problems. However, very little is known about the impact of time window models on discovering self-quantified patterns that can yield new self-knowledge insights. This paper aims to discover the self-quantified patterns using multi-time window models.Design/methodology/approachThis paper proposes a multi-time window analytical workflow developed to support the streaming k-means clustering algorithm, based on an online/offline approach that combines both sliding and damped time window models. An intervention experiment with 15 participants is used to gather Fitbit data logs and implement the proposed analytical workflow.FindingsThe clustering results reveal the impact of a time window model has on exploring the evolution of micro-clusters and the labelling of macro-clusters to accurately explain regular and irregular individual physical behaviour.Originality/valueThe preliminary results demonstrate the impact they have on finding meaningful patterns.
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来源期刊
Applied Computing and Informatics
Applied Computing and Informatics Computer Science-Information Systems
CiteScore
12.20
自引率
0.00%
发文量
0
审稿时长
39 weeks
期刊介绍: Applied Computing and Informatics aims to be timely in disseminating leading-edge knowledge to researchers, practitioners and academics whose interest is in the latest developments in applied computing and information systems concepts, strategies, practices, tools and technologies. In particular, the journal encourages research studies that have significant contributions to make to the continuous development and improvement of IT practices in the Kingdom of Saudi Arabia and other countries. By doing so, the journal attempts to bridge the gap between the academic and industrial community, and therefore, welcomes theoretically grounded, methodologically sound research studies that address various IT-related problems and innovations of an applied nature. The journal will serve as a forum for practitioners, researchers, managers and IT policy makers to share their knowledge and experience in the design, development, implementation, management and evaluation of various IT applications. Contributions may deal with, but are not limited to: • Internet and E-Commerce Architecture, Infrastructure, Models, Deployment Strategies and Methodologies. • E-Business and E-Government Adoption. • Mobile Commerce and their Applications. • Applied Telecommunication Networks. • Software Engineering Approaches, Methodologies, Techniques, and Tools. • Applied Data Mining and Warehousing. • Information Strategic Planning and Recourse Management. • Applied Wireless Computing. • Enterprise Resource Planning Systems. • IT Education. • Societal, Cultural, and Ethical Issues of IT. • Policy, Legal and Global Issues of IT. • Enterprise Database Technology.
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