基于配置文件相似性的个性化联合学习方法,用于基于可穿戴传感器的人体活动识别

IF 8.2 2区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Information & Management Pub Date : 2024-01-26 DOI:10.1016/j.im.2024.103922
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引用次数: 0

摘要

基于可穿戴传感器的人类活动识别(HAR)利用人工智能模型分析加速度计数据等实时数据来识别人类的日常活动。虽然这对老年人和术后病人的生活大有裨益,但传统上需要将收集到的数据上传到中央服务器来训练人工智能模型,从而引发了严重的安全和隐私问题。虽然联邦学习(FL)是解决这些问题的一种可行方法,但它面临着数据异构问题,即不同个体的活动模式各不相同,导致本地数据的分布不完全相同。有人提出了一些 FL 模型,利用个体间的相似性为每个个体创建个性化的全局模型,从而解决数据异构问题。然而,这些模型仍然受到计算量增加或相似性计算关系不可靠的限制。本研究针对基于可穿戴传感器的 HAR 提出了一种新颖的基于个人资料相似性的个性化联合学习,个人之间的相似性可以反映在个人资料中,如年龄、性别、身高和体重。在为个人建立个性化模型时,我们计算所有客户本地模型的加权和,其中权重由从个人资料中计算出的相似性值决定。这样,与相似度较低的个人相比,相似度较高的个人的本地模型对目标个人模型个性化的贡献更大。实验结果表明,在 RealWorld 和 SisFall 数据集上,所提出的模型优于基线 FL 和集中学习。我们还讨论了隐私和个性化之间的权衡以及 FL 相对于集中学习的优势。
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A profile similarity-based personalized federated learning method for wearable sensor-based human activity recognition

Wearable sensor-based human activity recognition (HAR) utilizes artificial intelligence models to analyze real-time data like accelerometer data to recognize daily human activities. While it greatly benefits the life of senior citizens and postoperative patients, it conventionally requires the collected data to be uploaded to a central server to train AI models, raising critical security and privacy concerns. Though Federated learning (FL) emerges as a viable way to cope with these problems, it is confronted by the data heterogeneity problem, where the varying activity patterns of different individuals result in non-identically distributed local data. Some FL models have been proposed to solve the data heterogeneity problem by leveraging the similarity between individuals to create a personalized global model for each individual. However, they are still limited by increased computation or unreliable relationships in the similarity computation. This study proposes a novel profile similarity-based personalized federated learning for wearable sensor-based HAR where the similarity between individuals can be reflected in their profile, such as age, gender, height, and weight. When personalizing a model for an individual, we compute the weighted sum of all clients’ local models, where the weight is determined by the similarity value computed from the profile. In this way, the local models from individuals who have higher similarity values will contribute more towards personalizing a model for a targeted individual than those who are less similar. Experiment results demonstrate that the proposed model outperformed the baseline FL and centralized learning on both RealWorld and SisFall datasets. We also discuss the tradeoff between privacy and personalization and FL's advantages over centralized learning.

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来源期刊
Information & Management
Information & Management 工程技术-计算机:信息系统
CiteScore
17.90
自引率
6.10%
发文量
123
审稿时长
1 months
期刊介绍: Information & Management is a publication that caters to researchers in the field of information systems as well as managers, professionals, administrators, and senior executives involved in designing, implementing, and managing Information Systems Applications.
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