智能环境中预测人类行为的计算方法

IF 1.8 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
R. Dunne, Oludamilare Matthews, Julio Vega, Simon Harper, Tim Morris
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引用次数: 1

摘要

这篇系统的文献综述介绍了人类行为预测研究的计算方法,从Pentland和Liu 1999年关于人类行为预测的开创性论文到目前为止的最新研究。系统审查的PRISMA框架被用作审查方法来组织这一信息汇总。这篇综述提供了该领域的高层次总结,并确定了新的研究的关键领域。结果表明,有常用的数据集用于训练预测模型:MavHome、MavLab、LIARA、CASAS、PlaceLab和REDD。对于不同复杂性的预测,准确度在43.9%到100%之间。行为数据建模的常用数据结构:向量、表、树、马尔可夫模型和图。算法分为三个不同的类别:机器学习(NN, RL, LSTM),概率图形模型(即贝叶斯和马尔可夫变体),统计和趋势分析(ARIMA, Prophet)。此外,我们还记录了其他非常有用的算法,这些算法不属于这三个主要类别,包括Jaro-Winkler和Levenshtein距离。确定的进一步研究机会包括使用音频作为行为预测方法的数据源,以及将时间序列预测机器学习算法(RNN, LSTM)应用于智能家居问题空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational methods for predicting human behaviour in smart environments
This systematic literature review presents the computational methods of human behaviour prediction research from Pentland and Liu’s seminal 1999 paper on human behaviour prediction to the latest research to date. The PRISMA framework for systematic reviews was used as the review methodology to structure this information aggregation. This review provides a high-level summary of the field with key areas identified for new research. The results show that there are frequently used datasets for training predictive models: MavHome, MavLab, LIARA, CASAS, PlaceLab, and REDD. Accuracies in the range of 43.9% to 100% for predictions of varying complexity. Common data structures for modelling behavioural data: Vectors, tables, trees, Markov models, and graphs. Algorithms that fall into three distinct categories: Machine Learning (NN, RL, LSTM), Probabilistic Graphical Models (namely Bayesian and Markov variants), and Statistical and Trend Analysis (ARIMA, Prophet). Additionally, we document other notably useful algorithms that fall outside of these three main categories including Jaro-Winkler and Levenshtein distances. Opportunities identified for further research include the use of audio as the data source for behaviour prediction methods, and applying times-series prediction machine learning algorithms (RNN, LSTM) to the smart home problem space.
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来源期刊
Journal of Ambient Intelligence and Smart Environments
Journal of Ambient Intelligence and Smart Environments COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, INFORMATION SYSTEMS
CiteScore
4.30
自引率
17.60%
发文量
23
审稿时长
>12 weeks
期刊介绍: The Journal of Ambient Intelligence and Smart Environments (JAISE) serves as a forum to discuss the latest developments on Ambient Intelligence (AmI) and Smart Environments (SmE). Given the multi-disciplinary nature of the areas involved, the journal aims to promote participation from several different communities covering topics ranging from enabling technologies such as multi-modal sensing and vision processing, to algorithmic aspects in interpretive and reasoning domains, to application-oriented efforts in human-centered services, as well as contributions from the fields of robotics, networking, HCI, mobile, collaborative and pervasive computing. This diversity stems from the fact that smart environments can be defined with a variety of different characteristics based on the applications they serve, their interaction models with humans, the practical system design aspects, as well as the multi-faceted conceptual and algorithmic considerations that would enable them to operate seamlessly and unobtrusively. The Journal of Ambient Intelligence and Smart Environments will focus on both the technical and application aspects of these.
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