Sensor Event Sequence Prediction for Proactive Smart Home Support Using Autoregressive Language Model

Naoto Takeda, R. Legaspi, Yasutaka Nishimura, K. Ikeda, A. Minamikawa, T. Plötz, S. Chernova
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Abstract

We posit that predicting sensor event sequence (SES) in a smart home can proactively support resident activities or recognize activities that have not been completed as intended and alert the resident. To realize this application, we propose a framework to support accurate SES prediction by leveraging online activity recognition. Our framework includes a novel method of applying a GPT2-based model, which is a sentence generation model, for SES prediction by taking advantage of the property that the relationship between ongoing activity and SES patterns is similar to the relationship between topic and word sequence patterns in NLP. We evaluated our method empirically using two real-world datasets where residents perform their usual daily activities. Our experimental results show the use of the GPT2-based model significantly improves the F1 value of SES prediction from 0.461 to 0.708 compared to the state-of-the-art method, and that using ongoing activity can further improve performance to 0.837. We found that the performance of the online activity recognition model required to achieve these SES predictions was about 80%, which could be achieved using simple feature engineering and modeling.
基于自回归语言模型的传感器事件序列预测
我们假设在智能家居中预测传感器事件序列(SES)可以主动支持居民活动或识别未按预期完成的活动并提醒居民。为了实现这一应用,我们提出了一个框架,通过利用在线活动识别来支持准确的SES预测。我们的框架包括一种应用基于gpt2模型的新方法,该模型是一种句子生成模型,通过利用正在进行的活动和SES模式之间的关系类似于NLP中主题和单词序列模式之间的关系的特性,用于SES预测。我们使用两个真实世界的数据集对我们的方法进行了实证评估,其中居民进行了日常活动。我们的实验结果表明,与最先进的方法相比,使用基于gpt2的模型可以显著提高SES预测的F1值,从0.461提高到0.708,使用正在进行的活动可以进一步提高性能至0.837。我们发现,实现这些SES预测所需的在线活动识别模型的性能约为80%,这可以通过简单的特征工程和建模来实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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