基于传感器的智能手机用户离开时间预测方法

Ron Biton, Gilad Katz, A. Shabtai
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引用次数: 6

摘要

虽然智能手机用户的位置预测近年来取得了很大进展,但仍存在一个重大挑战。由于用户大部分时间都在几个固定的地点(家、公司)度过,现有的算法无法确定一个人可能从一个地方到另一个地方的确切时间。在这项工作中,我们提出了一种基于传感器的方法,旨在预测用户的离开时间。通过使用位置和加速度传感器,我们能够训练一个通用分类模型,该模型能够预测用户是留在原地还是移动到不同的位置,真阳性率为0.73,假阳性率为0.3。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensor-Based Approach for Predicting Departure Time of Smartphone Users
While location prediction of smartphone users has made great strides in recent years, a major challenge remains. As users spend the majority of their time is several fixed locations (home, work), existing algorithms are unable to identify the exact time in which a person is likely to depart from one place to another. In this work we present a sensor-based approach designed to predict the departure time of users. By using location and accelerometer sensors we were able to train a generic classification model that is able to predict whether the user will stay put or move to a different location with true positive rate of 0.73 and false positive rate of 0.3.
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