4 research outputs found

    On-body device localization for health and medical monitoring applications

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    Abstract—We present a technique to discover the position of sensors on the human body. Automatic on-body device localization ensures correctness and accuracy of measurements in health and medical monitoring systems. In addition, it pro-vides opportunities to improve the performance and usability of ubiquitous devices. Our technique uses accelerometers to capture motion data to estimate the location of the device on the user’s body, using mixed supervised and unsupervised time series analysis methods. We have evaluated our technique with extensive experiments on 25 subjects. On average, our technique achieves 89 % accuracy in estimating the location of devices on the body. Keywords-On-body device localization, Unsupervised activity discovery, Motion analysis I

    Review spam detection via temporal pattern discovery

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    Online reviews play a crucial role in today’s electronic com-merce. It is desirable for a customer to read reviews of products or stores before making the decision of what or from where to buy. Due to the pervasive spam reviews, customers can be misled to buy low-quality products, while decent stores can be defamed by malicious reviews. We ob-serve that, in reality, a great portion (> 90 % in the data we study) of the reviewers write only one review (singleton re-view). These reviews are so enormous in number that they can almost determine a store’s rating and impression. How-ever, existing methods did not examine this larger part of the reviews. Are most of these singleton reviews truthful ones? If not, how to detect spam reviews in singleton reviews? We call this problem singleton review spam detection. To address this problem, we observe that the normal re-viewers ’ arrival pattern is stable and uncorrelated to their rating pattern temporally. In contrast, spam attacks are usually bursty and either positively or negatively correlated to the rating. Thus, we propose to detect such attacks via unusually correlated temporal patterns. We identify and construct multidimensional time series based on aggregate statistics, in order to depict and mine such correlations. In this way, the singleton review spam detection problem is mapped to a abnormally correlated pattern detection prob-lem. We propose a hierarchical algorithm to robustly detect the time windows where such attacks are likely to have hap-pened. The algorithm also pinpoints such windows in dif-ferent time resolutions to facilitate faster human inspection. Experimental results show that the proposed method is ef-fective in detecting singleton review attacks. We discover that singleton review is a significant source of spam reviews and largely affects the ratings of online stores

    Unsupervised Discovery of Abnormal Activity Occurrences in Multi-dimensional Time Series, with Applications in Wearable Systems

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