Efficient User Guidance for Validating Participatory Sensing Data

Author:

Cong Phan Thanh1,Tam Nguyen Thanh2,Yin Hongzhi3,Zheng Bolong4,Stantic Bela1,Hung Nguyen Quoc Viet1

Affiliation:

1. Griffith University, QLD, Australia

2. Ecole Polytechnique Federale de Lausanne, Lausanne, Switzerland

3. The University of Queensland, Brisbane, Australia

4. Huazhong University of Science and Technology, Wuhan, China

Abstract

Participatory sensing has become a new data collection paradigm that leverages the wisdom of the crowd for big data applications without spending cost to buy dedicated sensors. It collects data from human sensors by using their own devices such as cell phone accelerometers, cameras, and GPS devices. This benefit comes with a drawback: human sensors are arbitrary and inherently uncertain due to the lack of quality guarantee. Moreover, participatory sensing data are time series that exhibit not only highly irregular dependencies on time but also high variance between sensors. To overcome these limitations, we formulate the problem of validating uncertain time series collected by participatory sensors. In this article, we approach the problem by an iterative validation process on top of a probabilistic time series model. First, we generate a series of probability distributions from raw data by tailoring a state-of-the-art dynamical model, namely <u>G</u>eneralised <u>A</u>uto <u>R</u>egressive <u>C</u>onditional <u>H</u>eteroskedasticity (GARCH), for our joint time series setting. Second, we design a feedback process that consists of an adaptive aggregation model to unify the joint probabilistic time series and an efficient user guidance model to validate aggregated data with minimal effort. Through extensive experimentation, we demonstrate the efficiency and effectiveness of our approach on both real data and synthetic data. Highlights from our experiences include the fast running time of a probabilistic model, the robustness of an aggregation model to outliers, and the significant effort saving of a guidance model.

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Theoretical Computer Science

Reference59 articles.

1. Efficient Evaluation of SUM Queries over Probabilistic Data

2. Tim Althoff Eric Horvitz Ryen W. White and Jamie Zeitzer. 2017. Harnessing the web for population-scale physiological sensing: A case study of sleep and performance. In WWW. 113--122. 10.1145/3038912.3052637 Tim Althoff Eric Horvitz Ryen W. White and Jamie Zeitzer. 2017. Harnessing the web for population-scale physiological sensing: A case study of sleep and performance. In WWW. 113--122. 10.1145/3038912.3052637

3. Real-Time Analysis of Physiological Data to Support Medical Applications

4. Minimizing Efforts in Reconciling Participatory Sensing Data

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