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How optimized environmental sensing helps address information overload on the web
Source
International Conference on Knowledge Discovery and Data Mining archive
Proceedings of the Third International Workshop on Knowledge Discovery from Sensor Data table of contents
Paris, France
SESSION: Invited talks table of contents
Pages 11-11  
Year of Publication: 2009
ISBN:978-1-60558-668-7
Author
Carlos Guestrin  Carnegie Mellon University
Sponsors
: Cooperating Objects Network of Excellence (CONET)
: Geographic Information Science and Technology (GIST) Group at Oak Ridge National Laboratory
: Computational Sciences and Engineering (CSE) Division at the Oak Ridge National Laboratory
Publisher
ACM  New York, NY, USA
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ABSTRACT

In this talk, we tackle a fundamental problem that arises when using sensors to monitor the ecological condition of rivers and lakes, the network of pipes that bring water to our taps, or the activities of an elderly individual when sitting on a chair: Where should we place the sensors in order to make effective and robust predictions?

Such sensing problems are typically NP-hard, and in the past, heuristics without theoretical guarantees about the solution quality have often been used. In this talk, we present algorithms which efficiently find provably near-optimal solutions to large, complex sensing problems. Our algorithms are based on the key insight that many important sensing problems exhibit submodularity, an intuitive diminishing returns property: Adding a sensor helps more the fewer sensors we have placed so far. In addition to identifying most informative locations for placing sensors, our algorithms can handle settings, where sensor nodes need to be able to reliably communicate over lossy links, where mobile robots are used for collecting data or where solutions need to be robust against adversaries and sensor failures.

We present results applying our algorithms to several real-world sensing tasks, including environmental monitoring using robotic sensors, activity recognition using a built sensing chair, and a sensor placement competition. We conclude with drawing an interesting connection between sensor placement for water monitoring and addressing the challenges of information overload on the web. As examples of this connection, we address the problem of selecting blogs to read in order to learn about the biggest stories discussed on the web, and personalizing content to turn down the noise in the blogosphere.