Title
Knowledge discovery from sensor data (SensorKDD)
Abstract
Extracting knowledge and emerging patterns from sensor data is a nontrivial task. The challenges for the knowledge discovery community are expected to be immense. On one hand, dynamic data streams or events require real-time analysis methodologies and systems, while on the other hand centralized processing through high end computing is also required for generating offline predictive insights, which in turn can facilitate real-time analysis. In addition, emerging societal problems require knowledge discovery solutions that are designed to investigate anomalies, changes, extremes and nonlinear processes, and departures from the normal. Keeping in view the requirements of the emerging field of knowledge discovery from sensor data, we took initiative to develop a community of researchers with common interests and scientific goals, which culminated into the organization of Sensor-KDD series of workshops in conjunction with the prestigious ACM SIGKDD International Conference of Knowledge Discovery and Data Mining. In this report, we summarize the events of the Second ACM-SIGKDD International Workshop on Knowledge Discovery form Sensor Data (Sensor-KDD 2008).
Year
DOI
Venue
2009
10.1145/1540276.1540297
SIGKDD Explorations
Keywords
DocType
Volume
Sensor-KDD series,Data Mining,knowledge discovery,dynamic data stream,Second ACM-SIGKDD International Workshop,knowledge discovery community,Extracting knowledge,Knowledge Discovery form,knowledge discovery solution,sensor data
Journal
10
Issue
Citations 
PageRank 
2
4
0.73
References 
Authors
0
6
Name
Order
Citations
PageRank
Ranga Raju Vatsavai143049.30
Olufemi A. Omitaomu232117.51
João Gama33785271.37
Nitesh Chawla47257345.79
Mohamed Medhat Gaber5108171.17
Auroop R. Ganguly628629.53