dc.contributor.author |
Ajoodha, R
|
|
dc.contributor.author |
Rosman, Benjamin S
|
|
dc.date.accessioned |
2018-08-16T09:14:52Z |
|
dc.date.available |
2018-08-16T09:14:52Z |
|
dc.date.issued |
2018-02 |
|
dc.identifier.citation |
Ajoodha, R. and Rosman, B. 2018. Learning the influence structure between partially observed stochastic processes using IoT sensor data. SmartIoT: AI Enhanced IoT Data Processing for Intelligent Applications at AAAI-18, Workshop at the 32nd AAAI Conference on Artificial Intelligence (AAAI-18), 2-7 February 2018, Hilton New Orleans Riverside, New Orleans, Louisiana, USA |
en_US |
dc.identifier.uri |
https://aaai.org/ocs/index.php/WS/AAAIW18/paper/view/16840/15567
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|
dc.identifier.uri |
https://aaai.org/ocs/index.php/WS/AAAIW18/schedConf/presentations
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|
dc.identifier.uri |
http://hdl.handle.net/10204/10367
|
|
dc.description |
Paper presented at SmartIoT: AI Enhanced IoT Data Processing for Intelligent Applications at AAAI-18, Workshop at the 32nd AAAI Conference on Artificial Intelligence (AAAI-18), 2-7 February 2018, Hilton New Orleans Riverside, New Orleans, Louisiana, USA |
en_US |
dc.description.abstract |
The recent widespread of availability of sensors, as part of the IoT, presents the opportunity to learn the properties of compound distributions in practical applications. Understanding temporal distributions by observations collected from the IoT can advance many intelligent applications. In this paper we develop an algorithm to learn influence between stochastic processes using observations obtained from the IoT. The proposed method learns these processes using temporal models independently, and then attempts to recover the underlying distribution of influence between them. Experimental results are provided which demonstrate the effectiveness of our method. This approach is useful in applications that require an understanding of how partially observed high-level processes can influence each other given a set of observations at different times. |
en_US |
dc.language.iso |
en |
en_US |
dc.publisher |
AAAI |
en_US |
dc.relation.ispartofseries |
Worklist;20910 |
|
dc.subject |
Influence structure |
en_US |
dc.subject |
Stochastic processes |
en_US |
dc.subject |
IoT |
en_US |
dc.subject |
Bayesian networks |
en_US |
dc.title |
Learning the influence structure between partially observed stochastic processes using IoT sensor data |
en_US |
dc.type |
Conference Presentation |
en_US |
dc.identifier.apacitation |
Ajoodha, R., & Rosman, B. S. (2018). Learning the influence structure between partially observed stochastic processes using IoT sensor data. AAAI. http://hdl.handle.net/10204/10367 |
en_ZA |
dc.identifier.chicagocitation |
Ajoodha, R, and Benjamin S Rosman. "Learning the influence structure between partially observed stochastic processes using IoT sensor data." (2018): http://hdl.handle.net/10204/10367 |
en_ZA |
dc.identifier.vancouvercitation |
Ajoodha R, Rosman BS, Learning the influence structure between partially observed stochastic processes using IoT sensor data; AAAI; 2018. http://hdl.handle.net/10204/10367 . |
en_ZA |
dc.identifier.ris |
TY - Conference Presentation
AU - Ajoodha, R
AU - Rosman, Benjamin S
AB - The recent widespread of availability of sensors, as part of the IoT, presents the opportunity to learn the properties of compound distributions in practical applications. Understanding temporal distributions by observations collected from the IoT can advance many intelligent applications. In this paper we develop an algorithm to learn influence between stochastic processes using observations obtained from the IoT. The proposed method learns these processes using temporal models independently, and then attempts to recover the underlying distribution of influence between them. Experimental results are provided which demonstrate the effectiveness of our method. This approach is useful in applications that require an understanding of how partially observed high-level processes can influence each other given a set of observations at different times.
DA - 2018-02
DB - ResearchSpace
DP - CSIR
KW - Influence structure
KW - Stochastic processes
KW - IoT
KW - Bayesian networks
LK - https://researchspace.csir.co.za
PY - 2018
T1 - Learning the influence structure between partially observed stochastic processes using IoT sensor data
TI - Learning the influence structure between partially observed stochastic processes using IoT sensor data
UR - http://hdl.handle.net/10204/10367
ER -
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en_ZA |