Active Machine Learning Theory and Several Key Problems applications View Homepage


Ontology type: schema:MonetaryGrant     


Grant Info

YEARS

2010-2012

FUNDING AMOUNT

320000 CNY

ABSTRACT

This project proposes an active machine learning this new concept. Active learning refers to machine intelligence machine learning methods have cognitive abilities, collaboration or information mining capabilities. With this concept, a radio, cooperative communications and data mining, machine learning problems with the above characteristics of cognition, can be grouped into active among the areas of machine learning, can be studied in the same system. The project will cluster around each mining, cognitive radio and cooperative communication key research questions: (1) mining in the cluster, the design more effective evolutionary algorithm applied to the development of more efficient processing of massive information evolutionary clustering mining algorithm; (2) in cognitive radio, the development of new blind spectrum detection algorithm and analyze its performance, analyze cooperation perceived performance losses when there is an error in the control channel, and to make its performance improvement methods ; (3) the cooperative communication and cognitive radio combination, a new model, the model under study how to allocate power to make the cognitive network throughput is maximized. The study will address the important issues on the one hand clustering mining and cognitive radio actually exist; on the other hand, we will also further explore and develop active machine learning basis. More... »

URL

http://npd.nsfc.gov.cn/projectDetail.action?pid=60975041

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