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        <description>CLLab works on machine learning, the study that allows computational systems to adaptively
improve their performance with experience accumulated from the data
observed---external examples, feedback of the environment, or other pieces of information.
The importance of machine learning is
rapidly and continuously growing with collaboration opportunities on a
broad spectrum of applications inside and outside of computer science.
In multimedia, machines can learn to construct
semantic structures of …</description>
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