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Mohammad Akbari is Senior Research Associate in Department of Computer Science, University College London.
He loves solving challenging real-world problems using big data and machine learning. His research interests span mainly in AI and intelligent system including reinforecement learning, deep learning, data mining and machine learning using large-scale datasets, with an emphasis on their applications in health informatics, social informatics, information retrieval, recommendation system and samrt cities. His research has been published in several major academic venues, including SIGIR, WSDM, ICMR, etc.
He is working with Professor Jun Wang on web search and reinforecement learning. He is also closely collaborating with NYU Center for Data Sciences and Tandon Computer Science and Engineering where he is a research scientist in Professor Rumi Chunara's Lab working on wellness profiling of users and communities on social networks.
He loves solving challenging real-world problems using big data and machine learning. His research interests span mainly in AI and intelligent system including reinforecement learning, deep learning, data mining and machine learning using large-scale datasets, with an emphasis on their applications in health informatics, social informatics, information retrieval, recommendation system and samrt cities. His research has been published in several major academic venues, including SIGIR, WSDM, ICMR, etc.
He is working with Professor Jun Wang on web search and reinforecement learning. He is also closely collaborating with NYU Center for Data Sciences and Tandon Computer Science and Engineering where he is a research scientist in Professor Rumi Chunara's Lab working on wellness profiling of users and communities on social networks.
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Expert Syst. Appl. (2023): 120366-120366
arXiv (Cornell University) (2021)
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