TCP with Machine Learning - Advances and Opportunities
نویسندگان
چکیده
منابع مشابه
Machine Learning and Citizen Science: Opportunities and Challenges of Human-Computer Interaction
Background and Aim: In processing large data, scientists have to perform the tedious task of analyzing hefty bulk of data. Machine learning techniques are a potential solution to this problem. In citizen science, human and artificial intelligence may be unified to facilitate this effort. Considering the ambiguities in machine performance and management of user-generated data, this paper aims to...
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and generating land-cover maps of the Earth have in common? Both are real-world problems for which we have applied machine-learning techniques to assist human experts, and in each case doing so has motivated the development of novel machine-learning methods. Our research group works closely with domain experts from other disciplines to solve practical problems. For many tasks, off-the-shelf met...
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Prediction involves estimating the unknown value of an attribute of a system under study given the values of other measured attributes. In prediction (machine) learning the prediction rule is derived from data consisting of previously solved cases. Most methods for predictive learning were originated many years ago at the dawn of the computer age. Recently two new techniques have emerged that h...
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With the ubiquitous presence of video data and its increasing importance in a wide range of real-world applications such as visual surveillance, human–machine interfaces and sport event interpretation, there is a growing demand for automated analysis and understanding of object motions from large amounts of video footage. Vision-based motion analysis aims to detect, track, and identify objects,...
متن کاملMachine Learning and Ecosystem Informatics: Challenges and Opportunities
Ecosystem Informatics is the study of computational methods for advancing the ecosystem sciences and environmental policy. This talk will discuss the ways in which machine learning—in combination with novel sensors—can help transform the ecosystem sciences from small-scale hypothesis-driven science to global-scale data-driven science. Example challenge problems include optimal sensor placement,...
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ژورنال
عنوان ژورنال: International Journal of Advanced Trends in Computer Science and Engineering
سال: 2019
ISSN: 2278-3091
DOI: 10.30534/ijatcse/2019/132862019