Matrix Factorization Techniques for Data Mining
نویسنده
چکیده
General Interests Networking, information technology, information systems, computational theory, approximation algorithms, optimization, numerical methods, linear algebra, calculus, data mining, machine learning, artificial intelligence, theory of fractals and chaos, advances in science and technology in general Age 21 (born on 23rd April 1989) Languages Actively speak and write Slovenian, English, German
منابع مشابه
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