كلية الهندسة - جامعة عين شمس, الرئيسية
Machine Learning for Multimedia
What Will Learn?
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Course Aims• Provide students with introductory background in field of machine learning and its different techniques such as Bayesian theory of decision, classification, clustering, Markov models and artificial neural networks. • Develop the ability of students to apply the basic machine learning techniques to real problems using suitable software packages.
Requirements
ECE465
Description
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English Description
Introduction to machine learning, taxonomy of machine learning, Bayesian theory of decision, Bayes classifier, loss functions, discriminant functions, discriminant functions for Gaussian likelihood, clustering (batch k-means, online k-means, self-organizing maps), Gaussian mixture models, expectation maximization algorithm, hidden Markov models (likelihood problem, decoding problem, learning problem), artificial neural networks, single layer and multilayer neural networks, neural network training. -
Arabic Description
Introduction to machine learning, taxonomy of machine learning, Bayesian theory of decision, Bayes classifier, loss functions, discriminant functions, discriminant functions for Gaussian likelihood, clustering (batch k-means, online k-means, self-organizing maps), Gaussian mixture models, expectation maximization algorithm, hidden Markov models (likelihood problem, decoding problem, learning problem), artificial neural networks, single layer and multilayer neural networks, neural network training.
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قسمهندسة الإلكترونيات والإتصالات
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الساعات المعتمدة3
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الدرجاتالإجمالي ( 100 ) = نصف العام (20) + tr.Major Assessment (25 = tr.Industry 0% , tr.Project 10% , tr.Self_learning 10% , tr.Seminar 10% ) + tr.Minor Assessment (5) + tr.Oral/Practical (10) + درجة الامتحان (40)
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الساعاتساعات المحاضرة: 2, ساعات التعليم: 2, ساعات المعمل: 1
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Required SWL125
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Equivalent ECTS5
- Camastra, Francesco, and Alessandro Vinciarelli. Machine learning for audio, image and video analysis: theory and applications. Springer, 2015.