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+ | ====== Description of the teaching units ====== | ||
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+ | ===== Statistics for the engineer ===== | ||
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+ | ([[http:// | ||
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+ | This unit presents to students the concepts and basic methods in statistics, as used by engineers. | ||
+ | Notions of estimation, of confidence intervals, of hypotheses tests, of linear regression, of ANOVA (analysis of variance) are presented among others. | ||
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+ | This unit course is destinated to students at the beginning of their degree course. | ||
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+ | ===== Algorithmics and data structures ===== | ||
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+ | ([[http:// | ||
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+ | After some brief reminders on C language programming, | ||
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+ | This unit course is destinated to students at the beginning of their degree course. | ||
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+ | ===== Linear and non-linear optimization ===== | ||
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+ | ([[http:// | ||
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+ | The unit introduces the basic techniques in linear programming (simplex method, duality), integer programming, | ||
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+ | This unit course is destinated to students at the end of their degree course. | ||
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+ | ===== Data analysis, Data Mining ; decision, diagnosis, machine learning ===== | ||
+ | (Links towards the web pages of [[http:// | ||
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+ | Both units aim at presenting the modern techniques for analysing large data sets and the basic notions and tools of data mining to the students. Both supervised and unsupervised learning are studied. | ||
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+ | Notions of principal component analysis, factor discriminant analysis, multidimensional scaling, as well as unsupervised clustering (in particular using mixture models) are described. The theory of decision, the notions of optimal classification are also presented, as well as the algorithms for learning decision trees, neural networks, or support vector machines. | ||
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+ | These unit courses are destinated to students at the end of their degree course. | ||
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