Linear Algebra Methods for Data Mining

582473
4
Algoritmit ja koneoppiminen
Syventävät opinnot
The course will cover linear algebra techniques useful in data exploration. Topics include matrix decompositions (SVD, QR) and related methods (principal component analysis, latent semantic indexing) and their application to data mining problems, e.g. information retrieval. Also eigenvalue problems related to ranking algorithms (Pagerank, HITS) are discussed. Both theoretical and implementational aspects are considered. Required background: basic linear algebra skills (e.g. course "Lineaarialgebra I").
Vuosi Lukukausi Päivämäärä Periodi Kieli Vastuuhenkilö
2005 kevät 25.01-03.03. Englanti

Luennot

Aika Huone Luennoija Päivämäärä
Ti 12-14 B222 Saara Hyvönen 25.01.2005-03.03.2005
To 10-12 B222 Saara Hyvönen 25.01.2005-03.03.2005