Density estimation III.

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Lecure 4 esy esmao III. Mlos Hauskrec mlos@cs..edu 539 Seo Square Oule Oule: esy esmao: Mamum lkelood ML Bayesa arameer esmaes MP Beroull dsrbuo. Bomal dsrbuo Mulomal dsrbuo Normal dsrbuo Eoeal famly

Eoeal famly Eoeal famly: all robably mass / desy fucos a ca be wre e oeal ormal form f [ ] a vecor of aural or caocal arameers a fuco referred o as a suffce sasc a fuco of s less mora a ormalzao cosa a aro fuco { } d Oer commo form: [ ] f Eoeal famly: eamles Beroull dsrbuo { } Eoeal famly f [ ] Parameers

Eoeal famly: eamles Beroull dsrbuo { } Eoeal famly f [ ] Parameers oe e e Eoeal famly: eamles Uvarae Gaussa dsrbuo µ [ µ ] µ µ Eoeal famly f Parameers

Eoeal famly: eamles Uvarae Gaussa dsrbuo Eoeal famly Parameers µ µ / / µ / 4 µ f ] [ µ µ Eoeal famly For d samles e lkelood of daa s Imora: e dmesoaly of e suffce sasc remas e same for dffere samle szes a s dffere umber of eamles P

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P Cojugae rors For ay member of e oeal famly ere ess a ror: Suc a for eamles e oseror s Noe a: Pror corresods o observaos w value. f g u g Noaramerc Meods Paramerc dsrbuo models are: resrced o secfc forms wc may o always be suable; Eamle: modellg a mulmodal dsrbuo w a sgle umodal model. Noaramerc aroaces: make few assumos abou e overall sae of e dsrbuo beg modelled.

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Noaramerc Meods: kerel meods Kerel esy Esmao: F V esmae K from e daa. Le R be a yercube cered o ad defe e kerel fuco Parze wdow k I follows a ad ece / / K 0 K N oerwse k N N k Noaramerc Meods: smoo kerels o avod dscoues because of sar boudares use a smoo kerel e.g. a Gaussa y kerel suc a acs as a smooer. wll work.

Noaramerc Meods: knn esmao Neares Negbour esy Esmao: f K esmae V from e daa. Cosder a yer-sere cered o ad le grow o a volume V* a cludes K of e gve N daa os. e K acs as a smooer Noaramerc vs Paramerc Meods Noaramerc models: More flebly o desy model s eeded Bu requre sorg e ere daase ad e comuao s erformed w all daa eamles. Paramerc models: Oce fed oly arameers eed o be sored ey are muc more effce erms of comuao Bu e model eeds o be cked advace

K-Neares-Negbours for Classfcao Gve a daa se w N k daa os from class C k ad we ave ad corresodgly Sce Bayes eorem gves K-Neares-Negbours for Classfcao K 3