AUTOMATSKA DETEKCIJA STAVKI MENIJA UNUTAR TEKSTOVA RECENZIJA RESTORANA

  • Igor Trpovski
Ključne reči: analiza teksta, obrada prirodnog jezika, prepoznavanje imenovanih entiteta

Apstrakt

Cilj ovog istraživanja jeste prezentova­nje jednog pristupa za detekciju stavki menija unutar tekstova recenzija restorana. Nekoliko modela mašinskog i dubokog učenja istrenirano je da detektuje pominjanja hrane unutar recenzija restorana. Nakon toga, nekoliko algoritama poklapanja stringova primenjeno je kako bi se pominjanja hrane uparila sa odgovarajućim stavkama menija. Podaci su prikupljeni sa sajta Donesi.com i ručno anotirani. Svi upotrebljeni modeli i algoritmi su evaluirani.

Reference

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Objavljeno
2019-12-21
Sekcija
Elektrotehničko i računarsko inženjerstvo