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Rosca, Daniela

 Person

Found in 3 Collections and/or Records:

Preliminary investigations into the word categorization system of BERT, 2023

 Item — Call number MU Thesis Chi
Identifier: b7931714
Abstract Bidirectional Encoder Representations from Transformers (BERT), introduced by Google, is a powerful natural language processing model as it is able to understand the meaning of words in a sentence in context. WordNet, developed at Princeton University, is a lexical database that shows semantic relationships between words. This thesis looks to investigate BERT’s word categorization system by looking at groups of example sentences given from related WordNet synsets. Because BERT allows a...
Dates: 2023

Querying semantic data with natural language, 2015

 Item — Call number MU Thesis Kir
Identifier: b7636895
Abstract Searching through semantic data using SPARQL requires expert knowledge and thus remains out of reach for casual users. In this work, we explore the development of natural language interfaces for semantic data. This work looks at a number of approaches towards this goal as well as providing a new approach. Our system works like a natural language compiler and handles a limited set of natural language questions which, though narrow in scope, have complex semantics that other systems would...
Dates: 2015

Touristic places recommendation system, 2017

 Item — Call number MU Thesis Alm
Identifier: b7830971
Abstract Recommending touristic places for visitors is an important service of touristic websites. Most websites allow visitors to either numerically rate or leave a review about the site they visited to express their opinion. Those reviews help future visitors choose the place that is the most attractive to them, and at the same time allow the touristic place owner to improve and increase the visitor's satisfaction. Sometimes, the amount of reviews can be overwhelming, discouraging intended...
Dates: 2017