Original title: Rozšíření self-organizing maps o ranking awareness
Translated title: Extending self-organizing maps with ranking awareness
Authors: Park, Kyung Won ; Peška, Ladislav (advisor) ; Lokoč, Jakub (referee)
Document type: Bachelor's theses
Year: 2022
Language: eng
Abstract: Title: Extending Self-organizing Maps with Ranking Awareness Author: Kyung Won Park Department: Department of Software Engineering Supervisor: Mgr. Ladislav Peska, Ph.D., Department of Software Engineering Abstract: The self-organizing map (SOM) is a powerful clustering algorithm which takes high- dimensional data as the input and produces a low-dimensional representation of the data. The SOM provides useful insights into the given data by recognizing similar input vectors and clustering them. However, they take into account only the local similarity of the input data, as opposed to relevance (any external ranking). In this paper, we propose two ranking-aware variants of the SOM in an effort to tackle this issue and incorporate evaluation metrics to evaluate our results. Keywords: self-organizing map, relevence feedback, known-item search
Keywords: self-organizing maps|multicriterial optimization|ranking awareness; self-organizing map|relevence feedback|known-item search

Institution: Charles University Faculties (theses) (web)
Document availability information: Available in the Charles University Digital Repository.
Original record: http://hdl.handle.net/20.500.11956/176049

Permalink: http://www.nusl.cz/ntk/nusl-509767


The record appears in these collections:
Universities and colleges > Public universities > Charles University > Charles University Faculties (theses)
Academic theses (ETDs) > Bachelor's theses
 Record created 2022-10-09, last modified 2022-10-09


No fulltext
  • Export as DC, NUŠL, RIS
  • Share