Skip to main content
Repository - Classic versión
Home
  • Collections
    • Institutional
    • Divulgation
    • Research
    • Teaching
    • Transfer
  • UNESCO Subjects
  • About Azahar
    • What is the repository?
    • Ontology
    • Mission and objectives
    • Content policy
  • Resources
  • Glossary

Búsqueda

A common concept-based representation space for…

Iframe
Full Title
A common concept-based representation space for recommendation: Matching user preferences and items.
Description

Content-based recommendation offers items which content is, in some degree, similar to the content of the items already consumed by the users or they relates. In this context, it arises the problem of creating an accurate content representation and the most adequate linking of the information related to the users into this representation. To cope with the latter problem, we propose a common latent space to represent users and items based on Formal Concept Analysis (FCA). The recommendation process will be then straightforward by looking for the items closer to the user representation in the common space. In order to create an accurate content representation, the FCA-based representation is based on the semantic information (coming from LOD resources, mainly DBpedia, and WordNet) related to the data. Our hypothesis is that the abstraction and the linking between the data provided by the semantic information will better represent the data than the unstructured text or the isolated user profile. In the state of the art similar ideas can be found, based on ontology representations. However, ontology creation is an expensive and time-consuming process; therefore, these approaches are often limited by the quality of the generated ontology (i.e., the amount of objects, classes and relationships included in the ontology). To address this problem, probabilistic methodologies, such as LDA, have been proposed to create a latent conceptual space based on the implicit relationships between the data. These techniques also present some problems: its complexity, the need of setting the desired number of concepts to be detected in the latent space, or the impossibility to link the latent concepts to concepts in the real world (they are mathematical formalizations of the latent data relationships). Our proposal intends to go a step further in the area of recommendation by creating a data-driven common latent space for the user and item models in order to reach the adaptability of the probabilistic methodologies, avoiding its drawbacks and offering a similar formalization level and structure than an ontology-based methodology

Location
https://canal.uned.es/video/5a6f6cfdb1111f26508b45c3

Authorship & License

License Rights
UNEDTV
Público

Academic Information

Room
Advisors: Dra A. García Serrano, Dr. J. Cigarrán

Attached Resources

Attached Resources
Movil
icono
Video clase publico Licencia Propietaria
reviewStatus
Los metadatos del recurso podrían cambiar ya que no han sido validados.

Resource Card

Model
Video Clase
Publication Repository
Canal UNED
Language Repo
Español
Update Date
Mon, 03/02/2026 - 12:00
Creation Date
Tue, 06/02/2015 - 12:00

Tags

Subject (UNESCO)
Ciencia de los ordenadores
Matemáticas
Inteligencia artificial
Informática
Tecnología de los ordenadores
Ciencias Tecnológicas

Accessibility

accessModeSufficient
visual-auditory
accessModes
visual
auditory
https://fcrepo.repositoriodigital.inteccauned.es/fcrepo/rest/e9/de/86/3f/e9de863f-f302-414f-91d8-d8a592c21f13
footer-logo

Repository of digital content driven and promoted by the Vicerrectorado for Educational Innovation of the UNED.

Legal

  • Legal notice
  • Privacy policy
  • Cookies policy

Contacto

  • Support
  • Suggestions mailbox

Repositorios

  • CANAL UNED
  • CADENA CAMPUS
  • GICCU

Ayuda

  • Mission and objectives
  • Reuse policy
  • Content preservation policy
  • Content policy
  • FAQ

© 2024 INTECCA - Digital content repository