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Beta hebbian learning: definition and analysis of a new family of learning rules for exploratory projection pursuit

  • Autores: Héctor Quintián Pardo
  • Directores de la Tesis: Emilio Santiago Corchado Rodríguez (dir. tes.)
  • Lectura: En la Universidad de Salamanca ( España ) en 2017
  • Idioma: inglés
  • Tribunal Calificador de la Tesis: Pablo García Bringas (presid.), Leticia Elena Curiel Herrera (secret.), Ajith Abraham (voc.)
  • Programa de doctorado: Programa de Doctorado en Ingeniería Informática por la Universidad de Salamanca
  • Materias:
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  • Resumen
    • This thesis comprises an investigation into the derivation of learning rules in artificial neural networks from probabilistic criteria.

      •Beta Hebbian Learning (BHL).

      First of all, it is derived a new family of learning rules which are based on maximising the likelihood of the residual from a negative feedback network when such residual is deemed to come from the Beta Distribution, obtaining an algorithm called Beta Hebbian Learning, which outperforms current neural algorithms in Exploratory Projection Pursuit.

      • Beta-Scale Invariant Map (Beta-SIM). Secondly, Beta Hebbian Learning is applied to a well-known Topology Preserving Map algorithm called Scale Invariant Map (SIM) to design a new of its version called Beta-Scale Invariant Map (Beta-SIM). It is developed to facilitate the clustering and visualization of the internal structure of high dimensional complex datasets effectively and efficiently, specially those characterized by having internal radial distribution. The Beta-SIM behaviour is thoroughly analysed comparing its results, in terms performance quality measures with other well-known topology preserving models.

      • Weighted Voting Superposition Beta-Scale Invariant Map (WeVoS-Beta-SIM).

      Finally, the use of ensembles such as the Weighted Voting Superposition (WeVoS) is tested over the previous novel Beta-SIM algorithm, in order to improve its stability and to generate accurate topology maps when using complex datasets. Therefore, the WeVoS-Beta-Scale Invariant Map (WeVoS-Beta-SIM), is presented, analysed and compared with other well-known topology preserving models.

      All algorithms have been successfully tested using different artificial datasets to corroborate their properties and also with high-complex real datasets.


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