From human to automatic summary grading

  1. Zipitria Leaniz-Barrutia, Iraide
Dirigida por:
  1. Ana Arruarte Lasa Director/a
  2. Jon Ander Elorriaga Arandia Director/a

Universidad de defensa: Universidad del País Vasco - Euskal Herriko Unibertsitatea

Fecha de defensa: 16 de diciembre de 2011

Tribunal:
  1. María Isabel Fernández de Castro Presidente/a
  2. Basilio Sierra Araujo Secretario/a
  3. Peter Mark Hastings Vocal
  4. Dietrich Albert Vocal
  5. Philippe Lopistéguy Poutz Vocal
Departamento:
  1. Lenguajes y Sistemas Informáticos

Tipo: Tesis

Teseo: 319669 DIALNET lock_openTESEO editor

Resumen

One of the goals remaining in Artificial Intelligence in Education is to create applications to evaluate open-ended text in a human-like manner. This dissertation describes the design and develompent of a summary evaluation environment based on human performance. Based on previous research in psychology, critical summarization ability development contexts have been analysed to significantly reflect human summary grading decision making. An empirical study has been carried out to identify underlying processes in overall summary decision grading. As a result, overall grades are computed by applying a Bayesian network based model. The discourse grades involved in the global score are cohesion, coherence, use of language, comprehension and adequacy. Semantic information is comprehended by means of Latent Semantic Analysis, and syntactic information by means of Natural Language Processing tools. The resulting automatic discourse grades have proved to significantly reflect human decisions.