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Evaluating stages of development in second language French: A machine-learning approach

Author

Editor

  • Joakim Nivre
  • Heiki-Jaan Kalep
  • Kadri Muischnek
  • Mare Koit

Summary, in English

This paper describes a system to define and

evaluate development stages in second language

French. The identification of such

stages can be formulated as determining the

frequency of some lexical and grammatical

features in the learners’ production and how

they vary over time. The problems in this

procedure are threefold: identify the relevant

features, decide on cutoff points for the

stages, and evaluate the degree of success of

the model.

The system addresses these three problems.

It consists of a morphosyntactic analyzer

called Direkt Profil and a machine-learning

module connected to it. We first describe the

usefulness and rationale behind its development.

We then present the corpus we used

to develop the analyzer. Finally, we present

new and substantially improved results on

training machine-learning classifiers compared

to previous experiments (Granfeldt et

al., 2006). We also introduce a method to

select attributes in order to identify the most

relevant grammatical features.

Publishing year

2007

Language

English

Publication/Series

NODALIDA 2007 PROCEEDINGS

Document type

Conference paper

Publisher

University of Tartu

Topic

  • Computer Science
  • Languages and Literature

Conference name

NODALIDA 2007

Conference date

0001-01-02

Status

Published

Project

  • Direct Profile: A program for analysing developmental sequences and developmental stages in written learner French

Research group

  • Fransk språkvetenskap

ISBN/ISSN/Other

  • ISBN: 978-9985-4-0514-7