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From Distributional Semantics to Conceptual Spaces: A Novel Computational Method for Concept Creation Cover

From Distributional Semantics to Conceptual Spaces: A Novel Computational Method for Concept Creation

Open Access
|Dec 2015

Abstract

We investigate the relationship between lexical spaces and contextually-defined conceptual spaces, offering applications to creative concept discovery. We define a computational method for discovering members of concepts based on semantic spaces: starting with a standard distributional model derived from corpus co-occurrence statistics, we dynamically select characteristic dimensions associated with seed terms, and thus a subspace of terms defining the related concept. This approach performs as well as, and in some cases better than, leading distributional semantic models on a WordNet-based concept discovery task, while also providing a model of concepts as convex regions within a space with interpretable dimensions. In particular, it performs well on more specific, contextualized concepts; to investigate this we therefore move beyond WordNet to a set of human empirical studies, in which we compare output against human responses on a membership task for novel concepts. Finally, a separate panel of judges rate both model output and human responses, showing similar ratings in many cases, and some commonalities and divergences which reveal interesting issues for computational concept discovery.

Language: English
Page range: 55 - 86
Submitted on: May 24, 2015
Accepted on: Nov 19, 2015
Published on: Dec 30, 2015
Published by: Artificial General Intelligence Society
In partnership with: Paradigm Publishing Services
Publication frequency: 2 times per year

© 2015 Stephen McGregor, Kat Agres, Matthew Purver, Geraint A. Wiggins, published by Artificial General Intelligence Society
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 3.0 License.