5 research outputs found
Language-Independent Ensemble Approaches to Metaphor Identification
True natural language understanding requires the ability to identify and understand metaphorical utterances,
which are ubiquitous in human communication of all
kinds. At present, however, even the problem of identifying metaphors in arbitrary text is very much an
unsolved problem, let alone analyzing their meaning.
Furthermore, no current methods can be transferred to
new languages without the development of extensive
language-specific knowledge bases and similar semantic resources. In this paper, we present a new languageindependent ensemble-based approach to identifying
linguistic metaphors in natural language text. The system’s architecture runs multiple corpus-based metaphor
identification algorithms in parallel and combines their
results. The architecture allows easy integration of new
metaphor identification schemes as they are developed.
This new approach achieves state-of-the-art results over
multiple languages and represents a significant improvement over existing methods for this problem