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Välkommen till Mehdi Ghanimifards disputation

Välkommen till Mehdi Ghanimifards disputation i datalingvistik onsdag den 27 maj då han försvarar sin avhandling Why the pond is not outside the frog? Grounding in contextual representations by neural language models.

Välkommen till Mehdi Ghanimifards disputation i datalingvistik onsdag den 27 maj då han försvarar sin avhandling Why the pond is not outside the frog? Grounding in contextual representations by neural language models. Disputationen äger rum på engelska, online via Zoom. Det finns även möjlighet för åhörare att komma till Humanisten och i hörsal J335 följa disputationen på skärm.Disputationen äger rum på engelska, online via Zoom. Det finns även möjlighet för åhörare att komma till Humanisten och i hörsal J335 följa disputationen på skärm.

Doctoral candidate: Mehdi Ghanimifard, University of Gothenburg

Supervisor: Simon Dobnik, University of Gothenburg
Assistant supervisor: Staffan Larsson, University of Gothenburg

Opponent: Parisa Kordjamshidi, Michigan State University

Committee:
Raffaella Bernardi, University of Trento
David Schlangen, University of Potsdam
Devdatt Dubashi, Chalmers University of Technology
Joakim Nivre, Uppsala University (replacement)

Chair: Lena Eriksson, University of Gothenburg

Zoom webinar: Följ disputationen här
Date: 2020-05-27
Time: 15:15
The proceedings can also be followed via link in room J335, at Humanisten.

Title: Why the pond is not outside the frog? Grounding in contextual representations by neural language models

Full text: http://hdl.handle.net/2077/64095

Abstract:

In this thesis, to build a multi-modal system for language generation and understanding, we study grounded neural language models. Literature in psychology informs us that spatial cognition involves different aspects of knowledge that include visual perception and human interaction with the world. This makes spatial descriptions a compelling case for the study of how spatial language is grounded in different kinds of knowledge.

In seven studies, we investigate what and how neural language models (NLM) encode spatial knowledge. In the first study, we explore the traces of functional-geometric distinction of spatial relations in uni-modal NLM. This distinction is essential since the knowledge about object-specific relations is not grounded in the visible situation. Following that, in the second study, we inspect representations of spatial relations in a uni-modal NLM to understand how they capture the concept of space from the corpus. The predictability of grounding spatial relations from contextual embeddings is vital for the evaluation of grounding in multi-modal language models. On the argument for the geometric meaning, in the third study, we inspect the spectrum of bounding box annotations on image descriptions. We show that less geometrically biased spatial relations are more likely to deviate from the norm of their bounding box features. In the fourth study, we try to evaluate the degree of grounding in language and vision with adaptive attention. In the fifth study, we use adaptive attention to understand if and how additional bounding box geometric information could improve the generation of relational image descriptions. In the sixth study, we ask if the language model has an ability of systematic generalisation to learn the grounding on the unseen composition of representations. Then in the seventh study, we show the potentials in using uni-modal knowledge for detecting metaphors in adjective-nouns compositions.

The primary argument of the thesis is built on the fact that spatial expressions in natural language are not always grounded in direct interpretations of the locations. We argue that distributional knowledge from corpora of language use and their association with visual features constitute grounding with neural language models. Therefore, in a joint model of vision and language, the neural language model provides spatial knowledge that is contextualising the visual representations about locations.

Foto: Monica Havström