LINGUIST List 32.1505

Fri Apr 30 2021

Support: Computational Linguistics: PhD, Labex Empirical Foundations of Linguistics

Editor for this issue: Becca Morris <beccalinguistlist.org>



Date: 29-Apr-2021
From: Christel PRETERRE <christel.preterresorbonne-nouvelle.fr>
Subject: Computational Linguistics: PhD, Labex Empirical Foundations of Linguistics, France
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Institution/Organization: Labex Empirical Foundations of Linguistics
Department: https://www.labex-efl.fr/

Level: PhD

Duties: Research

Specialty Areas: Computational Linguistics


Description:

PhD position in computational linguistics: Distant supervision for question answering on temporal relations

The LabEx-EFL (Laboratory of Excellence Empirical Foundations in Linguistics; https://en.labex-efl.fr/) is hiring a PhD candidate in computational linguistics for a 3-year contract. The position is full-time with a net salary of about 1700 euros per month and starts in the fall of 2021. The subject is part of the Computational Semantic Analysis research strand of the Labex EFL (https://en.labex-efl.fr/post/phd-position-in-computational-linguistics) and will be supervised by Benoit Crabbé and Timothée Bernard.

Thesis topic:
In the last few years, deep learning methods have allowed a clear progress in semantic inference tasks, especially by minimizing the amount of annotated data. In this thesis, we propose to test the limits of these methods on a question answering task on temporal relations (before, after, during...) between events in texts. For instance, questions could be of the form does event X happens before event Y in the text?

In general, inference on textual structure is a problem for which annotated data is notoriously costly and difficult to acquire and the case of temporal structure is not an exception. The thesis will rely on recent methods that aim to minimize the cost of manual annotation on temporal relations and rather use the question answering task as its main objective. We will study preferably interpretable models, graph-based or timeline-based, that will build their own representation of the text in order to answer the questions.

Moreover we want to test to which extent an end-to-end a question answering model is able to acquire and take advantage of his own temporal representation for answering temporal questions, specifically in cases where the answer is not literally present in the text and requires inference.

We will study to which extent accurate question answering models need to explicitly annotate temporal relations expressed in the text or to which extent we can leave some or all of these relations underspecified and rather use the downstream inference task in order to acquire the textual timeline.

Expected Profile:
The candidate should have a degree equivalent to a master's degree (before November 2021) with a specialization in artificial intelligence, natural language processing or computational linguistics. Candidates are expected to have substantial skills in deep learning or reinforcement learning and an interest in formal modeling.

Affiliation:
The PhD student will be attached to the Laboratoire de Linguistique Formelle (http://www.llf.cnrs.fr), funding will be available for missions, as well as access to computing servers. The student will be expected to attend doctoral seminars, and may eventually teach courses in NLP/computer linguistics at the University of Paris.

Application procedure:
- The application should be sent to benoit.crabbeu-paris.fr and to timothee.bernardu-paris.fr .
- Application deadline: June 25, 2021 (midnight).

The application file must be composed of:
- A letter of motivation;
- A CV including the courses taken (master grades), diplomas obtained, possible internships;
- The name and contact details of two references.

Shortlisted candidates will send their master's thesis and/or other written work showing their qualification for the project in question.

The auditions (by videoconference) of the shortlisted candidates will take place in early July 2021.

Contact:
For questions regarding the application process, please contact Benoît Crabbé at the contact information below.


Contact Information:
Benoît Crabbé
benoit.crabbeu-paris.fr

Page Updated: 30-Apr-2021