Search Results for author: Pranaydeep Singh

Found 12 papers, 2 papers with code

Combining Language Models and Linguistic Information to Label Entities in Memes

no code implementations CONSTRAINT (ACL) 2022 Pranaydeep Singh, Aaron Maladry, Els Lefever

This paper describes the system we developed for the shared task ‘Hero, Villain and Victim: Dissecting harmful memes for Semantic role labelling of entities’ organised in the framework of the Second Workshop on Combating Online Hostile Posts in Regional Languages during Emergency Situation (Constraint 2022).

SentEMO: A Multilingual Adaptive Platform for Aspect-based Sentiment and Emotion Analysis

no code implementations WASSA (ACL) 2022 Ellen De Geyndt, Orphee De Clercq, Cynthia Van Hee, Els Lefever, Pranaydeep Singh, Olivier Parent, Veronique Hoste

In this paper, we present the SentEMO platform, a tool that provides aspect-based sentiment analysis and emotion detection of unstructured text data such as reviews, emails and customer care conversations.

Aspect-Based Sentiment Analysis Aspect-Based Sentiment Analysis (ABSA) +1

When the Student Becomes the Master: Learning Better and Smaller Monolingual Models from mBERT

no code implementations COLING 2022 Pranaydeep Singh, Els Lefever

In this research, we present pilot experiments to distil monolingual models from a jointly trained model for 102 languages (mBERT).

Investigating the Quality of Static Anchor Embeddings from Transformers for Under-Resourced Languages

1 code implementation SIGUL (LREC) 2022 Pranaydeep Singh, Orphee De Clercq, Els Lefever

This paper reports on experiments for cross-lingual transfer using the anchor-based approach of Schuster et al. (2019) for English and a low-resourced language, namely Hindi.

Cross-Lingual Transfer

Identifying Cognates in English-Dutch and French-Dutch by means of Orthographic Information and Cross-lingual Word Embeddings

no code implementations LREC 2020 Els Lefever, Sofie Labat, Pranaydeep Singh

This paper investigates the validity of combining more traditional orthographic information with cross-lingual word embeddings to identify cognate pairs in English-Dutch and French-Dutch.

Cross-Lingual Word Embeddings Word Embeddings

Multidomain Document Layout Understanding using Few Shot Object Detection

no code implementations22 Aug 2018 Pranaydeep Singh, Srikrishna Varadarajan, Ankit Narayan Singh, Muktabh Mayank Srivastava

We try to address the problem of document layout understanding using a simple algorithm which generalizes across multiple domains while training on just few examples per domain.

Few-Shot Object Detection Object +2

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