no code implementations • LREC 2022 • Ayush Kumar, Dhyey Jani, Jay Shah, Devanshu Thakar, Varun Jain, Mayank Singh
We plan to make the dataset publicly available.
no code implementations • 12 Mar 2025 • Mayank Singh, Abhijeet Kumar, Sasidhar Donaparthi, Gayatri Karambelkar
Data catalogs serve as repositories for organizing and accessing diverse collection of data assets, but their effectiveness hinges on the ease with which business users can look-up relevant content.
1 code implementation • 24 Feb 2025 • Himanshu Beniwal, Sailesh Panda, Mayank Singh
We explore Cross-lingual Backdoor ATtacks (X-BAT) in multilingual Large Language Models (mLLMs), revealing how backdoors inserted in one language can automatically transfer to others through shared embedding spaces.
no code implementations • 10 Jan 2025 • Mayank Singh, Noor Hakam, Trisha M. Kesar, Nitin Sharma
Functional Electrical Stimulation (FES) can be an effective tool to augment paretic muscle function and restore normal ankle function.
1 code implementation • 6 Aug 2024 • Rajvee Sheth, Shubh Nisar, Heenaben Prajapati, Himanshu Beniwal, Mayank Singh
As the NLP community increasingly addresses challenges associated with multilingualism, robust annotation tools are essential to handle multilingual datasets efficiently.
no code implementations • 9 Jul 2024 • Mayank Singh, Nazia Nafis, Abhijeet Kumar, Mridul Mishra
The few-shot finetuning techniques outperform zero-shot models by large margins of more than absolute ~30% in precision, recall and F1 metrics on completely unseen ESG languages (test set).
1 code implementation • 30 Mar 2024 • Akash Ghosh, B Venkata Sahith, Niloy Ganguly, Pawan Goyal, Mayank Singh
Question-answering (QA) on hybrid scientific tabular and textual data deals with scientific information, and relies on complex numerical reasoning.
1 code implementation • 19 Feb 2024 • Himanshu Beniwal, Dishant Patel, Kowsik Nandagopan D, Hritik Ladia, Ankit Yadav, Mayank Singh
Large Language Models (LLMs) are increasingly ubiquitous, yet their ability to retain and reason about temporal information remains limited, hindering their application in real-world scenarios where understanding the sequential nature of events is crucial.
1 code implementation • 19 Jan 2024 • Himanshu Beniwal, Kowsik Nandagopan D, Mayank Singh
The training of large language models (LLMs) necessitates substantial data and computational resources, and updating outdated LLMs entails significant efforts and resources.
1 code implementation • 11 Jan 2024 • Shruti Singh, Shoaib Alam, Husain Malwat, Mayank Singh
We present four graph-based and two language model-based leaderboard generation task configurations.
no code implementations • 8 Jan 2024 • Ankit Yadav, Himanshu Beniwal, Mayank Singh
Driven by the surge in code generation using large language models (LLMs), numerous benchmarks have emerged to evaluate these LLMs capabilities.
no code implementations • 23 Oct 2023 • Pritam Kadasi, Mayank Singh
The NLP community has long advocated for the construction of multi-annotator datasets to better capture the nuances of language interpretation, subjectivity, and ambiguity.
no code implementations • 22 Sep 2023 • Shruti Singh, Hitesh Lodwal, Husain Malwat, Rakesh Thakur, Mayank Singh
To automate model card generation, we introduce a dataset of 500 question-answer pairs for 25 ML models that cover crucial aspects of the model, such as its training configurations, datasets, biases, architecture details, and training resources.
no code implementations • 19 Sep 2023 • Rima Hazra, Mayank Singh, Pawan Goyal, Bibhas Adhikari, Animesh Mukherjee
Interdisciplinarity has over the recent years have gained tremendous importance and has become one of the key ways of doing cutting edge research.
no code implementations • 31 Jul 2023 • Mayank Singh, Emily Ray, Marc Ferradou, Andrea Barraza-Urbina
Accuracy measures such as Recall, Precision, and Hit Rate have been a standard way of evaluating Recommendation Systems.
no code implementations • 27 Apr 2023 • Nikolaos Gkanatsios, Mayank Singh, Zhaoyuan Fang, Shubham Tulsiani, Katerina Fragkiadaki
We present Analogical Networks, a model that encodes domain knowledge explicitly, in a collection of structured labelled 3D scenes, in addition to implicitly, as model parameters, and segments 3D object scenes with analogical reasoning: instead of mapping a scene to part segments directly, our model first retrieves related scenes from memory and their corresponding part structures, and then predicts analogous part structures for the input scene, via an end-to-end learnable modulation mechanism.
no code implementations • 2 Apr 2023 • Dwip Dalal, Vivek Srivastava, Mayank Singh
Social media plays a significant role in cross-cultural communication.
no code implementations • 23 Feb 2023 • Rahul Gupta, Vivek Srivastava, Mayank Singh
As a use case, we leverage multilingual articles from two different data sources and build a first-of-its-kind multi-sentential code-mixed Hinglish dataset i. e., MUTANT.
1 code implementation • Winter Conference on Applications of Computer Vision 2023 • Shivasankaran V P, Muhammad Yusuf Hassan, Mayank Singh
In this paper, we introduce LINEEX that extracts data from scientific line charts.
7 code implementations • 9 Nov 2022 • BigScience Workshop, :, Teven Le Scao, Angela Fan, Christopher Akiki, Ellie Pavlick, Suzana Ilić, Daniel Hesslow, Roman Castagné, Alexandra Sasha Luccioni, François Yvon, Matthias Gallé, Jonathan Tow, Alexander M. Rush, Stella Biderman, Albert Webson, Pawan Sasanka Ammanamanchi, Thomas Wang, Benoît Sagot, Niklas Muennighoff, Albert Villanova del Moral, Olatunji Ruwase, Rachel Bawden, Stas Bekman, Angelina McMillan-Major, Iz Beltagy, Huu Nguyen, Lucile Saulnier, Samson Tan, Pedro Ortiz Suarez, Victor Sanh, Hugo Laurençon, Yacine Jernite, Julien Launay, Margaret Mitchell, Colin Raffel, Aaron Gokaslan, Adi Simhi, Aitor Soroa, Alham Fikri Aji, Amit Alfassy, Anna Rogers, Ariel Kreisberg Nitzav, Canwen Xu, Chenghao Mou, Chris Emezue, Christopher Klamm, Colin Leong, Daniel van Strien, David Ifeoluwa Adelani, Dragomir Radev, Eduardo González Ponferrada, Efrat Levkovizh, Ethan Kim, Eyal Bar Natan, Francesco De Toni, Gérard Dupont, Germán Kruszewski, Giada Pistilli, Hady Elsahar, Hamza Benyamina, Hieu Tran, Ian Yu, Idris Abdulmumin, Isaac Johnson, Itziar Gonzalez-Dios, Javier de la Rosa, Jenny Chim, Jesse Dodge, Jian Zhu, Jonathan Chang, Jörg Frohberg, Joseph Tobing, Joydeep Bhattacharjee, Khalid Almubarak, Kimbo Chen, Kyle Lo, Leandro von Werra, Leon Weber, Long Phan, Loubna Ben allal, Ludovic Tanguy, Manan Dey, Manuel Romero Muñoz, Maraim Masoud, María Grandury, Mario Šaško, Max Huang, Maximin Coavoux, Mayank Singh, Mike Tian-Jian Jiang, Minh Chien Vu, Mohammad A. Jauhar, Mustafa Ghaleb, Nishant Subramani, Nora Kassner, Nurulaqilla Khamis, Olivier Nguyen, Omar Espejel, Ona de Gibert, Paulo Villegas, Peter Henderson, Pierre Colombo, Priscilla Amuok, Quentin Lhoest, Rheza Harliman, Rishi Bommasani, Roberto Luis López, Rui Ribeiro, Salomey Osei, Sampo Pyysalo, Sebastian Nagel, Shamik Bose, Shamsuddeen Hassan Muhammad, Shanya Sharma, Shayne Longpre, Somaieh Nikpoor, Stanislav Silberberg, Suhas Pai, Sydney Zink, Tiago Timponi Torrent, Timo Schick, Tristan Thrush, Valentin Danchev, Vassilina Nikoulina, Veronika Laippala, Violette Lepercq, Vrinda Prabhu, Zaid Alyafeai, Zeerak Talat, Arun Raja, Benjamin Heinzerling, Chenglei Si, Davut Emre Taşar, Elizabeth Salesky, Sabrina J. Mielke, Wilson Y. Lee, Abheesht Sharma, Andrea Santilli, Antoine Chaffin, Arnaud Stiegler, Debajyoti Datta, Eliza Szczechla, Gunjan Chhablani, Han Wang, Harshit Pandey, Hendrik Strobelt, Jason Alan Fries, Jos Rozen, Leo Gao, Lintang Sutawika, M Saiful Bari, Maged S. Al-shaibani, Matteo Manica, Nihal Nayak, Ryan Teehan, Samuel Albanie, Sheng Shen, Srulik Ben-David, Stephen H. Bach, Taewoon Kim, Tali Bers, Thibault Fevry, Trishala Neeraj, Urmish Thakker, Vikas Raunak, Xiangru Tang, Zheng-Xin Yong, Zhiqing Sun, Shaked Brody, Yallow Uri, Hadar Tojarieh, Adam Roberts, Hyung Won Chung, Jaesung Tae, Jason Phang, Ofir Press, Conglong Li, Deepak Narayanan, Hatim Bourfoune, Jared Casper, Jeff Rasley, Max Ryabinin, Mayank Mishra, Minjia Zhang, Mohammad Shoeybi, Myriam Peyrounette, Nicolas Patry, Nouamane Tazi, Omar Sanseviero, Patrick von Platen, Pierre Cornette, Pierre François Lavallée, Rémi Lacroix, Samyam Rajbhandari, Sanchit Gandhi, Shaden Smith, Stéphane Requena, Suraj Patil, Tim Dettmers, Ahmed Baruwa, Amanpreet Singh, Anastasia Cheveleva, Anne-Laure Ligozat, Arjun Subramonian, Aurélie Névéol, Charles Lovering, Dan Garrette, Deepak Tunuguntla, Ehud Reiter, Ekaterina Taktasheva, Ekaterina Voloshina, Eli Bogdanov, Genta Indra Winata, Hailey Schoelkopf, Jan-Christoph Kalo, Jekaterina Novikova, Jessica Zosa Forde, Jordan Clive, Jungo Kasai, Ken Kawamura, Liam Hazan, Marine Carpuat, Miruna Clinciu, Najoung Kim, Newton Cheng, Oleg Serikov, Omer Antverg, Oskar van der Wal, Rui Zhang, Ruochen Zhang, Sebastian Gehrmann, Shachar Mirkin, Shani Pais, Tatiana Shavrina, Thomas Scialom, Tian Yun, Tomasz Limisiewicz, Verena Rieser, Vitaly Protasov, Vladislav Mikhailov, Yada Pruksachatkun, Yonatan Belinkov, Zachary Bamberger, Zdeněk Kasner, Alice Rueda, Amanda Pestana, Amir Feizpour, Ammar Khan, Amy Faranak, Ana Santos, Anthony Hevia, Antigona Unldreaj, Arash Aghagol, Arezoo Abdollahi, Aycha Tammour, Azadeh HajiHosseini, Bahareh Behroozi, Benjamin Ajibade, Bharat Saxena, Carlos Muñoz Ferrandis, Daniel McDuff, Danish Contractor, David Lansky, Davis David, Douwe Kiela, Duong A. Nguyen, Edward Tan, Emi Baylor, Ezinwanne Ozoani, Fatima Mirza, Frankline Ononiwu, Habib Rezanejad, Hessie Jones, Indrani Bhattacharya, Irene Solaiman, Irina Sedenko, Isar Nejadgholi, Jesse Passmore, Josh Seltzer, Julio Bonis Sanz, Livia Dutra, Mairon Samagaio, Maraim Elbadri, Margot Mieskes, Marissa Gerchick, Martha Akinlolu, Michael McKenna, Mike Qiu, Muhammed Ghauri, Mykola Burynok, Nafis Abrar, Nazneen Rajani, Nour Elkott, Nour Fahmy, Olanrewaju Samuel, Ran An, Rasmus Kromann, Ryan Hao, Samira Alizadeh, Sarmad Shubber, Silas Wang, Sourav Roy, Sylvain Viguier, Thanh Le, Tobi Oyebade, Trieu Le, Yoyo Yang, Zach Nguyen, Abhinav Ramesh Kashyap, Alfredo Palasciano, Alison Callahan, Anima Shukla, Antonio Miranda-Escalada, Ayush Singh, Benjamin Beilharz, Bo wang, Caio Brito, Chenxi Zhou, Chirag Jain, Chuxin Xu, Clémentine Fourrier, Daniel León Periñán, Daniel Molano, Dian Yu, Enrique Manjavacas, Fabio Barth, Florian Fuhrimann, Gabriel Altay, Giyaseddin Bayrak, Gully Burns, Helena U. Vrabec, Imane Bello, Ishani Dash, Jihyun Kang, John Giorgi, Jonas Golde, Jose David Posada, Karthik Rangasai Sivaraman, Lokesh Bulchandani, Lu Liu, Luisa Shinzato, Madeleine Hahn de Bykhovetz, Maiko Takeuchi, Marc Pàmies, Maria A Castillo, Marianna Nezhurina, Mario Sänger, Matthias Samwald, Michael Cullan, Michael Weinberg, Michiel De Wolf, Mina Mihaljcic, Minna Liu, Moritz Freidank, Myungsun Kang, Natasha Seelam, Nathan Dahlberg, Nicholas Michio Broad, Nikolaus Muellner, Pascale Fung, Patrick Haller, Ramya Chandrasekhar, Renata Eisenberg, Robert Martin, Rodrigo Canalli, Rosaline Su, Ruisi Su, Samuel Cahyawijaya, Samuele Garda, Shlok S Deshmukh, Shubhanshu Mishra, Sid Kiblawi, Simon Ott, Sinee Sang-aroonsiri, Srishti Kumar, Stefan Schweter, Sushil Bharati, Tanmay Laud, Théo Gigant, Tomoya Kainuma, Wojciech Kusa, Yanis Labrak, Yash Shailesh Bajaj, Yash Venkatraman, Yifan Xu, Yingxin Xu, Yu Xu, Zhe Tan, Zhongli Xie, Zifan Ye, Mathilde Bras, Younes Belkada, Thomas Wolf
Large language models (LLMs) have been shown to be able to perform new tasks based on a few demonstrations or natural language instructions.
no code implementations • 31 Oct 2022 • Pratik Kayal, Mrinal Anand, Harsh Desai, Mayank Singh
In this paper, we adapt the transformer-based language modeling paradigm for scientific table structure and content extraction.
1 code implementation • Findings (ACL) 2022 • Shruti Singh, Mayank Singh
Language models are increasingly becoming popular in AI-powered scientific IR systems.
no code implementations • NeurIPS Workshop AIPLANS 2021 • Mrinal Anand, Pratik Kayal, Mayank Singh
Program synthesis from natural language descriptions is a challenging task.
no code implementations • NeurIPS Workshop AIPLANS 2021 • Mrinal Anand, Pratik Kayal, Mayank Singh
The resurgence of automatic program synthesis has been observed with the rise of deep learning.
2 code implementations • 9 Aug 2021 • Shruti Singh, Mayank Singh, Pawan Goyal
We present COMPARE, a taxonomy and a dataset of comparison discussions in peer reviews of research papers in the domain of experimental deep learning.
no code implementations • INLG (ACL) 2021 • Vivek Srivastava, Mayank Singh
In this shared task, we seek the participating teams to investigate the factors influencing the quality of the code-mixed text generation systems.
no code implementations • EMNLP (Eval4NLP) 2021 • Ayush Garg, Sammed S Kagi, Vivek Srivastava, Mayank Singh
Code-mixing is a phenomenon of mixing words and phrases from two or more languages in a single utterance of speech and text.
no code implementations • EMNLP (Eval4NLP) 2021 • Vivek Srivastava, Mayank Singh
Text generation is a highly active area of research in the computational linguistic community.
no code implementations • 22 Jun 2021 • Mrinal Anand, Pratik Kayal, Mayank Singh
In this paper, we specifically experiment with \textsc{AlgoLisp} DSL-based generative models and showcase the existence of significant dataset bias through different classes of adversarial examples.
no code implementations • ACL 2021 • Viraj Shah, Shruti Singh, Mayank Singh
It supports multiple features such as TweetExplorer to explore tweets by topics, visualize insights from Twitter activity throughout the organization cycle of conferences, discover popular research papers and researchers.
no code implementations • NAACL (CALCS) 2021 • Vivek Srivastava, Mayank Singh
Code-mixing is a frequent communication style among multilingual speakers where they mix words and phrases from two different languages in the same utterance of text or speech.
no code implementations • 15 Jun 2021 • Vivek Srivastava, Mayank Singh
Multilingualism refers to the high degree of proficiency in two or more languages in the written and oral communication modes.
no code implementations • 30 May 2021 • Pratik Kayal, Mrinal Anand, Harsh Desai, Mayank Singh
This paper discusses the dataset, tasks, participants' methods, and results of the ICDAR 2021 Competition on Scientific Table Image Recognition to LaTeX.
no code implementations • 26 May 2021 • Akhilesh Ravi, Amit Yadav, Jainish Chauhan, Jatin Dholakia, Naman jain, Mayank Singh
The increasing use of dialogue agents makes it extremely desirable for them to understand and acknowledge the implied emotions to respond like humans with empathy.
no code implementations • 12 May 2021 • Harsh Desai, Pratik Kayal, Mayank Singh
Information Extraction (IE) from the tables present in scientific articles is challenging due to complicated tabular representations and complex embedded text.
no code implementations • 8 Dec 2020 • Puneet Mangla, Nupur Kumari, Mayank Singh, Balaji Krishnamurthy, Vineeth N Balasubramanian
Previous works have addressed training in low data setting by leveraging transfer learning and data augmentation techniques.
no code implementations • 30 Nov 2020 • Heer Ambavi, Kavita Vaishnaw, Udit Vyas, Abhisht Tiwari, Mayank Singh
The entire world is engulfed in the fight against the COVID-19 pandemic, leading to a significant surge in research experiments, government policies, and social media discussions.
no code implementations • 19 Oct 2020 • Parth Patel, Nupur Kumari, Mayank Singh, Balaji Krishnamurthy
We propose a self-supervised approach (LT-GAN) to improve the generation quality and diversity of images by estimating the GAN-induced transformation (i. e. transformation induced in the generated images by perturbing the latent space of generator).
Ranked #4 on
Image Generation
on CelebA-HQ 128x128
no code implementations • 28 Sep 2020 • Puneet Mangla, Nupur Kumari, Mayank Singh, Vineeth N. Balasubramanian, Balaji Krishnamurthy
Recent advances in generative adversarial networks (GANs) have shown remarkable progress in generating high-quality images.
1 code implementation • 23 Sep 2020 • Nidhin Harilal, Udit Bhatia, Mayank Singh
Projection of changes in extreme indices of climate variables such as temperature and precipitation are critical to assess the potential impacts of climate change on human-made and natural systems, including critical infrastructures and ecosystems.
1 code implementation • 25 Jul 2020 • Naman Jain, Ankush Chauhan, Atharva Chewale, Ojas Mithbavkar, Ujjaval Shah, Mayank Singh
Song lyrics convey a meaningful story in a creative manner with complex rhythmic patterns.
no code implementations • 20 Jul 2020 • Jagriti Jalal, Mayank Singh, Arindam Pal, Lipika Dey, Animesh Mukherjee
Understanding the topical evolution in industrial innovation is a challenging problem.
no code implementations • SEMEVAL 2020 • Vivek Srivastava, Mayank Singh
Code-mixing is the phenomenon of using multiple languages in the same utterance of a text or speech.
no code implementations • 5 Jun 2020 • Sayantan Adak, Atharva Vyas, Animesh Mukherjee, Heer Ambavi, Pritam Kadasi, Mayank Singh, Shivam Patel
We introduce an AI-enabled portal that presents an excellent visualization of Mahatma Gandhi's life events by constructing temporal and spatial social networks from the Gandhian literature.
no code implementations • 5 Jun 2020 • Ayush Garg, Sammed Shantinath Kagi, Mayank Singh
Automatic scientific keyphrase extraction is a challenging problem facilitating several downstream scholarly tasks like search, recommendation, and ranking.
no code implementations • 4 May 2020 • Gunjan Aggarwal, Abhishek Sinha, Nupur Kumari, Mayank Singh
In this paper, we leverage models with interpretable perceptually-aligned features and show that adversarial training with low max-perturbation bound can improve the performance of models for zero-shot and weakly supervised localization tasks.
no code implementations • EMNLP (WNUT) 2020 • Vivek Srivastava, Mayank Singh
Code-mixing is the phenomenon of using more than one language in a sentence.
no code implementations • 1 Dec 2019 • Tejus Gupta, Abhishek Sinha, Nupur Kumari, Mayank Singh, Balaji Krishnamurthy
We present an algorithm for computing class-specific universal adversarial perturbations for deep neural networks.
1 code implementation • ECCV 2020 • Mayank Singh, Nupur Kumari, Puneet Mangla, Abhishek Sinha, Vineeth N. Balasubramanian, Balaji Krishnamurthy
Safe deployment of machine learning system mandates that the prediction and its explanation be reliable and robust.
Ranked #1 on
Weakly-Supervised Object Localization
on CUB-200-2011
(Top-1 Error Rate metric)
no code implementations • 29 Oct 2019 • Pratik Kayal, Mayank Singh, Pawan Goyal
The task of learning a sentiment classification model that adapts well to any target domain, different from the source domain, is a challenging problem.
no code implementations • 16 Oct 2019 • Monarch Parmar, Naman jain, Pranjali Jain, P Jayakrishna Sahit, Soham Pachpande, Shruti Singh, Mayank Singh
Also, it provides temporal statistics such as yearwise popularity of topics, datasets, and seminal papers.
8 code implementations • 28 Jul 2019 • Puneet Mangla, Mayank Singh, Abhishek Sinha, Nupur Kumari, Vineeth N. Balasubramanian, Balaji Krishnamurthy
A recent regularization technique - Manifold Mixup focuses on learning a general-purpose representation, robust to small changes in the data distribution.
1 code implementation • SEMEVAL 2019 • Arik Pamnani, Rajat Goel, Jayesh Choudhari, Mayank Singh
Recent advancements in Internet and Mobile infrastructure have resulted in the development of faster and efficient platforms of communication.
1 code implementation • 13 May 2019 • Mayank Singh, Abhishek Sinha, Nupur Kumari, Harshitha Machiraju, Balaji Krishnamurthy, Vineeth N. Balasubramanian
We analyze the adversarially trained robust models to study their vulnerability against adversarial attacks at the level of the latent layers.
no code implementations • 13 Feb 2018 • Mayank Singh, Rajdeep Sarkar, Atharva Vyas, Pawan Goyal, Animesh Mukherjee, Soumen Chakrabarti
We propose several approaches to rank papers from these noisy 'match' outcomes.
no code implementations • 3 Jan 2018 • Mayank Singh, Abhishek Sinha, Balaji Krishnamurthy
Recently, Neural networks have seen a huge surge in its adoption due to their ability to provide high accuracy on various tasks.
no code implementations • 10 Sep 2017 • Mayank Singh, Soham Dan, Sanyam Agarwal, Pawan Goyal, Animesh Mukherjee
We also categorize individual research articles based on their application areas and the techniques proposed/improved in the article.
no code implementations • 23 Aug 2016 • Soham Dan, Sanyam Agarwal, Mayank Singh, Pawan Goyal, Animesh Mukherjee
Every field of research consists of multiple application areas with various techniques routinely used to solve problems in these wide range of application areas.