Search Results for author: Mayank Kulkarni

Found 7 papers, 3 papers with code

EntSUM: A Data Set for Entity-Centric Extractive Summarization

1 code implementation ACL 2022 Mounica Maddela, Mayank Kulkarni, Daniel Preotiuc-Pietro

Controllable summarization aims to provide summaries that take into account user-specified aspects and preferences to better assist them with their information need, as opposed to the standard summarization setup which build a single generic summary of a document. We introduce a human-annotated data set EntSUM for controllable summarization with a focus on named entities as the aspects to control. We conduct an extensive quantitative analysis to motivate the task of entity-centric summarization and show that existing methods for controllable summarization fail to generate entity-centric summaries.

Extractive Summarization

Overcoming Catastrophic Forgetting in Massively Multilingual Continual Learning

no code implementations25 May 2023 Genta Indra Winata, Lingjue Xie, Karthik Radhakrishnan, Shijie Wu, Xisen Jin, Pengxiang Cheng, Mayank Kulkarni, Daniel Preotiuc-Pietro

Real-life multilingual systems should be able to efficiently incorporate new languages as data distributions fed to the system evolve and shift over time.

Continual Learning Scheduling

EntSUM: A Data Set for Entity-Centric Summarization

1 code implementation5 Apr 2022 Mounica Maddela, Mayank Kulkarni, Daniel Preotiuc-Pietro

Our analysis and results show the challenging nature of this task and of the proposed data set.

Learning Rich Representation of Keyphrases from Text

1 code implementation Findings (NAACL) 2022 Mayank Kulkarni, Debanjan Mahata, Ravneet Arora, Rajarshi Bhowmik

In the discriminative setting, we introduce a new pre-training objective - Keyphrase Boundary Infilling with Replacement (KBIR), showing large gains in performance (upto 8. 16 points in F1) over SOTA, when the LM pre-trained using KBIR is fine-tuned for the task of keyphrase extraction.

Abstractive Text Summarization Keyphrase Extraction +6

Multi-Domain Named Entity Recognition with Genre-Aware and Agnostic Inference

no code implementations ACL 2020 Jing Wang, Mayank Kulkarni, Daniel Preotiuc-Pietro

Named entity recognition is a key component of many text processing pipelines and it is thus essential for this component to be robust to different types of input.

Multi-Task Learning named-entity-recognition +2

Keyphrase Extraction from Scholarly Articles as Sequence Labeling using Contextualized Embeddings

no code implementations19 Oct 2019 Dhruva Sahrawat, Debanjan Mahata, Mayank Kulkarni, Haimin Zhang, Rakesh Gosangi, Amanda Stent, Agniv Sharma, Yaman Kumar, Rajiv Ratn Shah, Roger Zimmermann

In this paper, we formulate keyphrase extraction from scholarly articles as a sequence labeling task solved using a BiLSTM-CRF, where the words in the input text are represented using deep contextualized embeddings.

Keyphrase Extraction Word Embeddings

Toward Data-Driven Tutorial Question Answering with Deep Learning Conversational Models

no code implementations WS 2018 Mayank Kulkarni, Kristy Boyer

This paper reports on the creation of a dataset that could support building such a tutorial question answering system and discusses the methodology to create the 106, 386 question strong dataset.

Information Retrieval Question Answering +3

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