
Rajdeep Mukherjee
Post-graduate student @ IIT Kharagpur, India
classification
benchmarking
long document summarization
generative
pretraining
contrastive learning
encoder-decoder
absa
cross-lingual summarization
legal nlp
aste
financial
financial summarization
scalable summarization dataset
multilingual corpus for summarization
5
presentations
SHORT BIO
Rajdeep Mukherjee is a final-year Ph.D. Candidate (Thesis Submitted) at the Dept. of Computer Science and Engineering, IIT Kharagpur, India working with Prof. Pawan Goyal and Prof. Niloy Ganguly. His Ph.D. thesis focuses on addressing the modeling and evaluation requirements of text summarization solutions across multiple domains such as e-commerce, finance, disaster mitigation, law, and tourism.
His primary area of research is NLP, with research interests including LLMs, Prompt Engineering, ParameterEfficient Fine-tuning, Information Extraction, and Text Summarization. At present, he is exploring the utility of LLMs in solving extreme multi-label classification tasks, such as labeling numerals in financial disclosures and extracting attribute-value pairs for e-commerce products. In the future, he wants to work in the area of AI for Health and Social Good.
Presentations

Parameter-Efficient Instruction Tuning of Large Language Models For Extreme Financial Numeral Labelling
Subhendu Khatuya and 7 other authors

CONTRASTE: Supervised Contrastive Pre-training With Aspect-based Prompts For Aspect Sentiment Triplet Extraction
Rajdeep Mukherjee and 3 other authors

MILDSum: A Novel Benchmark Dataset for Multilingual Summarization of Indian Legal Case Judgments
Debtanu Datta and 3 other authors

ECTSum: A New Benchmark Dataset For Bullet Point Summarization of Long Earnings Call Transcripts
Rajdeep Mukherjee and 9 other authors

PASTE: A Tagging-Free Decoding Framework Using Pointer Networks for Aspect Sentiment Triplet Extraction
Rajdeep Mukherjee and 4 other authors