
Megh Thakkar
Student @ MILA - Quebec AI Institute
multilingual
adversarial attack
language models
adversarial robustness
robustness
text
nlp
data-to-text
natural language generation
pretraining
multimodal
speech
low resources
adversarial example
autoencoder
12
presentations
9
number of views
SHORT BIO
Megh is a research master's student at MILA and UdeM. Before starting his master's, he was a pre-doctoral researcher in the NLU team at Google Research India. He was previously a research assistant at the Alibaba-NTU Joint Research Institute in Singapore after graduating from Birla Institute of Technology and Science (BITS), Pilani.
Presentations

Self-Influence Guided Data Reweighting for Language Model Pre-training
Megh Thakkar and 5 other authors

Randomized Smoothing with Masked Inference for Adversarially Robust Text Classifications
Han Cheol Moon and 4 other authors

Towards Robust Low-Resource Fine-Tuning with Multi-View Compressed Representations
Xingxuan Li and 6 other authors

CIAug: Equipping Interpolative Augmentation with Curriculum Learning
Ritesh Soun and 5 other authors

Chart-to-Text: A Large-Scale Benchmark for Chart Summarization
Shankar Kantharaj and 6 other authors

DMix: Adaptive Distance-aware Interpolative Mixup
Ramit Sawhney and 6 other authors

DMix: Distance Constrained Interpolative Mixup
Shrey Pandit and 4 other authors

Sequence Mixup for Zero-Shot Cross-Lingual Part-Of-Speech Tagging
Vishwa Shah and 3 other authors

HypMix: Hyperbolic Interpolative Data Augmentation
Ramit Sawhney and 5 other authors

HypMix: Hyperbolic Interpolative Data Augmentation
Ramit Sawhney and 5 other authors

HypMix: Hyperbolic Interpolative Data Augmentation
Ramit Sawhney and 5 other authors

AdaPT: A Set of Guidelines for Hyperbolic Multimodal Multilingual NLP
Ramit Sawhney and 4 other authors