Hassan Sajjad
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Fahim Dalvi
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Effect of Post-processing on Contextualized Word Representations
Analyzing Encoded Concepts in Transformer Language Models
Discovering Latent Concepts Learned in BERT
Neuron-level Interpretation of Deep NLP Models: A Survey
On the Effect of Dropping Layers of Pre-trained Transformer Models
How transfer learning impacts linguistic knowledge in deep NLP models?
Fighting the COVID-19 Infodemic in Social Media: A Holistic Perspective and a Call to Arms
Fine-grained Interpretationand Causation Analysis in Deep NLP Models
AraBench: Benchmarking Dialectal Arabic-English Machine Translation
Analyzing Individual Neurons in Pre-trained Language Models
Analyzing Redundancy in Pretrained Transformer Models
Similarity Analysis of Contextual Word Representation Models
Exploiting Redundancy in Pre-trained Language Models for Efficient Transfer Learning
On the Linguistic Representational Power of Neural Machine Translation Models
Poor Man's BERT: Smaller and Faster Transformer Models
One Size Does Not Fit All: Comparing NMT Representations of Different Granularities
Identifying and Controlling Important Neurons in Neural Machine Translation
What is one Grain of Sand in the Desert? Analyzing Individual Neurons in Deep NLP Models
NeuroX: A Toolkit for Analyzing Individual Neurons in Neural Networks
Incremental Decoding and Training Methods for Simultaneous Translation in Neural Machine Translation
Neural Machine Translation Training in a Multi-Domain Scenario
Evaluating Layers of Representation in Neural Machine Translation on Part-of-Speech and Semantic Tagging Tasks
Understanding and Improving Morphological Learning in the Neural Machine Translation Decoder
Challenging Language-Dependent Segmentation for Arabic: An Application to Machine Translation and Part-of-Speech Tagging
What do Neural Machine Translation Models Learn about Morphology?
QCRI Live Speech Translation System
QCRI @ DSL 2016: Spoken Arabic Dialect Identification Using Textual
QCRI’s Machine Translation Systems for IWSLT’2016
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