Archit Parnami
University of North Carolina at Charlotte
5 Papers
1 Citations
Archit Parnami is an academic researcher from University of North Carolina at Charlotte. The author has contributed to research in topics: Computer science & Deep learning. The author has an hindex of 1, co-authored 3 publications.
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Papers
•Posted Content
Few-Shot Keyword Spotting With Prototypical Networks
Archit Parnami,Minwoo Lee +1 more
TL;DR: This paper proposes a solution to the few-shot keyword spotting problem using temporal and dilated convolutions on prototypical networks and demonstrates keyword spotting of new keywords using just a small number of samples.
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Privacy Enhancement for Cloud-Based Few-Shot Learning
Archit Parnami,Muhammad Usama,Liyue Fan,Jin Ho Lee +3 more
- 10 May 2022
TL;DR: The empirical results show how privacy-performance trade-off can be negotiated for privacy-enhanced few-shot learning and propose a method that learns privacy-preserved representation through the joint loss.
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•Posted Content
Transformation of Node to Knowledge Graph Embeddings for Faster Link Prediction in Social Networks.
TL;DR: In this article, a transformation model was proposed to convert node embeddings obtained from random walk based methods to embedding obtained from knowledge graph methods directly without an increase in the computational cost.
•Posted Content
Pruning Attention Heads of Transformer Models Using A* Search: A Novel Approach to Compress Big NLP Architectures
TL;DR: This article proposed a pruning algorithm to compress transformer models by eliminating redundant Attention Heads in the BERT transformer model with almost no loss in accuracy, and applied the A* search algorithm to obtain a pruned model with minimal inaccuracy guarantees.
Learning from Few Examples: A Summary of Approaches to Few-Shot Learning
Archit Parnami,Jin Ho Lee +1 more
TL;DR: This survey paper comprises a representative list of recently proposed few-shot learning algorithms in the perspectives of meta-learning, transfer learning, and hybrid approaches to reduce the turnaround time of building machine learning applications.