Federated Learning with Quantum Enhanced LSTM for Applications in High Energy Physics
Abhishek Sawaika, Durga Pritam Suggisetti, Udaya Parampalli, Rajkumar Buyya

TL;DR
This paper introduces a federated learning framework with a quantum-enhanced LSTM model for high energy physics, demonstrating improved performance with minimal data and resources.
Contribution
It presents a novel hybrid quantum-classical LSTM model within a federated setup, optimized for complex, large-scale physics datasets.
Findings
Outperforms some existing quantum machine learning methods.
Achieves comparable accuracy to classical deep learning with fewer parameters.
Requires only 20K data points for effective learning.
Abstract
Learning with large-scale datasets and information-critical applications, such as in High Energy Physics (HEP), demands highly complex, large-scale models that are both robust and accurate. To tackle this issue and cater to the learning requirements, we envision using a federated learning framework with a quantum-enhanced model. Specifically, we design a hybrid quantum-classical long-shot-term-memory model (QLSTM) for local training at distributed nodes. It combines the representative power of quantum models in understanding complex relationships within the feature space, and an LSTM-based model to learn necessary correlations across data points. Given the computing limitations and unprecedented cost of current stand-alone noisy-intermediate quantum (NISQ) devices, we propose to use a federated learning setup, where the learning load can be distributed to local servers as per design and…
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