Quantum Machine Learning models for predicting disease

From ISLAB/CAISR
Title Quantum Machine Learning models for predicting disease
Summary explore quantum models, including hybrid (classical-quantum), and apply them to different disease prediction tasks
Keywords Quantum Machine Learning, Kernel Methods, Quantum Classifier
TimeFrame ASAP
References 1. Tiwari, P., Dehdashti, S., Obeid, A. K., Marttinen, P., & Bruza, P. (2022). Kernel method based on non-linear coherent states in quantum feature space. Journal of Physics A: Mathematical and Theoretical, 55(35), 355301.

2. Laxminarayana, N., Mishra, N., Tiwari, P., Garg, S., Behera, B. K., & Farouk, A. (2022). Quantum-Assisted Activation for Supervised Learning in Healthcare-based Intrusion Detection Systems. IEEE Transactions on Artificial Intelligence.

3. Tiwari, P., & Melucci, M. (2018, October). Towards a quantum-inspired framework for binary classification. In Proceedings of the 27th ACM international conference on information and knowledge management.

4. Zhang, Y., Liu, Y., Li, Q., Tiwari, P., Wang, B., Li, Y., ... & Song, D. (2021). CFN: a complex-valued fuzzy network for sarcasm detection in conversations. IEEE Transactions on Fuzzy Systems, 29(12), 3696-3710.

5. Moreira, C., Tiwari, P., Pandey, H. M., Bruza, P., & Wichert, A. (2020). Quantum-like influence diagrams for decision-making. Neural Networks, 132, 190-210.

Prerequisites
Author
Supervisor Prayag Tiwari
Level Master
Status Open


Quantum machine learning is an emerging area that aims to bridge the gap between machine learning and quantum physics. Several quantum algorithms have been proposed and implemented on the quantum circuit in recent years. For example, it is possible to explore quantum kernel methods in deep neural networks. The main goal of this project is to explore quantum models, including hybrid (classical-quantum), and apply them to different disease prediction tasks.