Researcher Collab

Hybrid QLSTM Framework for Time Series Forecasting in Dynamic Financial Markets

2025 4th International Conference on Innovative Mechanisms for Industry Applications (ICIMIA)

Prediction of stock price remains a challenging task because financial markets are dynamic and often non-linear, unpredictable patterns. To deal with such unpredictable data, the architecture that’s created must identify both time based trends and hidden patterns in data. In this study, we explore a hybrid modelling approach by combining both the classical deep learning techniques with quantum computing principles. Specifically, a Long Short-Term Memory (LSTM) is combined with a Quantum Neural Network (QNN) to understand the benefits of using quantum in time series forecasting. Rather than depending on a single quantum configuration, multiple feature maps and ansatz circuit designs were evaluated to identify the most suitable arrangement for the QLSTM model. Resultant framework blends ideas from both classical computing and quantum approaches to improve how we predict patterns over time in real-life scenarios.

DOI: https://doi.org/10.1109/ICIMIA67127.2025.11200988

Publish Year: 2025