Quantum-Classical Sentiment Analysis

Autor: Bifulco, Mario, Roversi, Luca
Rok vydání: 2024
Předmět:
Druh dokumentu: Working Paper
Popis: In this study, we initially investigate the application of a hybrid classical-quantum classifier (HCQC) for sentiment analysis, comparing its performance against the classical CPLEX classifier and the Transformer architecture. Our findings indicate that while the HCQC underperforms relative to the Transformer in terms of classification accuracy, but it requires significantly less time to converge to a reasonably good approximate solution. This experiment also reveals a critical bottleneck in the HCQC, whose architecture is partially undisclosed by the D-Wave property. To address this limitation, we propose a novel algorithm based on the algebraic decomposition of QUBO models, which enhances the time the quantum processing unit can allocate to problem-solving tasks.
Comment: Submitted to BigHPC 2024 - https://www.itadata.it/2024/bighpc2024
Databáze: arXiv