Ilya Shnayderman, Liat Ein-Dor, et al.
arXiv
Quantum physics and mechanics have demonstrated significant advances and promising results in different areas using the current near-term devices. One emerging subarea in quantum machine learning is quantum natural language processing, which combines quantum computing advantages and speedups with language processing algorithms to create and perform natural language tasks such as text classification or generation. The libraries and toolboxes used in this subarea include DisCoPy and lambeq, which are used to transform sentences into string diagrams or monoidal functors, convert these diagrams into quantum circuits or ansatz and embed it into a quantum model. In this study, we used both libraries with different text-based datasets to perform sentiment analysis via classification. To do so, we create synthetic datasets to train the different models. After we obtain satisfactory results, we test the resulting models with known datasets. Despite its promising results, quantum natural language processing is far from achieving its full potential. To achieve this potential, the quantum software and hardware must be improved to make them suitable for use with more extensive and complex datasets and other tasks.
Ilya Shnayderman, Liat Ein-Dor, et al.
arXiv
Arvind Agarwal, Laura Chiticariu, et al.
NAACL 2021
Alberto Purpura, Natasha Mulligan, et al.
AMIA Informatics Symposium 2024
Roy Bar-Haim, Lilach Eden, et al.
ACL-IJCNLP 2021