Treffer: Quantum-Assisted Support Vector Regression for Detecting Facial Landmarks

Title:
Quantum-Assisted Support Vector Regression for Detecting Facial Landmarks
Publisher Information:
2021-11-17
Document Type:
E-Ressource Electronic Resource
Availability:
Open access content. Open access content
Other Numbers:
COO oai:arXiv.org:2111.09304
1333732807
Contributing Source:
CORNELL UNIV
From OAIster®, provided by the OCLC Cooperative.
Accession Number:
edsoai.on1333732807
Database:
OAIster

Weitere Informationen

The classical machine-learning model for support vector regression (SVR) is widely used for regression tasks, including weather prediction, stock-market and real-estate pricing. However, a practically realisable quantum version for SVR remains to be formulated. We devise annealing-based algorithms, namely simulated and quantum-classical hybrid, for training two SVR models, and compare their empirical performances against the SVR implementation of Python's scikit-learn package and the SVR-based state-of-the-art algorithm for the facial landmark detection (FLD) problem. Our method is to derive a quadratic-unconstrained-binary formulation for the optimisation problem used for training a SVR model and solve this problem using annealing. Using D-Wave's Hybrid Solver, we construct a quantum-assisted SVR model, thereby demonstrating a slight advantage over classical models regarding landmark-detection accuracy. Furthermore, we observe that annealing-based SVR models predict landmarks with lower variances compared to the SVR models trained by greedy optimisation procedures. Our work is a proof-of-concept example for applying quantu-assisted SVR to a supervised learning task with a small training dataset.
Comment: 20 pages, 6 figures