Connecting phases of matter to the flatness of the loss landscape in analog variational quantum algorithms
By: Kasidit Srimahajariyapong, Supanut Thanasilp, Thiparat Chotibut
Potential Business Impact:
Helps quantum computers learn better by using special phases.
Variational quantum algorithms (VQAs) promise near-term quantum advantage, yet parametrized quantum states commonly built from the digital gate-based approach often suffer from scalability issues such as barren plateaus, where the loss landscape becomes flat. We study an analog VQA ans\"atze composed of $M$ quenches of a disordered Ising chain, whose dynamics is native to several quantum simulation platforms. By tuning the disorder strength we place each quench in either a thermalized phase or a many-body-localized (MBL) phase and analyse (i) the ans\"atze's expressivity and (ii) the scaling of loss variance. Numerics shows that both phases reach maximal expressivity at large $M$, but barren plateaus emerge at far smaller $M$ in the thermalized phase than in the MBL phase. Exploiting this gap, we propose an MBL initialisation strategy: initialise the ans\"atze in the MBL regime at intermediate quench $M$, enabling an initial trainability while retaining sufficient expressivity for subsequent optimization. The results link quantum phases of matter and VQA trainability, and provide practical guidelines for scaling analog-hardware VQAs.
Similar Papers
Escaping Barren Plateaus in Variational Quantum Algorithms Using Negative Learning Rate in Quantum Internet of Things
Quantum Physics
Helps quantum computers learn better, even when stuck.
A unifying account of warm start guarantees for patches of quantum landscapes
Quantum Physics
Finds better ways for quantum computers to learn.
Trainability of Quantum Models Beyond Known Classical Simulability
Quantum Physics
Keeps quantum computers trainable for harder problems.