Tree tensor network classifiers for machine learning: from quantum-inspired to quantum-assisted
Michael L. Wall, Giuseppe D'Aguanno

TL;DR
This paper introduces a quantum-assisted machine learning approach using tree tensor network classifiers that can be implemented on gate-based quantum computers, providing interpretable models and robustness against adversarial attacks.
Contribution
It presents a novel quantum embedding map that produces valid quantum states from classical data and integrates it with a TTN-based feature extractor for quantum classification.
Findings
Achieved similar accuracy to exponential machines with quantum state embeddings
Developed methods for extracting interpretable correlation functions
Demonstrated effectiveness on MNIST and human activity datasets
Abstract
We describe a quantum-assisted machine learning (QAML) method in which multivariate data is encoded into quantum states in a Hilbert space whose dimension is exponentially large in the length of the data vector. Learning in this space occurs through applying a low-depth quantum circuit with a tree tensor network (TTN) topology, which acts as an unsupervised feature extractor to identify the most relevant quantum states in a data-driven fashion. This unsupervised feature extractor then feeds a supervised linear classifier and encodes the output in a small-dimensional quantum register. In contrast to previous work on \emph{quantum-inspired} TTN classifiers, in which the embedding map and class decision weights did not map the data to well-defined quantum states, we present an approach that can be implemented on gate-based quantum computing devices. In particular, we identify an embedding…
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