Property-guided Inverse Design of Metal-Organic Frameworks Using Quantum Natural Language Processing
Shinyoung Kang, Jihan Kim

TL;DR
This paper demonstrates the use of quantum natural language processing models to classify and generate metal-organic frameworks with targeted properties, achieving high accuracy and showcasing potential for quantum-assisted materials design.
Contribution
It introduces quantum NLP models for inverse design of MOFs, identifying the most effective approach and demonstrating promising classification and generation results.
Findings
Bag-of-words model achieved 88.6% accuracy for pore volume classification.
Multi-class models reached 92% accuracy for pore volume.
Generation models achieved 93.5% accuracy for pore volume.
Abstract
In this study, we explore the potential of using quantum natural language processing (QNLP) to inverse design metal-organic frameworks (MOFs) with targeted properties. Specifically, by analyzing 450 hypothetical MOF structures consisting of 3 topologies, 10 metal nodes and 15 organic ligands, we categorize these structures into four distinct classes for pore volume and Henry's constant values. We then compare various QNLP models (i.e. the bag-of-words, DisCoCat (Distributional Compositional Categorical), and sequence-based models) to identify the most effective approach to process the MOF dataset. Using a classical simulator provided by the IBM Qiskit, the bag-of-words model is identified to be the optimum model, achieving validation accuracies of 88.6% and 78.0% for binary classification tasks on pore volume and Henry's constant, respectively. Further, we developed…
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Taxonomy
TopicsMachine Learning in Materials Science · Metal-Organic Frameworks: Synthesis and Applications
