Study of Feature Importance for Quantum Machine Learning Models
Aaron Baughman, Kavitha Yogaraj, Raja Hebbar, Sudeep Ghosh, Rukhsan Ul, Haq, Yoshika Chhabra

TL;DR
This paper explores feature importance in quantum machine learning models, comparing them with classical models using real-world sports data, and demonstrates their potential despite current quantum hardware limitations.
Contribution
First study to analyze feature importance in QML models, developing a hybrid quantum-classical architecture and novel validation methods for real-world datasets.
Findings
Quantum feature importance shows higher variation than classical.
QML and CML models are complementary, offering diverse solutions.
Quantum models perform promisingly on NISQ hardware despite noise.
Abstract
Predictor importance is a crucial part of data preprocessing pipelines in classical and quantum machine learning (QML). This work presents the first study of its kind in which feature importance for QML models has been explored and contrasted against their classical machine learning (CML) equivalents. We developed a hybrid quantum-classical architecture where QML models are trained and feature importance values are calculated from classical algorithms on a real-world dataset. This architecture has been implemented on ESPN Fantasy Football data using Qiskit statevector simulators and IBM quantum hardware such as the IBMQ Mumbai and IBMQ Montreal systems. Even though we are in the Noisy Intermediate-Scale Quantum (NISQ) era, the physical quantum computing results are promising. To facilitate current quantum scale, we created a data tiering, model aggregation, and novel validation methods.…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Stock Market Forecasting Methods · Computational Physics and Python Applications
