QAmplifyNet: Pushing the Boundaries of Supply Chain Backorder Prediction Using Interpretable Hybrid Quantum - Classical Neural Network

07/24/2023
by   Md Abrar Jahin, et al.
1

Supply chain management relies on accurate backorder prediction for optimizing inventory control, reducing costs, and enhancing customer satisfaction. However, traditional machine-learning models struggle with large-scale datasets and complex relationships, hindering real-world data collection. This research introduces a novel methodological framework for supply chain backorder prediction, addressing the challenge of handling large datasets. Our proposed model, QAmplifyNet, employs quantum-inspired techniques within a quantum-classical neural network to predict backorders effectively on short and imbalanced datasets. Experimental evaluations on a benchmark dataset demonstrate QAmplifyNet's superiority over classical models, quantum ensembles, quantum neural networks, and deep reinforcement learning. Its proficiency in handling short, imbalanced datasets makes it an ideal solution for supply chain management. To enhance model interpretability, we use Explainable Artificial Intelligence techniques. Practical implications include improved inventory control, reduced backorders, and enhanced operational efficiency. QAmplifyNet seamlessly integrates into real-world supply chain management systems, enabling proactive decision-making and efficient resource allocation. Future work involves exploring additional quantum-inspired techniques, expanding the dataset, and investigating other supply chain applications. This research unlocks the potential of quantum computing in supply chain optimization and paves the way for further exploration of quantum-inspired machine learning models in supply chain management. Our framework and QAmplifyNet model offer a breakthrough approach to supply chain backorder prediction, providing superior performance and opening new avenues for leveraging quantum-inspired techniques in supply chain management.

READ FULL TEXT

page 1

page 4

page 5

page 6

page 8

page 16

page 21

research
09/17/2022

Quantum Computing Methods for Supply Chain Management

Quantum computing is expected to have transformative influences on many ...
research
12/06/2022

Financial Risk Management on a Neutral Atom Quantum Processor

Machine Learning models capable of handling the large datasets collected...
research
04/28/2022

Learning General Inventory Management Policy for Large Supply Chain Network

Inventory management in warehouses directly affects profits made by manu...
research
11/30/2022

Quantum Neural Networks for a Supply Chain Logistics Application

Problem instances of a size suitable for practical applications are not ...
research
04/28/2023

Enhancing Supply Chain Resilience: A Machine Learning Approach for Predicting Product Availability Dates Under Disruption

The COVID 19 pandemic and ongoing political and regional conflicts have ...
research
08/21/2023

Evaluating quantum generative models via imbalanced data classification benchmarks

A limited set of tools exist for assessing whether the behavior of quant...
research
04/03/2023

BOLLWM: A real-world dataset for bollworm pest monitoring from cotton fields in India

This paper presents a dataset of agricultural pest images captured over ...

Please sign up or login with your details

Forgot password? Click here to reset