학술논문

WSN-Assisted Consumer Purchasing Power Prediction via Barracuda Swarm Optimization-Driven Deep Learning for E-Commerce Systems
Document Type
Periodical
Source
IEEE Transactions on Consumer Electronics IEEE Trans. Consumer Electron. Consumer Electronics, IEEE Transactions on. 70(1):1694-1701 Feb, 2024
Subject
Power, Energy and Industry Applications
Components, Circuits, Devices and Systems
Fields, Waves and Electromagnetics
Electronic commerce
Wireless sensor networks
Predictive models
Feature extraction
Prediction algorithms
Computer science
Classification algorithms
E-commerce
deep learning
Barracuda swarm optimization
stacked auto-encoder
Language
ISSN
0098-3063
1558-4127
Abstract
The conventional e-commerce business chain is undergoing a transformation centered on short videos and live streams, giving rise to interest-based e-commerce as a burgeoning trend in the industry. Varied content stimulates the fast growth of interest in e-commerce. By employing wireless sensor networks (WSNs) to collect real-time data on user behavior, preferences, and contextual factors, businesses employ high-tech analytics and predictive modeling systems to evaluate individual purchasing power. This new integration supports E-commerce platforms to offer personalized and targeted product recommendations, pricing strategies, and promotional campaigns, thus optimizing the customer shopping experience. The WSN-assisted predictive abilities not only allow businesses to tailor their offerings to particular user segments for contributing to the overall performances and effectiveness of E-commerce ecosystems in a gradually dynamic market. This study develops a WSN-Assisted Consumer Purchasing Power Prediction via Barracuda Swarm Optimization Algorithm Driven Deep Learning (CP3-BSOADL) for E-Commerce Systems. The major aim of the CP3-BSOADL technique is to precisely forecast the procuring power level with the customer content preferences to offer new concepts for interest e-commerce systems. In the CP3-BSOADL technique, two major processes are involved. For the prediction process, the CP3-BSOADL technique utilizes a stacked auto-encoder (SAE) model which effectually forecasts the purchasing power of the consumers for e-commerce systems. Besides, the BSO algorithm can be applied to effectually fine-tune the hyperparameters related to the SAE model which leads to accomplishing enhanced predictive results. The performance analysis of the CP3-BSOADL technique is tested using an e-commerce dataset. The extensive result analysis stated that the CP3-BSOADL technique gains better performance over other recent state-of-the-art approaches in terms of distinct measures.