Research Article
Stage by stage E- Ecommerce market database analysis by using machine learning models
@ARTICLE{10.4108/eetiot.5383, author={Narendra Ryali and Nikita Manne and A Ravisankar and Mano Ashish Tripathi and Ravindra Tripathi and M Venkata Naresh}, title={Stage by stage E- Ecommerce market database analysis by using machine learning models}, journal={EAI Endorsed Transactions on Internet of Things}, volume={10}, number={1}, publisher={EAI}, journal_a={IOT}, year={2024}, month={3}, keywords={E-commerce, Machine learning model, Marketing technique, buyers}, doi={10.4108/eetiot.5383} }
- Narendra Ryali
Nikita Manne
A Ravisankar
Mano Ashish Tripathi
Ravindra Tripathi
M Venkata Naresh
Year: 2024
Stage by stage E- Ecommerce market database analysis by using machine learning models
IOT
EAI
DOI: 10.4108/eetiot.5383
Abstract
In the recent era, advertising strategies are far more sophisticated than those of their predecessors. In marketing, business contacts are essential for online transactions. For that, communication needs to develop a database; this database marketing is also one of the best techniques to enhance the business and analyze the market strategies. Businesses may improve consumer experiences, streamline supply chains, and generate more income by analyzing E-Commerce market datasets using machine learning models. In the ever-changing and fiercely competitive world of e-commerce, the multi-stage strategy guarantees a thorough and efficient use of machine learning. Analyzing the database can help to understand the user's or industry's current requirements. Machine Learning models are developed to support the marketing sector. This machine learning model can efficiently operate or analyze e-commerce in different stages, i.e., systematic setup, status analysis, and model development with the implementation process. Using these models, it is possible to analyze the marketing database and create new marketing strategies for distributing marketing objects, the percentage of marketing channels, and the composition of marketing approaches based on the analysis of the marketing database. It underpins marketing theory, data collection, processing, and positive and negative control samples. It is suggested that e-commerce primarily adopt the database marketing method of the model prediction. This is done by substituting the predicted sample into the model for testing. The issue of unequal marketing item distribution may be resolved by machine learning algorithms on the one hand, and prospective customer loss can be efficiently avoided on the other. Also, a proposal for an application approach that enhances the effectiveness of existing database marketing techniques and supports model prediction is made.
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