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Published May 30, 2022 | Version CC BY-NC-ND 4.0
Journal article Open

Machine Learning Approach for Big-Mart Sales Prediction Framework

  • 1. Assistant Professor, Department of Computer Engineering, Sanjivani COE, Kopargaon Savitribai Phule Pune University, Pune (Maharashtra), India.
  • 2. HOD and Professor, Department of Computer Engineering, Sanjivani COE, Kopargaon, Savitribai Phule Pune University, Pune (Maharashtra), India.
  • 3. Associate Professor, Department of Computer Engineering, Sanjivani COE, Kopargaon, Savitribai Phule Pune University, Pune (Maharashtra), India.
  • 4. Assistant Professor, Department of Computer Engineering Dept, Sanjivani COE, Kopargaon, Savitribai Phule Pune University, Pune (Maharashtra), India.
  • 5. HOD and Associate Professor, Department of Computer Engineering, VPKBIET, Baramati, Savitribai Phule Pune University, Pune (Maharashtra), India.

Contributors

Contact person:

  • 1. Assistant Professor, Department of Computer Engineering, Sanjivani COE, Kopargaon Savitribai Phule Pune University, Pune (Maharashtra), India.

Description

Abstract: The amounts of data predicted to increase at an exponential rate in the future. The modifications are essential to meet transaction speeds as well as the anticipated growth in data and customer behaviors. The information derived from prior data is extensively relied upon by the majority of companies. One of the primary goals of the suggested system is to identify a reliable sales trend prediction mechanism that is executed using machine learning techniques in order to maximize income. Sales forecasting advises managers about how to manage a company's employees, working capital and assets. It's a requirement for strategic planning and decision-making in the corporate world. Reasonable forecasts enable the company to increase market growth while increasing revenue generating. Operations, marketing, sales, production, and finance all use sales predictions as inputs in their decision-making processes. The concept of sales data and sales forecast has been examined in the suggested system. Machine learning algorithms such as GLL (Generalized Linear Model), GBT (Gradient Boosted Trees), and Decision Trees were used to develop the model, and the optimum model for prediction was established based on the results analysis. A best-fit prediction model for anticipating sales trends is offered based on a performance review. The effectiveness and accuracy of the prediction and forecasting approaches used are discussed in the findings. The Gradient Boost Algorithm has been demonstrated to be the best fit model for forecasting and predicting future sales. The sales projection is done using Gradient Boosted Trees, which predicts which product will be sold in what quantity in the future.

Notes

Published By: Blue Eyes Intelligence Engineering and Sciences Publication (BEIESP) © Copyright: All rights reserved.

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Journal article: 2278-3075 (ISSN)

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Subjects

ISSN: 2278-3075 (Online)
https://portal.issn.org/resource/ISSN/2278-3075#
Retrieval Number: 100.1/ijitee.F99160511622
https://www.ijitee.org/portfolio-item/F99160511622/
Journal Website: www.ijitee.org
https://www.ijitee.org
Publisher: Blue Eyes Intelligence Engineering and Sciences Publication (BEIESP)
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