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Title: | Machine learning approach of price prediction |
Authors: | Jamkhandikar, Irfan Mohammad Farhan, (19CO38) Shaikh, Afsar Ahmed (19CO52) Thokan, Naveed Naushad (19CO60) |
Keywords: | Project Report - CO |
Issue Date: | May-2023 |
Publisher: | AIKTC |
Series/Report no.: | PE0739; |
Abstract: | This paper presents a Laptop price prediction system by using the supervised machine learning technique. The research uses multiple linear regression as the machine learning prediction method which offered 85% prediction precision. Using multiple linear regression, there are multiple independent variables but one and only one dependent variable whose actual and predicted values are compared to find precision of results. This paper proposes a system where price is dependent variable which is predicted, and this price is derived from factors like Laptop’s model, RAM, ROM (HDD or SSD), GPU, CPU, IPS Display, and Touch Screen. Price prediction is a useful feature forconsumers as well as businesses. A price prediction tool motivates users to engage with a brand or evaluate offers in order to spend their money wisely. Price prediction enables businesses to set pricing in a manner that builds customer engagement and loyalty. With Machine Learning (ML) technology a price prediction problem is formulated as a regression analysis which is a statistical technique used to estimate the relationship between a dependent/target variable and single or multiple independent (interdependent) variables. In regression, the target variable is numeric. This project will focus on ML algorithm used for price prediction. |
URI: | http://localhost:8080/xmlui/handle/123456789/4115 |
Appears in Collections: | Computer Engineering - Project Reports |
Files in This Item:
File | Description | Size | Format | |
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15-Machine Learning Approach of Price Prediction.pdf Until 2026-06-30 | 3.84 MB | Adobe PDF | View/Open Request a copy |
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