Prediction of Mobile Model Price us ing Machine Learning Techniques

Author:

Kumuda , ,Karur Vishal,S E. Karthick Balaje, ,

Abstract

Mobile phone has become a common commodity and usually the most common purchased item. Thousands of types of mobiles are released every year with new features and new specification and new designs. So the real question is prediction is that what is the real price of the mobile and to estimate the price of the mobile within the market for optimal marketing and successful launch of the product. Price has become a major factor for development of any product and its sustainability in the market. Mobile prices also impact the marketing of the mobile and also its popularity with other competitors. With the available specifications and desired designs, money is also an important factor to survive within the market. Customer usually sees that they are able to buy with the specification with the given estimated price or not. So to estimating the price is an important factor before releasing the mobile and also to know about the market and competitors. In this Prediction, Dataset is collected from the existing market and different algorithms are applied to reduce the complexity and also identify the major selection features and get the best comparison within the data .This Tool is used to find the best price with maximum specifications.

Publisher

Blue Eyes Intelligence Engineering and Sciences Engineering and Sciences Publication - BEIESP

Subject

Computer Science Applications,General Engineering,Environmental Engineering

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