Linear Regression, Data Cleaning & EDA

Vintage makes the price go up right?

The used and refurbished device market has grown considerably over the past decade, and a new IDC (International Data Corporation) forecast predicts that the used phone market would be worth $52.7bn by 2023 with a compound annual growth rate (CAGR) of 13.6% from 2018 to 2023. This growth can be attributed to an uptick in demand for used phones and tablets that offer considerable savings compared with new models.

Refurbished and used devices continue to provide cost-effective alternatives to both consumers and businesses that are looking to save money when purchasing one. There are plenty of other benefits associated with the used device market. Used and refurbished devices can be sold with warranties and can also be insured with proof of purchase. Third-party vendors/platforms, such as Verizon, Amazon, etc., provide attractive offers to customers for refurbished devices. Maximizing the longevity of devices through second-hand trade also reduces their environmental impact and helps in recycling and reducing waste.

  1. EDA

  2. Data cleaning, formatting and outlier treatment

  3. Treated for multicollinearity

  4. Built OLS Linear Regression model with p-value of 0.05

  5. Tested assumptions of OLS

  6. Produced regression equation with coefficients for all significant variables

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Logistic Regression and Decision Tree

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Hypothesis Test & Statistical Analysis