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Developed a model to predict project scores based on technical aptitude test results. Cleaned and normalized the data, then applied regression analysis to forecast grades.

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parissashahabi/Applicant-Project-Score-Prediction

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Applicant Project Score Prediction

Project Overview

This project aims to develop a model for predicting the project scores of applicants in a company's recruitment process. Applicants undergo a test covering various technical subjects and complete a project related to their field of employment. The goal is to estimate the project score based on test scores and other relevant information.

Problem Statement

The challenge involves creating a predictive model that accurately estimates an applicant's project score using their test results and other variables. The project focuses on exploring different machine learning algorithms, including MLP (Multi-Layer Perceptron) and regression techniques, for this purpose.

Desired Outcomes

The project involves several key steps:

  1. Data Analysis and Pre-processing: Initial exploration and preparation of the data for modeling.
  2. Model Development: Using MLP and regression algorithms to develop the predictive model.
  3. Model Evaluation and Optimization: Each step in the data analysis and model development is explained, including the rationale behind the chosen methods.
  4. Detailed Documentation: A PDF file containing a detailed report of the analysis, model development, and findings.

Repository Structure

  • HW2-1-v2.ipynb: Jupyter notebook containing the entire analysis and model development process.
  • Q1.csv: The dataset used for the analysis.
  • Report.pdf: A PDF file containing a detailed report of the analysis and findings.

Key Results

  • The comparison between LinearRegressionScore and MLPRegressorScore in terms of accuracy is depicted in the notebook.

    Linear Regression vs MLP Regressor Accuracy Comparison

  • Insights on the best parameters and structure for MLP and other machine learning algorithms that yield the desired results are discussed.

How to Use

  • Clone the repository.
  • Ensure you have Jupyter Notebook installed.
  • Run HW2-1-v2.ipynb to view the analysis and results.

About

Developed a model to predict project scores based on technical aptitude test results. Cleaned and normalized the data, then applied regression analysis to forecast grades.

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