TITLE: Training on Machine Learning and Artificial Neural Networks (ANNs) in Real Estate Price Prediction

Course Objectives:

By the end of this training, participants will be able to:

  • To introduce participants to machine learning and artificial neural networks (ANNs) in the context of real estate price prediction.
  • To provide a foundational understanding of key mathematical concepts underlying machine learning and optimization techniques.
  • To explore the practical applications of ML and ANNs in predicting real estate prices.
  • To enable participants to evaluate and compare different predictive models.

 

Target Audience:

  • Real estate professionals interested in data-driven decision making.
  • Data scientists and analysts focusing on real estate markets.
  • Graduate students and researchers in real estate economics and related fields.
  • Professionals with a basic understanding of statistics and linear algebra.

 

Learning Outcomes:

  1. Understand the basic principles and methodologies of machine learning and ANNs.
  2. Apply gradient descent and optimization techniques to improve model performance.
  3. Analyze and preprocess real estate data for predictive modeling.
  4. Develop and evaluate regression and ANN models for real estate price prediction.
  5. Understand the theoretical underpinnings of model training and optimization.