/NYAirbnb-Machine-Learning

ML price prediction and cluster analysis on Kaggle competition NY Airbnb open data. Linear regression, Decision trees, Random Forest, Ranger RF, Neural Networks, K-mean, PCA, Hierarchical Clustering

Primary LanguageRGNU General Public License v3.0GPL-3.0

Statistical-Learning-Project

Exam

The exam consists in two assignments, one on the first part(regression, tree, neural nets) and the second part (unsupervised learning). For both you must prepare a writing report using one or more techniques and comparing their performance on one or more data set chosen by the student. A brief oral presentation of the reports will be asked.

Each report must contain:

  • short abstract: what are your going to present in the report
  • statement of the problem/goal of the analysis and description of the data set(s)
  • list of three to five findings/keypoints
  • the analysis with wise commentary
  • (optional) theoretical background of the used methods
  • conclusions(should include the findings/keypoints)
  • the Appendix, containing all the R code

Notice:

  • The paper length is irrelevant provided that the content is correct.
  • No R code in the main text. The R code must be confined to the appendix
  • The report should be prepared in PDF only