Classify Rab proteins (GTPases) using ML approach

Revision as of 12:55, 3 June 2024 by Biomath2024 2 (talk | contribs) (Created page with "Our project aimed to build a classifier for the Rab proteins. We tried 3 machine learning methods: k nearest neighbour, decision tree, random forest. To use them We translated...")
(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)

Our project aimed to build a classifier for the Rab proteins. We tried 3 machine learning methods: k nearest neighbour, decision tree, random forest. To use them We translated our amino acid sequences (source Tracy database of Fassauer Lab) by extracting features. We trained our model then tested its performance. We optimised our model with cross validation, over/undersampling to get an even distribution and by adding a non rab group. The best performing model was KNN with k=11 using the CKSAAP feature.