Data Science Asked by ddd on March 19, 2021
I am doing regression analysis on a data set with over 20000 samples using scikit learn. Trying to use regression models to fit three features to label which is a score ranges from 0 to 10. Problem is only 100 of the data has a known score. The rest are all unlabeled.
Semi-supervised learning seems to work well with classification problems using methods like label-propagation. I wonder if it works for regression problems as well. If so, where can I find any examples for labeling unlabeled data based on similarity?
I also had a similar dataset, I came across covarite shift technique of Machine Learning. As you have changes in the distribution of the input variables in training data. Though the predictions might also be wrong using this.
Answered by Anmol Kumar on March 19, 2021
Get help from others!
Recent Answers
Recent Questions
© 2024 TransWikia.com. All rights reserved. Sites we Love: PCI Database, UKBizDB, Menu Kuliner, Sharing RPP