Metadata
Title
Learning With Limited and Partial Data
Category
general
UUID
9a22b062ff4140e7999111790baf58e0
Source URL
https://wsai.iitm.ac.in/themes/learning-with-limited-and-partial-data/
Parent URL
https://wsai.iitm.ac.in/research/
Crawl Time
2026-03-17T07:14:57+00:00
Rendered Raw Markdown
# Learning With Limited and Partial Data

**Source**: https://wsai.iitm.ac.in/themes/learning-with-limited-and-partial-data/
**Parent**: https://wsai.iitm.ac.in/research/

- [Home](https://wsai.iitm.ac.in/)
- [Research Themes](https://wsai.iitm.ac.in/themes/)
- [Learning With Limited and Partial Data](#)

## Learning With Limited and Partial Data

Tags

[data science](https://wsai.iitm.ac.in/tags/data-science)
[semi supervised learning](https://wsai.iitm.ac.in/tags/semi-supervised-learning)

When data science solutions are deployed in practice, seldom do the conditions on the ground match the theoretical assumptions of the algorithms. In this project, we look at algorithms and approaches that can operate with very limited data, with only a partial description available either due to design or systemic issues. We will also tackle several issues such as learning with partial trajectory (or temporal) data, learning with systematic label noise, and learning requiring active exploration of the data space.