Contributor Verification on Articles (Kaggle In-Class Competition, CP219)

Goal: Given an article’s metadata and text descriptors plus a candidate contributor ID, predict if the candidate is a true contributor. Half of the test cases are positive and half negative. How it works (high level): Parse sparse textual indicators from titles/abstracts and combine with metadata (year, venue, known contributors). Train supervised classifiers to output 0/1 for “candidate is a true contributor.” Submit predictions to Kaggle in the required CSV format (id,predictions) for 2,000 test rows. Evaluation is classification accuracy; leaderboard uses a public/private split to avoid overfitting.

PROJECTS

Rahul kumar IISc- bangalore

10/10/20251 min read