Free SKILL.md scraped from GitHub. Clone the repo or copy the file directly into your Claude Code skills directory.
npx versuz@latest install hiyenwong-ai-collection-collection-skills-continual-learning-characterizing-target-shiftgit clone https://github.com/hiyenwong/ai_collection.gitcp ai_collection/SKILL.MD ~/.claude/skills/hiyenwong-ai-collection-collection-skills-continual-learning-characterizing-target-shift/SKILL.md--- name: characterizing-target-shift description: "Online kernel regression effective target shift theory and correction. Proves online learning is equivalent to offline learning with shifted targets, derives label correction to achieve offline-optimal performance. Use when: online learning, continual learning with distribution shift, target shift correction, kernel regression analysis, EWA equivalence." --- # Characterizing and Correcting Effective Target Shift ## Core Insight Online kernel regression is mathematically equivalent to offline kernel regression with **shifted, inaccurate target outputs**. The online predictor only uses the strictly upper-triangular part of the Gram matrix (no access to future samples). ## Key Theorems **Theorem 3.2**: Online kernel regression ≡ offline kernel regression on corrected targets (X_n, Y_n^e) **Theorem 4.1**: Using corrected targets Y_n^c for online learning ≡ using original targets for offline learning. ## Practical Application For continual learning scenarios: 1. Identify target shift in your streaming data 2. Apply iterative target correction: Z_new = Y_new + (Y_new - f_on) * C_on + (f_off - Y_new) * C_off 3. C_on controls online error modulation; C_off injects offline structure ## Paper - Li & Hiratani, arXiv:2605.07886, 2026