תקציר
Given a finite random sample from a Markov chain environment, we select a predictor that minimizes a criterion function and refer to it as being calibrated to its environment. If its prediction error is not bounded by its criterion value, we say that the criterion fails. We define the predictor’s complexity to be the amount of uncertainty in detecting that the criterion fails given that it fails. We define a predictor’s stability to be the discrepancy between the average number of prediction errors that it makes on two random samples. We show that complexity is inversely proportional to the level of adaptivity of the calibrated predictor to its random environment. The calibrated predictor becomes less stable as its complexity increases or as its level of adaptivity decreases.
| שפה מקורית | אנגלית |
|---|---|
| כתב עת | Proceedings of Machine Learning Research |
| כרך | 84 |
| סטטוס פרסום | פורסם - 2018 |
| אירוע | 21st International Conference on Artificial Intelligence and Statistics, AISTATS 2018 - Playa Blanca, Lanzarote, Canary Islands, ספרד משך הזמן: 9 אפר׳ 2018 → 11 אפר׳ 2018 |
טביעת אצבע
להלן מוצגים תחומי המחקר של הפרסום 'On how complexity affects the stability of a predictor (Extended Abstract)'. יחד הם יוצרים טביעת אצבע ייחודית.פורמט ציטוט ביבליוגרפי
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