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ドリフト後の再訓練のタイミング:ポストドリフトデータサイズの十分性に関するデータのみのテスト

arXiv cs.LG / 2026/3/11

Ideas & Deep AnalysisModels & Research

要点

  • 本論文は、急激なコンセプトドリフト後にモデルをいつ再訓練すべきか、また安定した再訓練に十分なポストドリフトデータの量はどれくらいかという課題に取り組んでいる。
  • CALIPERは、検出器やモデルに依存しない新しい方法で、重み付き局所回帰と代理誤差指標に基づくデータのみのテストを用いて、必要なポストドリフトデータサイズを推定する。
  • 本手法は、動的システムで生成されるストリームの状態依存性を識別し、局所性パラメータを用いた有効サンプルサイズ基準により十分性を判定する。
  • CALIPERは計算効率が高く、更新ごとの時間およびメモリ使用量が少なく、複数のデータセット、学習器、検出器において、最良の固定再訓練データサイズや逐次更新を上回るか同等の性能を示している。
  • 本手法は、ストリーミング学習におけるドリフト検出と適応のギャップを埋め、再訓練に必要なデータの十分性に対して原理的なアプローチを提供する。

Computer Science > Machine Learning

arXiv:2603.09024 (cs)
[Submitted on 9 Mar 2026]

Title:When to Retrain after Drift: A Data-Only Test of Post-Drift Data Size Sufficiency

View a PDF of the paper titled When to Retrain after Drift: A Data-Only Test of Post-Drift Data Size Sufficiency, by Ren Fujiwara and 2 other authors
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Abstract:Sudden concept drift makes previously trained predictors unreliable, yet deciding when to retrain and what post-drift data size is sufficient is rarely addressed. We propose CALIPER - a detector- and model-agnostic, data-only test that estimates the post-drift data size required for stable retraining. CALIPER exploits state dependence in streams generated by dynamical systems: we run a single-pass weighted local regression over the post-drift window and track a one-step proxy error as a function of a locality parameter $\theta$. When an effective sample size gate is satisfied, a monotonically non-increasing trend in this error with increasing a locality parameter indicates that the data size is sufficiently informative for retraining. We also provide a theoretical analysis of our method, and we show that the algorithm has a low per-update time and memory. Across datasets from four heterogeneous domains, three learner families, and two detectors, CALIPER consistently matches or exceeds the best fixed data size for retraining while incurring negligible overhead and often outperforming incremental updates. CALIPER closes the gap between drift detection and data-sufficient adaptation in streaming learning.
Comments:
Subjects: Machine Learning (cs.LG)
Cite as: arXiv:2603.09024 [cs.LG]
  (or arXiv:2603.09024v1 [cs.LG] for this version)
  https://doi.org/10.48550/arXiv.2603.09024
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arXiv-issued DOI via DataCite

Submission history

From: Ren Fujiwara [view email]
[v1] Mon, 9 Mar 2026 23:43:56 UTC (1,824 KB)
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