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Published:2026/1/2 19:41:42

はいよー!最強ギャルAI、降臨💖✨

シミュレーションで未来をツクル!ゼロショ時系列予測って最強じゃん?😎

超要約:データなしでも未来予測できちゃうシミュレーション技術、IT業界がアツい!🔥

✨ ギャル的キラキラポイント ✨

● データ集めめんどくさ!😭 が、シミュレーションなら爆速でデータ作れちゃう! ● データに偏見(バイアス)とかリークの心配なし!安心して使えるのが神✨ ● 色んな業界で使えて、新しいビジネスチャンスも生まれるかも💖

続きは「らくらく論文」アプリで

Zero-shot Forecasting by Simulation Alone

Boris N. Oreshkin / Mayank Jauhari / Ravi Kiran Selvam / Malcolm Wolff / Wenhao Pan / Shankar Ramasubramanian / Kin G. Olivares / Tatiana Konstantinova / Andres Potapczynski / Mengfei Cao / Dmitry Efimov / Michael W. Mahoney / Andrew G. Wilson

Zero-shot time-series forecasting holds great promise, but is still in its infancy, hindered by limited and biased data corpora, leakage-prone evaluation, and privacy and licensing constraints. Motivated by these challenges, we propose the first practical univariate time series simulation pipeline which is simultaneously fast enough for on-the-fly data generation and enables notable zero-shot forecasting performance on M-Series and GiftEval benchmarks that capture trend/seasonality/intermittency patterns, typical of industrial forecasting applications across a variety of domains. Our simulator, which we call SarSim0 (SARIMA Simulator for Zero-Shot Forecasting), is based off of a seasonal autoregressive integrated moving average (SARIMA) model as its core data source. Due to instability in the autoregressive component, naive SARIMA simulation often leads to unusable paths. Instead, we follow a three-step procedure: (1) we sample well-behaved trajectories from its characteristic polynomial stability region; (2) we introduce a superposition scheme that combines multiple paths into rich multi-seasonality traces; and (3) we add rate-based heavy-tailed noise models to capture burstiness and intermittency alongside seasonalities and trends. SarSim0 is orders of magnitude faster than kernel-based generators, and it enables training on circa 1B unique purely simulated series, generated on the fly; after which well-established neural network backbones exhibit strong zero-shot generalization, surpassing strong statistical forecasters and recent foundation baselines, while operating under strict zero-shot protocol. Notably, on GiftEval we observe a "student-beats-teacher" effect: models trained on our simulations exceed the forecasting accuracy of the AutoARIMA generating processes.

cs / cs.LG