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Published:2025/12/26 15:36:04

ビットコイン予測、流動性で精度爆上がり!💰✨ (超要約: ビットコイン価格を流動性データで予想、精度UP!)

🌟 ギャル的キラキラポイント✨ ● ビットコインの価格、過去データだけじゃなくて、世界の経済状況(流動性)も考慮するって、賢すぎ😳! ● TimeXer Transformerっていう最新技術で、長期的な予測もバッチリなんだって!未来が見える~🔮 ● 70日先の価格予測で、精度が89%も上がったって!これ、もう神レベルじゃん?🤩


詳細解説いくよ~!

背景 ビットコインの価格って、めっちゃ変動するじゃん? だから、正確に予測するのって超ムズいんだよね🥺 過去のデータだけじゃ限界があるから、もっと色んな情報が必要なの!

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Expert System for Bitcoin Forecasting: Integrating Global Liquidity via TimeXer Transformers

Sravan Karthick T

Bitcoin price forecasting is characterized by extreme volatility and non-stationarity, often defying traditional univariate time-series models over long horizons. This paper addresses a critical gap by integrating Global M2 Liquidity, aggregated from 18 major economies, as a leading exogenous variable with a 12-week lag structure. Using the TimeXer architecture, we compare a liquidity-conditioned forecasting model (TimeXer-Exog) against state-of-the-art benchmarks including LSTM, N-BEATS, PatchTST, and a standard univariate TimeXer. Experiments conducted on daily Bitcoin price data from January 2020 to August 2025 demonstrate that explicit macroeconomic conditioning significantly stabilizes long-horizon forecasts. At a 70-day forecast horizon, the proposed TimeXer-Exog model achieves a mean squared error (MSE) 1.08e8, outperforming the univariate TimeXer baseline by over 89 percent. These results highlight that conditioning deep learning models on global liquidity provides substantial improvements in long-horizon Bitcoin price forecasting.

cs / cs.LG / cs.AI