Partial multivariate transformer as a tool for cryptocurrencies time series prediction
By: Andrzej Tokajuk, Jarosław A. Chudziak
Potential Business Impact:
Predicts crypto prices better, but doesn't guarantee profit.
Forecasting cryptocurrency prices is hindered by extreme volatility and a methodological dilemma between information-scarce univariate models and noise-prone full-multivariate models. This paper investigates a partial-multivariate approach to balance this trade-off, hypothesizing that a strategic subset of features offers superior predictive power. We apply the Partial-Multivariate Transformer (PMformer) to forecast daily returns for BTCUSDT and ETHUSDT, benchmarking it against eleven classical and deep learning models. Our empirical results yield two primary contributions. First, we demonstrate that the partial-multivariate strategy achieves significant statistical accuracy, effectively balancing informative signals with noise. Second, we experiment and discuss an observable disconnect between this statistical performance and practical trading utility; lower prediction error did not consistently translate to higher financial returns in simulations. This finding challenges the reliance on traditional error metrics and highlights the need to develop evaluation criteria more aligned with real-world financial objectives.
Similar Papers
Auditing Algorithmic Bias in Transformer-Based Trading
Machine Learning (CS)
Finds money-predicting computer favors slow-moving prices.
Transformer-based approach for Ethereum Price Prediction Using Crosscurrency correlation and Sentiment Analysis
Machine Learning (CS)
Predicts crypto prices using news and other coins.
Probabilistic Forecasting Cryptocurrencies Volatility: From Point to Quantile Forecasts
Statistical Finance
Predicts crypto price swings more accurately.