Time series forecasting is a fundamental task in various domains, including environmental monitoring, finance, and healthcare. State-of-the-art forecasting models typically assume that time series are uniformly sampled. However, in real-world scenarios, data is often collected at irregular intervals and with missing values, due to sensor failures or network issues. This makes traditional forecasting approaches unsuitable. In this paper, we introduce ISTF (Irregular Sequence Transformer Forecasting), a novel transformer-based architecture designed for forecasting irregularly sampled multivariate time series (MTS). ISTF leverages exogenous variables as contextual information to enhance the prediction of a single target variable. The architecture first regularizes the MTS on a fixed temporal scale, keeping track of missing values. Then, a dedicated embedding strategy, based on a local and global attention mechanism, aims at capturing dependencies between timestamps, sources and missing values. We evaluate ISTF on two real-world datasets, FrenchPiezo and USHCN. The experimental results demonstrate that ISTF outperforms competing approaches in forecasting accuracy while remaining computationally efficient.

Forecasting Irregularly Sampled Time Series with Transformer Encoders / Benassi, R.; Del Buono, F.; Guiduzzi, G.; Guerra, F.. - 16020:(2026), pp. 201-217. ( European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases, ECML PKDD 2025 prt 2025) [10.1007/978-3-662-72243-5_12].

Forecasting Irregularly Sampled Time Series with Transformer Encoders

Benassi R.;Del Buono F.;Guiduzzi G.;Guerra F.
2026

Abstract

Time series forecasting is a fundamental task in various domains, including environmental monitoring, finance, and healthcare. State-of-the-art forecasting models typically assume that time series are uniformly sampled. However, in real-world scenarios, data is often collected at irregular intervals and with missing values, due to sensor failures or network issues. This makes traditional forecasting approaches unsuitable. In this paper, we introduce ISTF (Irregular Sequence Transformer Forecasting), a novel transformer-based architecture designed for forecasting irregularly sampled multivariate time series (MTS). ISTF leverages exogenous variables as contextual information to enhance the prediction of a single target variable. The architecture first regularizes the MTS on a fixed temporal scale, keeping track of missing values. Then, a dedicated embedding strategy, based on a local and global attention mechanism, aims at capturing dependencies between timestamps, sources and missing values. We evaluate ISTF on two real-world datasets, FrenchPiezo and USHCN. The experimental results demonstrate that ISTF outperforms competing approaches in forecasting accuracy while remaining computationally efficient.
2026
European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases, ECML PKDD 2025
prt
2025
16020
201
217
Benassi, R.; Del Buono, F.; Guiduzzi, G.; Guerra, F.
Forecasting Irregularly Sampled Time Series with Transformer Encoders / Benassi, R.; Del Buono, F.; Guiduzzi, G.; Guerra, F.. - 16020:(2026), pp. 201-217. ( European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases, ECML PKDD 2025 prt 2025) [10.1007/978-3-662-72243-5_12].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1391568
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