Explaining Bad Forecasts in Global Time Series Models

Author:

Rožanec JožeORCID,Trajkova ElenaORCID,Kenda KlemenORCID,Fortuna BlažORCID,Mladenić Dunja

Abstract

While increasing empirical evidence suggests that global time series forecasting models can achieve better forecasting performance than local ones, there is a research void regarding when and why the global models fail to provide a good forecast. This paper uses anomaly detection algorithms and explainable artificial intelligence (XAI) to answer when and why a forecast should not be trusted. To address this issue, a dashboard was built to inform the user regarding (i) the relevance of the features for that particular forecast, (ii) which training samples most likely influenced the forecast outcome, (iii) why the forecast is considered an outlier, and (iv) provide a range of counterfactual examples to understand how value changes in the feature vector can lead to a different outcome. Moreover, a modular architecture and a methodology were developed to iteratively remove noisy data instances from the train set, to enhance the overall global time series forecasting model performance. Finally, to test the effectiveness of the proposed approach, it was validated on two publicly available real-world datasets.

Funder

Horizon 2020 Framework Programme

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference133 articles.

1. Think globally, act locally: A deep neural network approach to high-dimensional time series forecasting;Sen;arXiv,2019

2. Machine learning strategies for time series forecasting;Bontempi,2012

3. Global models for time series forecasting: A simulation study;Hewamalage;arXiv,2020

4. Forecasting: Theory and practice;Petropoulos;arXiv,2020

5. The M4 Competition: 100,000 time series and 61 forecasting methods

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