AA-Forecast: Anomaly-Aware Forecast for Extreme Events
- URL: http://arxiv.org/abs/2208.09933v1
- Date: Sun, 21 Aug 2022 17:51:46 GMT
- Title: AA-Forecast: Anomaly-Aware Forecast for Extreme Events
- Authors: Ashkan Farhangi, Jiang Bian, Arthur Huang, Haoyi Xiong, Jun Wang,
Zhishan Guo
- Abstract summary: Time series models often deal with extreme events and anomalies, both prevalent in real-world datasets.
We propose an anomaly-aware forecast framework that leverages the previously seen effects of anomalies to improve its prediction accuracy.
Specifically, the framework automatically extracts anomalies and incorporates them through an attention mechanism to increase its accuracy for future extreme events.
- Score: 25.89754218631525
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Time series models often deal with extreme events and anomalies, both
prevalent in real-world datasets. Such models often need to provide careful
probabilistic forecasting, which is vital in risk management for extreme events
such as hurricanes and pandemics. However, it is challenging to automatically
detect and learn to use extreme events and anomalies for large-scale datasets,
which often require manual effort. Hence, we propose an anomaly-aware forecast
framework that leverages the previously seen effects of anomalies to improve
its prediction accuracy during and after the presence of extreme events.
Specifically, the framework automatically extracts anomalies and incorporates
them through an attention mechanism to increase its accuracy for future extreme
events. Moreover, the framework employs a dynamic uncertainty optimization
algorithm that reduces the uncertainty of forecasts in an online manner. The
proposed framework demonstrated consistent superior accuracy with less
uncertainty on three datasets with different varieties of anomalies over the
current prediction models.
Related papers
- Unsupervised Time Series Anomaly Prediction with Importance-based Generative Contrastive Learning [13.082961588929606]
Time series anomaly prediction plays an essential role in many real-world scenarios, such as environmental prevention and prompt maintenance of cyber-physical systems.
Existing time series anomaly prediction methods mainly require supervised training with plenty of manually labeled data.
In this paper, we study a novel problem of unsupervised time series anomaly prediction.
arXiv Detail & Related papers (2024-10-22T10:46:36Z) - Future-Guided Learning: A Predictive Approach To Enhance Time-Series Forecasting [4.866362841501992]
We introduce Future-Guided Learning, an approach that enhances time-series event forecasting.
Our approach involves two models: a detection model that analyzes future data to identify critical events and a forecasting model that predicts these events based on present data.
When discrepancies arise between the forecasting and detection models, the forecasting model undergoes more substantial updates.
arXiv Detail & Related papers (2024-10-19T21:22:55Z) - Learning Graph Structures and Uncertainty for Accurate and Calibrated Time-series Forecasting [65.40983982856056]
We introduce STOIC, that leverages correlations between time-series to learn underlying structure between time-series and to provide well-calibrated and accurate forecasts.
Over a wide-range of benchmark datasets STOIC provides 16% more accurate and better-calibrated forecasts.
arXiv Detail & Related papers (2024-07-02T20:14:32Z) - ExtremeCast: Boosting Extreme Value Prediction for Global Weather Forecast [57.6987191099507]
We introduce Exloss, a novel loss function that performs asymmetric optimization and highlights extreme values to obtain accurate extreme weather forecast.
We also introduce ExBooster, which captures the uncertainty in prediction outcomes by employing multiple random samples.
Our solution can achieve state-of-the-art performance in extreme weather prediction, while maintaining the overall forecast accuracy comparable to the top medium-range forecast models.
arXiv Detail & Related papers (2024-02-02T10:34:13Z) - Performative Time-Series Forecasting [71.18553214204978]
We formalize performative time-series forecasting (PeTS) from a machine-learning perspective.
We propose a novel approach, Feature Performative-Shifting (FPS), which leverages the concept of delayed response to anticipate distribution shifts.
We conduct comprehensive experiments using multiple time-series models on COVID-19 and traffic forecasting tasks.
arXiv Detail & Related papers (2023-10-09T18:34:29Z) - Multi-axis Attentive Prediction for Sparse EventData: An Application to
Crime Prediction [16.654369376687296]
We present a purely attentional approach to extract both short-term dynamics and long-term semantics of event propagation through two observation angles.
The proposed contrastive learning objective significantly enhances the MAPSED's ability to capture semantics and dynamics of events.
arXiv Detail & Related papers (2021-10-05T02:38:46Z) - RNN with Particle Flow for Probabilistic Spatio-temporal Forecasting [30.277213545837924]
Many classical statistical models often fall short in handling the complexity and high non-linearity present in time-series data.
In this work, we consider the time-series data as a random realization from a nonlinear state-space model.
We use particle flow as the tool for approximating the posterior distribution of the states, as it is shown to be highly effective in complex, high-dimensional settings.
arXiv Detail & Related papers (2021-06-10T21:49:23Z) - When in Doubt: Neural Non-Parametric Uncertainty Quantification for
Epidemic Forecasting [70.54920804222031]
Most existing forecasting models disregard uncertainty quantification, resulting in mis-calibrated predictions.
Recent works in deep neural models for uncertainty-aware time-series forecasting also have several limitations.
We model the forecasting task as a probabilistic generative process and propose a functional neural process model called EPIFNP.
arXiv Detail & Related papers (2021-06-07T18:31:47Z) - Learning Interpretable Deep State Space Model for Probabilistic Time
Series Forecasting [98.57851612518758]
Probabilistic time series forecasting involves estimating the distribution of future based on its history.
We propose a deep state space model for probabilistic time series forecasting whereby the non-linear emission model and transition model are parameterized by networks.
We show in experiments that our model produces accurate and sharp probabilistic forecasts.
arXiv Detail & Related papers (2021-01-31T06:49:33Z) - Ambiguity in Sequential Data: Predicting Uncertain Futures with
Recurrent Models [110.82452096672182]
We propose an extension of the Multiple Hypothesis Prediction (MHP) model to handle ambiguous predictions with sequential data.
We also introduce a novel metric for ambiguous problems, which is better suited to account for uncertainties.
arXiv Detail & Related papers (2020-03-10T09:15:42Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.