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 forecasting and anomaly detection


Generating Fine-Grained Causality in Climate Time Series Data for Forecasting and Anomaly Detection

Fu, Dongqi, Zhu, Yada, Tong, Hanghang, Weldemariam, Kommy, Bhardwaj, Onkar, He, Jingrui

arXiv.org Artificial Intelligence

Understanding the causal interaction of time series variables can contribute to time series data analysis for many real-world applications, such as climate forecasting and extreme weather alerts. However, causal relationships are difficult to be fully observed in real-world complex settings, such as spatial-temporal data from deployed sensor networks. Therefore, to capture fine-grained causal relations among spatial-temporal variables for further a more accurate and reliable time series analysis, we first design a conceptual fine-grained causal model named TBN Granger Causality, which adds time-respecting Bayesian Networks to the previous time-lagged Neural Granger Causality to offset the instantaneous effects. Second, we propose an end-to-end deep generative model called TacSas, which discovers TBN Granger Causality in a generative manner to help forecast time series data and detect possible anomalies during the forecast. For evaluations, besides the causality discovery benchmark Lorenz-96, we also test TacSas on climate benchmark ERA5 for climate forecasting and the extreme weather benchmark of NOAA for extreme weather alerts.


Large Language Models for Forecasting and Anomaly Detection: A Systematic Literature Review

Su, Jing, Jiang, Chufeng, Jin, Xin, Qiao, Yuxin, Xiao, Tingsong, Ma, Hongda, Wei, Rong, Jing, Zhi, Xu, Jiajun, Lin, Junhong

arXiv.org Artificial Intelligence

This systematic literature review comprehensively examines the application of Large Language Models (LLMs) in forecasting and anomaly detection, highlighting the current state of research, inherent challenges, and prospective future directions. LLMs have demonstrated significant potential in parsing and analyzing extensive datasets to identify patterns, predict future events, and detect anomalous behavior across various domains. However, this review identifies several critical challenges that impede their broader adoption and effectiveness, including the reliance on vast historical datasets, issues with generalizability across different contexts, the phenomenon of model hallucinations, limitations within the models' knowledge boundaries, and the substantial computational resources required. Through detailed analysis, this review discusses potential solutions and strategies to overcome these obstacles, such as integrating multimodal data, advancements in learning methodologies, and emphasizing model explainability and computational efficiency. Moreover, this review outlines critical trends that are likely to shape the evolution of LLMs in these fields, including the push toward real-time processing, the importance of sustainable modeling practices, and the value of interdisciplinary collaboration. Conclusively, this review underscores the transformative impact LLMs could have on forecasting and anomaly detection while emphasizing the need for continuous innovation, ethical considerations, and practical solutions to realize their full potential.


DSC Webinar Series: No-code ML for Forecasting and Anomaly Detection - DataScienceCentral.com

#artificialintelligence

In this latest Data Science Central webinar, we will introduce and demonstrate how you can perform common time-series Machine Learning tasks such as Forecasting and Anomaly Detection, directly within the Influx platform without the need to use external tools, languages and services During this webinar, you will learn: How to initiate Machine Learning tasks directly… Read More »DSC Webinar Series: No-code ML for Forecasting and Anomaly Detection


DSC Webinar Series: No-code ML for Forecasting and Anomaly Detection

#artificialintelligence

In this latest Data Science Central webinar, we will introduce and demonstrate how you can perform common time-series Machine Learning tasks such as Forecastin…