The AR-Sieve Bootstrap (ARSB) can create more diverse trees in Random Forest, leading to improved forecasting accuracy compared to other bootstrap strategies, especially for time series with a dominant autoregressive component.
The core message of this article is to propose a coherent forecasting methodology for integer-valued time series data using the recently introduced NoGeAR(1) model, and to demonstrate its efficacy through simulation studies and real-data applications.
Effective visualization techniques can provide valuable insights into time series data, enabling better understanding of trends, patterns, and relationships between variables.
시계열 데이터의 추세와 의존 구조를 동시에 모델링하는 새로운 딥러닝 기반 접근법을 제시한다.
The authors propose a deep learning-based approach, called DeepVARwT, for modeling and forecasting multivariate time series with trends. The method simultaneously estimates the trend and the dependence structure using a Long Short-Term Memory (LSTM) network and a vector autoregressive (VAR) model.
A feature-based information-theoretic approach can outperform traditional signal-based methods in detecting long-timescale pairwise interactions between time series, especially in scenarios with short time-series lengths, high noise levels, and long interaction timescales.
CARLA is a novel two-stage self-supervised contrastive representation learning approach that effectively detects anomalies in time series data by learning discriminative representations that distinguish normal and anomalous patterns.
TimeCSL is an end-to-end system that leverages unsupervised contrastive learning of general shapelets to enable flexible and interpretable time series analysis across various tasks such as classification, clustering, and anomaly detection.
The core message of this paper is to propose PrivShape, a trie-based mechanism under user-level local differential privacy (LDP) to effectively extract frequent shapes from time series data while preserving privacy.
TSAP, a novel self-tuning self-supervised framework, can automatically select the appropriate anomaly type and tune the associated continuous hyperparameters to effectively detect diverse time series anomalies without any labeled data.