SOTAVerified

Time Series Analysis

Time Series Analysis is a statistical technique used to analyze and model time-based data. It is used in various fields such as finance, economics, and engineering to analyze patterns and trends in data over time. The goal of time series analysis is to identify the underlying patterns, trends, and seasonality in the data, and to use this information to make informed predictions about future values.

( Image credit: Autoregressive CNNs for Asynchronous Time Series )

Papers

Showing 20262050 of 6748 papers

TitleStatusHype
FreDo: Frequency Domain-based Long-Term Time Series Forecasting0
Forecasting Multilinear Data via Transform-Based Tensor Autoregression0
UMSNet: An Universal Multi-sensor Network for Human Activity Recognition0
Accelerating hydrodynamic simulations of urban drainage systems with physics-guided machine learning0
Forecasting of Non-Stationary Sales Time Series Using Deep Learning0
Signal Restoration and Channel Estimation for Channel Sounding with SDRs0
Optimizing Returns Using the Hurst Exponent and Q Learning on Momentum and Mean Reversion Strategies0
GraphAD: A Graph Neural Network for Entity-Wise Multivariate Time-Series Anomaly Detection0
Robust Constrained Multi-objective Evolutionary Algorithm based on Polynomial Chaos Expansion for Trajectory Optimization0
Interpretable Feature Engineering for Time Series Predictors using Attention Networks0
Deep Direct Discriminative Decoders for High-dimensional Time-series Data AnalysisCode0
Individual Topology Structure of Eye Movement Trajectories0
A Novel Markov Model for Near-Term Railway Delay Prediction0
Neural Additive Models for Nowcasting0
Forecasting COVID-19 Caseloads Using Unsupervised Embedding Clusters of Social Media Posts0
A Subspace Method for Time Series Anomaly Detection in Cyber-Physical SystemsCode0
RiskLoc: Localization of Multi-dimensional Root Causes by Weighted Risk0
Conformal Prediction with Temporal Quantile Adjustments0
Persistent Homology of Coarse Grained State Space Networks0
The Forecasting performance of the Factor model with Martingale Difference errors0
Anomaly Detection for Multivariate Time Series on Large-scale Fluid Handling Plant Using Two-stage Autoencoder0
Parallel bandit architecture based on laser chaos for reinforcement learning0
Jacobian Granger Causal Neural Networks for Analysis of Stationary and Nonstationary Data0
Inferring extended summary causal graphs from observational time series0
Extract Dynamic Information To Improve Time Series Modeling: a Case Study with Scientific Workflow0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1naive classifierF187.47Unverified
2GRU-D - APC (n = 1)F127.3Unverified
3GRU-APC (n = 1)F125.7Unverified
4GRU-DF122.5Unverified
5GRUF122.3Unverified
6GRU-SimpleF122.2Unverified
7GRU-MeanF122.1Unverified
#ModelMetricClaimedVerifiedStatus
1SepTr% Test Accuracy98.51Unverified
2ViT% Test Accuracy98.11Unverified
3FlexTCN-4% Test Accuracy97.73Unverified
4MatchboxNet% Test Accuracy97.4Unverified
5CKCNN (100k)% Test Accuracy95.27Unverified
6FlexTCN-6% Test Accuracy (Raw Data)91.73Unverified
#ModelMetricClaimedVerifiedStatus
1ResBiLSTMMAE0.13Unverified