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 45514600 of 6748 papers

TitleStatusHype
Learning Disentangled Representations of Satellite Image Time Series0
Learning dynamic Boltzmann machines with spike-timing dependent plasticity0
Learning Dynamics and Structure of Complex Systems Using Graph Neural Networks0
Learning Ensembles of Anomaly Detectors on Synthetic Data0
Learning Financial Networks with High-frequency Trade Data0
Learning from Multiple Time Series: A Deep Disentangled Approach to Diversified Time Series Forecasting0
Learning from multivariate discrete sequential data using a restricted Boltzmann machine model0
Learning from weakly dependent data under Dobrushin's condition0
Learning Generalized Causal Structure in Time-series0
Learning Hamiltonian dynamics by reservoir computer0
Learning Heteroscedastic Models by Convex Programming under Group Sparsity0
Learning Hidden Markov Models Using Conditional Samples0
Learning Hidden Patterns from Patient Multivariate Time Series Data Using Convolutional Neural Networks: A Case Study of Healthcare Cost Prediction0
Learning Individualized Cardiovascular Responses from Large-scale Wearable Sensors Data0
Learning in Feedforward Neural Networks Accelerated by Transfer Entropy0
Learning Interpretable Deep State Space Model for Probabilistic Time Series Forecasting0
Learning Latent Causal Dynamics0
Learning latent causal relationships in multiple time series0
Learning Leading Indicators for Time Series Predictions0
Learning Linear Dynamical Systems with High-Order Tensor Data for Skeleton based Action Recognition0
Learning Mixtures of Linear Dynamical Systems0
Learning Mixture Structure on Multi-Source Time Series for Probabilistic Forecasting0
Learning Network of Multivariate Hawkes Processes: A Time Series Approach0
Learning non-Gaussian Time Series using the Box-Cox Gaussian Process0
Learning Nonlinear Brain Dynamics: van der Pol Meets LSTM0
Learning Non-Stationary Time-Series with Dynamic Pattern Extractions0
Learning Over Long Time Lags0
Learning Partially Known Stochastic Dynamics with Empirical PAC Bayes0
Learning PDE Solution Operator for Continuous Modeling of Time-Series0
Learning Predictive and Interpretable Timeseries Summaries from ICU Data0
Learning Probabilistic Intersection Traffic Models for Trajectory Prediction0
Learning Probability Distributions in Macroeconomics and Finance0
Learning Quantile Functions without Quantile Crossing for Distribution-free Time Series Forecasting0
Learning Quantities of Interest from Dynamical Systems for Observation-Consistent Inversion0
Learning Representation for Anomaly Detection of Vehicle Trajectories0
Learning Representations for Incomplete Time Series Clustering0
Learning representations for multivariate time series with missing data using Temporal Kernelized Autoencoders0
Learning Representations from Healthcare Time Series Data for Unsupervised Anomaly Detection0
Learning Representations from Imperfect Time Series Data via Tensor Rank Regularization0
Learning Representations of Missing Data for Predicting Patient Outcomes0
Learning Representations Using Complex-Valued Nets0
Learning Representative Temporal Features for Action Recognition0
Learning Reservoir Dynamics with Temporal Self-Modulation0
Learning Sentinel-2 Spectral Dynamics for Long-Run Predictions Using Residual Neural Networks0
Learning State Transition Rules from Hidden Layers of Restricted Boltzmann Machines0
Learning Stationary Time Series using Gaussian Processes with Nonparametric Kernels0
Learning summary features of time series for likelihood free inference0
Learning Temporal Dependence from Time-Series Data with Latent Variables0
Learning temporal evolution of probability distribution with Recurrent Neural Network0
Learning the Conditional Independence Structure of Stationary Time Series: A Multitask Learning Approach0
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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