SOTAVerified

Time Series Clustering

Time Series Clustering is an unsupervised data mining technique for organizing data points into groups based on their similarity. The objective is to maximize data similarity within clusters and minimize it across clusters. Time-series clustering is often used as a subroutine of other more complex algorithms and is employed as a standard tool in data science for anomaly detection, character recognition, pattern discovery, visualization of time series.

Source: Comprehensive Process Drift Detection with Visual Analytics

Papers

Showing 4150 of 113 papers

TitleStatusHype
Deep Temporal Contrastive Clustering0
Uncertainty-DTW for Time Series and SequencesCode0
Large-scale unsupervised spatio-temporal semantic analysis of vast regions from satellite images sequences0
Time Series Clustering with an EM algorithm for Mixtures of Linear Gaussian State Space ModelsCode0
AUTOSHAPE: An Autoencoder-Shapelet Approach for Time Series Clustering0
Interpretable Time Series Clustering Using Local Explanations0
K-ARMA Models for Clustering Time Series Data0
Smart Data Collection System for Brownfield CNC Milling Machines: A New Benchmark Dataset for Data-Driven Machine MonitoringCode1
A Review and Evaluation of Elastic Distance Functions for Time Series Clustering0
Towards a Design Framework for TNN-Based Neuromorphic Sensory Processing Units0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1SOM-VAE-probNMI (physiology_6_hours)0.05Unverified
2k-meansNMI (physiology_6_hours)0.04Unverified
3SOM-VAENMI (physiology_6_hours)0.04Unverified