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 51100 of 113 papers

TitleStatusHype
A Review and Evaluation of Elastic Distance Functions for Time Series Clustering0
Towards a Design Framework for TNN-Based Neuromorphic Sensory Processing Units0
TNN7: A Custom Macro Suite for Implementing Highly Optimized Designs of Neuromorphic TNNsCode0
Time Series Clustering for Grouping Products Based on Price and Sales Patterns0
Detecting CAN Masquerade Attacks with Signal Clustering Similarity0
Hydroclimatic time series features at multiple time scales0
Unsupervised Visual Time-Series Representation Learning and Clustering0
Coresets for Time Series Clustering0
PARIS: Personalized Activity Recommendation for Improving Sleep Quality0
Time Series Clustering for Human Behavior Pattern Mining0
SOMTimeS: Self Organizing Maps for Time Series Clustering and its Application to Serious Illness Conversations0
Massive feature extraction for explaining and foretelling hydroclimatic time series forecastability at the global scale0
Learning Representations for Incomplete Time Series ClusteringCode0
Granger Causality Based Hierarchical Time Series Clustering for State Estimation0
Identifying the module structure of swarms using a new framework of network-based time series clustering0
Unsupervised Clustering of Time Series Signals using Neuromorphic Energy-Efficient Temporal Neural Networks0
Hierarchical Clustering using Auto-encoded Compact Representation for Time-series Analysis0
Latent Space Semi-Supervised Time Series Data Clustering0
Algorithms for Learning Graphs in Financial MarketsCode0
k-means on Positive Definite Matrices, and an Application to Clustering in Radar Image SequencesCode0
Conditional Latent Block Model: a Multivariate Time Series Clustering Approach for Autonomous Driving ValidationCode0
Clustering Residential Electricity Consumption Data to Create Archetypes that Capture Household Behaviour in South AfricaCode0
A Benchmark Study on Time Series Clustering0
Deep Markov Spatio-Temporal FactorizationCode0
Autoencoder-based time series clustering with energy applications0
Dynamic clustering of time series data0
Motif Difference Field: A Simple and Effective Image Representation of Time Series for Classification0
Interpreting LSTM Prediction on Solar Flare Eruption with Time-series ClusteringCode0
A time resolved clustering method revealing longterm structures and their short-term internal dynamicsCode0
Clustering Time-Series by a Novel Slope-Based Similarity Measure Considering Particle Swarm Optimization0
Learning Representations for Time Series ClusteringCode0
Analysis of Hydrological and Suspended Sediment Events from Mad River Watershed using Multivariate Time Series Clustering0
Deep learning for clustering of multivariate clinical patient trajectories with missing valuesCode0
Early Predictions for Medical Crowdfunding: A Deep Learning Approach Using Diverse Inputs0
DPSOM: Deep Probabilistic Clustering with Self-Organizing MapsCode0
Actor-Critic Approach for Temporal Predictive Clustering0
N2D: (Not Too) Deep Clustering via Clustering the Local Manifold of an Autoencoded EmbeddingCode0
Linear Dynamics: Clustering without identificationCode0
Clustering piecewise stationary processes0
A self-organising eigenspace map for time series clustering0
Discovering patterns of online popularity from time seriesCode0
CRAD: Clustering with Robust Autocuts and DepthCode0
Time series clustering based on the characterisation of segment typologies0
Approximate Collapsed Gibbs Clustering with Expectation Propagation0
Clustering Macroeconomic Time Series0
SOM-VAE: Interpretable Discrete Representation Learning on Time SeriesCode0
Using Quantum Mechanics to Cluster Time Series0
Applicability and interpretation of the deterministic weighted cepstral distanceCode0
Forecasting Across Time Series Databases using Recurrent Neural Networks on Groups of Similar Series: A Clustering ApproachCode0
Discovering Playing Patterns: Time Series Clustering of Free-To-Play Game Data0
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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