Clustering Non-Stationary Data Streams with Online Deep Learning
Abstract
With more devices connected, sensor data logged and people active in social networks, the trend towards
working with dynamic data is clear. The number of applications where it becomes essential to perform real time
analysis on data streams grows accordingly, each with its own challenges. From this area of data stream analysis
we benchmark the performance of current state of the art clustering algorithms: CluStream, DenStream and
ClusTree. We also adapt a Variational Autoencoder to perform in the context of non-stationary data streams
and assess its generative capabilities for dimensionality reduction. From this limited lab experiment we show
that while there is a significant improvement in the clustering accuracy of high dimensional datasets after a
dimensionality reduction with a Variational Autoencoder, not all clustering algorithms benefit in the same
way from it. Additionally we show that regardless of the clustering algorithm, no relevant improvement in the
purity of the clusters could be obtained after the dimensionality reduction.
Degree
Student essay
Collections
View/ Open
Date
2016-06-30Author
Hontabat, Aurélien
Rising, Magnus
Keywords
Clustering
Data Streams
Deep Learning
Dimensionality Reduction
Language
eng