Clustering and Semi-Supervised Classification for Clickstream Data via Mixture Models

02/13/2018
by   Michael P. B. Gallaugher, et al.
0

Finite mixture models have been used for unsupervised learning for over 60 years, and their use within the semi-supervised paradigm is becoming more commonplace. Clickstream data is one of the various emerging data types that demands particular attention because there is a notable paucity of statistical learning approaches currently available. A mixture of first order continuous time Markov models is introduced for unsupervised and semi-supervised learning of clickstream data. This approach assumes continuous time, which distinguishes it from existing mixture model-based approaches; practically, this allows account to be taken of the amount of time each user spends on each website. The approach is evaluated, and compared to the discrete time approach, using simulated and real data.

READ FULL TEXT
research
07/13/2013

Fractionally-Supervised Classification

Traditionally, there are three species of classification: unsupervised, ...
research
11/25/2019

Detecting Unknown Behaviors by Pre-defined Behaviours: An Bayesian Non-parametric Approach

An automatic mouse behavior recognition system can considerably reduce t...
research
07/14/2018

Adversarially Learned Mixture Model

The Adversarially Learned Mixture Model (AMM) is a generative model for ...
research
04/21/2021

Mixture Models for the Analysis, Edition, and Synthesis of Continuous Time Series

This chapter presents an overview of techniques used for the analysis, e...
research
11/09/2017

A random matrix analysis and improvement of semi-supervised learning for large dimensional data

This article provides an original understanding of the behavior of a cla...
research
02/13/2021

Graph Convolution for Semi-Supervised Classification: Improved Linear Separability and Out-of-Distribution Generalization

Recently there has been increased interest in semi-supervised classifica...

Please sign up or login with your details

Forgot password? Click here to reset