Statistics Project Topics & Materials

Robust Detection Of Multiple Outliers In A Multivariate Data Set

ABSTRACT
Many methods have been developed for detecting multiple outliers in a single multivariate sample, but very few for the case where there may be groups in the data set. We propose a method of simultaneously determining groups (as in cluster analysis) and detecting outliers, which are points that are distant from every group. Our method is an adaptation of the BACON algorithm proposed by Billor, Hadi and Velleman for the robust detection of multiple outliers in a single group of multivariate data. There are two versions of our method, depending on whether or not the groups can be assumed to have equal covariance matrices. The effectiveness of the method is illustrated by its application to two real data sets and further shown by a simulation study for different sample sizes and dimensions for 2 and 3 groups, with and without planted outliers in the data. When the number of groups is not known in advance, the algorithm could be used as a robust method of cluster analysis, by running it for various numbers of groups and choosing the best solution.

Related Post

Recent Posts

Implementation of an Academic Research Paper Plagiarism Checker System

ABSTRACT The problem of plagiarism in Africa generally is growing at an alarming rate, especially… Read More

2 years ago

How to Write a Conclusion for your Final Year Project

In order to successfully complete a project for your senior year, you will need to… Read More

2 years ago

Google scholar project topics

List of Google scholar project topics Google Scholar is a convenient tool that enables users… Read More

2 years ago

How To Recover Your Money From COTP

If you lost money in a COTPS Ponzi scheme, you should talk to a lawyer… Read More

3 years ago

The Growth And Popularity Of Naira Marley Songs Among Students

EXECUTIVE SUMMARY This synopsis is on the Growth and popularity of Naire Marley songs amongst… Read More

3 years ago