Sdfs: A Standardization Technique for Nonparametric Analysis | iLSET

Paper Detail

Title

Sdfs: A Standardization Technique for Nonparametric Analysis

Authors

Assist. Prof. Dr. Avimanyou Vatsa, Fairleigh Dickinson University, United States of America

Abstract

Due to availability of computational tools for data acquisition, it is very easy to collect many dimensions from an object. Nevertheless, data acquisition from an object in an experiment may have a low number of dimensions. The analysis of low dimensional data has break-through role. But raw and sparse nature of dataset imposes new challenges and requirements for data analysis due to their special and unique characteristics. In the process of overall characterization of low-dimensional data, the data pre-processing plays crucial role. One of the first processes is normalization and standardization process. Therefore, in this paper, I would like to propose novel standardization technique called SDFS (Standardization for Distribution Free Statistics) for nonparametric data analysis. This technique is robust for small sample size with missing values of data points, which commonly exist in real time experiments lead to sparse low-dimensional data. The comprehensive experimental evaluation shows that SDFS standardization is significantly outperforms on existing standardization methods.

 Keywords

low-dimensional data, standardization, clustering, nonparametric, sparse dataset  

Citation

Vatsa, A. (2020). Sdfs: A Standardization Technique for Nonparametric Analysis. In V. M. Bradley & I. Sahin (Eds.), Proceedings of iLSET 2020--International Conference on Life Sciences, Engineering and Technology (pp. 6-9). Monument, CO, USA: ISTES Organization. Retrieved 25 April 2024 from www.2020.ilset.net/proceedings/6/.

Links

Download Fulltext
Announcements

Web of Science - Conference Proceedings Citation Index (CPCI)

The proceedings of our collaborative conference, Proceedings of International Conference on Social and Education Sciences (IConSES)-2019, is selected by Web of Science for coverage in the Conference Proceedings Citation Index (CPCI). Proceedings of...

May 14, 2020

View details »

Annual Book Publication

The Studies on Engineering, Science and Technology 2020 (SonEST2020) is a peer-reviewed scholarly online book. The invited papers are reviewed by at least two international reviewers with expertise in the relevant subject area. The book is a refereed book and has a double-blind review. ...

March 14, 2020

View details »

Journal Publication

The participants have the opportunity to publish their full papers in the conference-linked journals (IJTES, IJTE, IJonSES, IJonEST, IJonSE). All sponsor journals are refereed journals and have a double-blind review process. Any manuscript submitted for consideration in publication in the spon...

March 14, 2020

View details »

Supported by
The University of New Orleans
Indiana University
Leiden University
Participating Countries

Abstracting/Indexing

The publications affiliated with ISTES Organization are indexed or listed by all or some of the following sources:

Sponsors