Computational Techniques To Recover Missing Data From Gene Expression Data

Abstract

Microarray gene expression data generally suffers from missing value problem due to a variety of experimental reasons. Since the missing data points can adversely affect downstream analysis, many algorithms have been proposed to impute missing values. In this survey, we provide a comprehensive review of existing missing value imputation algorithms, focusing on their underlying algorithmic techniques and how they utilize local or global information from within the data, or their use of domain knowledge during imputation. In addition, we describe how the imputation results can be validated and the different ways to assess the performance of different imputation algorithms, as well as a discussion on some possible future research directions. It is hoped that this review will give the readers a good understanding of the current development in this field and inspire them to come up with the next generation of imputation algorithms.

Authors and Affiliations

Hemalatha. S, M. Hemalatha

Keywords

Related Articles

A Review on Security of Data Using PGP Algorithm along with Steganography

Now a day due to rapid increase in number of internet user’s data security is one of the prime concerns of internetwork communication. Several techniques have been evolved to prevent data from unauthorized access. Two f...

Understanding the Convolutional Neural Network & it’s Research Aspects in Deep Learning

Convolutional Neural Network (CNN) is the most important Deep Neural Network (DNN) architecture to implement the Deep Learning’s application of data and pattern representation in an effective and efficient manner. It us...

Optimization of Backup Storage by Reducing Fragmentation in Distributed Environment

In modern backup systems, Deduplication plays a vital role in the elimination of duplicate data in a storage system which one of the technique to reduce storage costs. Deduplication divides a backup stream into variable...

Improving Quality of a Video through an Optimization Technique

This paper presents a novel approach for video enhancement by the fusion approach using Edge weighted optimization concept. In this we perform the fusion of low resolution source with high resolution (texture) source ba...

Comparison of Thermal Characteristics of Simple Boiler with Circulating Fluidized Bed (CFB) Boiler using Thermal Analysis

In this paper, a simple boiler and a CFB boiler are compared for the better thermal characteristics. In general the material used for boiler is steel. But we are replaced with copper and brass. Thermal analysis is done...

Download PDF file
  • EP ID EP19168
  • DOI -
  • Views 265
  • Downloads 5

How To Cite

Hemalatha. S, M. Hemalatha (2014). Computational Techniques To Recover Missing Data From Gene Expression Data. International Journal for Research in Applied Science and Engineering Technology (IJRASET), 2(12), -. https://europub.co.uk./articles/-A-19168