International Journal of Engineering and Management Research (IJEMR)
  • Year: 2016
  • Volume: 6
  • Issue: 2

Missing Value Estimation for Mixed Attribute Data Sets

  • Author:
  • K. Srinivasan1, G.A. Gayathri2
  • Total Page Count: 3
  • Page Number: 506 to 508

1Assistant Professor, Department of IT, SCSVMV University, Kanchipuram, India

2M. Tech Final year, Department of IT, SCSVMV University, Kanchipuram, India

Online published on 8 November, 2017.

Abstract

Data imputation aims at filling in missing attribute values in databases. Most existing imputation methods to string attribute values are inferring-based approaches, which usually fail to reach a high imputation recall by just inferring missing values from the complete part of the data set. Recently, some retrieving-based methods are proposed to retrieve missing values from external resources such as the World Wide Web, which tend to reach a much higher imputation recall, but inevitably bring a large overhead by issuing a large number of search queries. In this paper, we investigate the interaction between the inferring-based methods and the retrieving based methods. We show that retrieving a small number of selected missing values can greatly improve the imputation recall of the inferring-based methods.

Keywords

WWW, Data imputation