Data Imputation Methods and Technologies

Abstract

We introduce a class of linear quantile regression estimators for panel data. Our framework contains dynamic autoregressive models, models with general predetermined regressors, and models with multiple individual e?ects as special cases. We follow a correlated random-e?ects approach, and rely on additional layers of quantile regressions as a flexible tool to model conditional distributions. Conditions are given under which the model is nonparametrically identified in static or Markovian dynamic models. We develop a sequential method-of-moment approach for estimation, and compute the estimator using an iterative algorithm that exploits the computational simplicity of ordinary quantile regression in each iteration step. Finally, a Monte-Carlo exercise and an application to measure the e?ect of smoking during pregnancy on childrens birthweights complete the paper. K-means and K-medoids clustering algorithms are widely used for many practical applications. Original k-mean and k-medoids algorithms select initial centroids and medoids randomly that affect the quality of the resulting clusters and sometimes it generates unstable and empty clusters which are meaningless. The original k-means and k-mediods algorithm is computationally expensive and requires time proportional to the product of the number of data items, number of clusters and the number of iterations. The new approach for the k mean algorithm eliminates the deficiency of exiting k mean. It first calculates the initial centroids k as per requirements of users and then gives better, effective and stable cluster. It also takes less execution time because it eliminates unnecessary distance computation by using previous iteration. The new approach for k- medoids selects initial k medoids systematically based on initial centroids. It generates stable clusters to improve accuracy. Ritesh Kumar Pandey | Dr Asha Ambhaikar"Data Imputation Methods and Technologies" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-2 | Issue-4 , June 2018, URL: http://www.ijtsrd.com/papers/ijtsrd14113.pdf http://www.ijtsrd.com/computer-science/real-time-computing/14113/data-imputation-methods-and-technologies/ritesh-kumar-pandey

Authors and Affiliations

Keywords

Related Articles

Preparation of Fan Coil Unit using Revit Software

This project “Fan coil unit preparation by using Revit software” deals with the study of air conditioner and water conditioner system in a single unit. The main object behind this project is to supply chilled water t...

Heat Treatment and Alloying of Spherulitic Graphite Cast Iron for Intensification of Properties

Spheroidal graphite cast iron or Spherulitic cast iron is described as a high carbon containing, iron based composite in which the graphite is accessible in negligible, round shapes rather than in the condition of pieces...

Changes in the System of Higher Education in the New Uzbekistan

The article reflects on the existing problems in the higher education system of the Republic of Uzbekistan and the positive changes that have taken place in recent years as a result of measures aimed at developing this a...

Physico Chemical and Bacteriological Quality of Water Sources in the Coast of Ndian, South West Region, Cameroon Health Implications

The study of water sources used by the population of Ndian for drinking with the exception of the Ekondo Titi beach was carried out by investigating 51 water sources. Due to the lack of pipe borne water in this area, the...

Text Embedded System using LSB Method

An important topic in the exchange of confidential messages over the internet is the security of information conveyance. For instance, the producers and consumers of digital products are keen to know that their products...

Download PDF file
  • EP ID EP361525
  • DOI -
  • Views 105
  • Downloads 0

How To Cite

(2018). Data Imputation Methods and Technologies. International Journal of Trend in Scientific Research and Development, 2(4), -. https://europub.co.uk/articles/-A-361525