Sign in

Paper Video Conference

Subscribe Submit

  • Home
  • Journals
  • Focus
  • Videos
  • Achievement
  • Fronts
  • Contact Us
Journal Home Online First Current Issue Archive For Authors Journal Information 中文版

2020, Volume 7, Issue 1

Outline

Abstract

Keywords

Frontiers of Engineering Management >> 2020, Volume 7, Issue 1 doi: 10.1007/s42524-020-0092-6

A review of systematic evaluation and improvement in the big data environment

Show More

School of Management, University of Science and Technology of China, Hefei 230026, China

Accepted: 2020-02-21 Available online:2020-02-21

Abstract

The era of big data brings unprecedented opportunities and challenges to management research. As one of the important functions of management decision-making, evaluation has been given more functions and application space. Exploring the applicable evaluation methods in the big data environment has become an important subject of research. The purpose of this paper is to provide an overview and discussion of systematic evaluation and improvement in the big data environment. We first review the evaluation methods based on the main analytic techniques of big data such as data mining, statistical methods, optimization and simulation, and deep learning. Focused on the characteristics of big data (association feature, data loss, data noise, and visualization), the relevant evaluation methods are given. Furthermore, we explore the systematic improvement studies and application fields. Finally, we analyze the new application areas of evaluation methods and give the future directions of evaluation method research in a big data environment from six aspects. We hope our research could provide meaningful insights for subsequent research.

Keywords

big data ; evaluation methods ; systematic improvement ; big data analytic techniques ; data mining

Content

关注我们

Website Copyright © 2015 China Engineering Science Press Co., Ltd.

京公网安备 11010502051620号 京ICP备11030251号-2
Follow us
Website Copyright © 2015 China Engineering Science Press Co., Ltd.
京公网安备 11010502051620号 京ICP备11030251号-2