Embedded analytics: improving decision support for humanitarian logistics operations
Year of publication: |
2019
|
---|---|
Authors: | Griffith, Daniel A. ; Boehmke, Bradley C. ; Bradley, Randy V. ; Hazen, Benjamin T. ; Johnson, Alan W. |
Published in: |
Application of operations research (OR) in disaster relief operations (DRO), part I and part II. - New York, NY, USA : Springer. - 2019, p. 247-265
|
Subject: | Business analytics | Big data analytics | Humanitarian logistics | Decision tree | Embedded analytics | Data science | Humanitäre Hilfe | Humanitarian aid | Logistik | Logistics | Management-Informationssystem | Management information system | Big Data | Big data | Data Mining | Data mining | Unternehmensanalyse | Business analysis | Entscheidungsbaum | Lieferkette | Supply chain |
-
The origins of business analytics and implications for the information systems field
Hassan, Nik R., (2019)
-
A hybrid machine learning framework for analyzing human decision-making through learning preferences
Guo, Mengzhuo, (2021)
-
Poulose, Jeanne, (2024)
- More ...
-
Toward understanding outcomes associated with data quality improvement
Hazen, Benjamin T., (2017)
-
Boehmke, Bradley C., (2016)
-
Bell, John E., (2014)
- More ...