Exploring Customer Specific KPI Selection Strategies for an Adaptive Time Critical User Interface. Keck, I. R. & Ross, R. J. In Proceedings of the 19th International Conference on Intelligent User Interfaces, of IUI '14, pages 341--346, New York, NY, USA, 2014. ACM. 00000
Exploring Customer Specific KPI Selection Strategies for an Adaptive Time Critical User Interface [link]Paper  doi  abstract   bibtex   
Rapid growth in the number of measures available to describe customer-organization relationships is presenting a serious challenge for Business Intelligence (BI) interface developers as they attempt to provide business users with key customer information without requiring users to painstakingly sift through many interface windows and layers. In this paper we introduce a prototype Intelligent User Interface that we have deployed to partially address this issue. The interface builds on machine learning techniques to construct a ranking model of Key Performance Indicators (KPIs) that are used to select and present the most important customer metrics that can be made available to business users in time critical environments. We provide an overview of the prototype application, the underlying models used for KPI selection, and a comparative evaluation of machine learning and closed form solutions to the ranking and selection problems. Results show that the machine learning based method outperformed the closed form solution with a 66.5% accuracy rate on multi-label attribution in comparison to 54.1% for the closed form solution.
@inproceedings{keck_exploring_2014,
	address = {New York, NY, USA},
	series = {{IUI} '14},
	title = {Exploring {Customer} {Specific} {KPI} {Selection} {Strategies} for an {Adaptive} {Time} {Critical} {User} {Interface}},
	isbn = {978-1-4503-2184-6},
	url = {http://doi.acm.org/10.1145/2557500.2557536},
	doi = {10.1145/2557500.2557536},
	abstract = {Rapid growth in the number of measures available to describe customer-organization relationships is presenting a serious challenge for Business Intelligence (BI) interface developers as they attempt to provide business users with key customer information without requiring users to painstakingly sift through many interface windows and layers. In this paper we introduce a prototype Intelligent User Interface that we have deployed to partially address this issue. The interface builds on machine learning techniques to construct a ranking model of Key Performance Indicators (KPIs) that are used to select and present the most important customer metrics that can be made available to business users in time critical environments. We provide an overview of the prototype application, the underlying models used for KPI selection, and a comparative evaluation of machine learning and closed form solutions to the ranking and selection problems. Results show that the machine learning based method outperformed the closed form solution with a 66.5\% accuracy rate on multi-label attribution in comparison to 54.1\% for the closed form solution.},
	urldate = {2014-05-19TZ},
	booktitle = {Proceedings of the 19th {International} {Conference} on {Intelligent} {User} {Interfaces}},
	publisher = {ACM},
	author = {Keck, Ingo R. and Ross, Robert J.},
	year = {2014},
	note = {00000},
	pages = {341--346}
}

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