Enhancing Business Intelligence Applications with Value-Driven Feedback and Recommendation
نویسندگان
چکیده
Business intelligence (BI) systems support activities such as data analysis, managerial decision making, and businessperformance measurement. Our research investigates the integration of feedback and recommendation mechanisms (FRM) into BI solutions. We define FRM as textual, visual, and/or graphical cues that are embedded into front-end BI tools and guide the end-user to consider using certain data subsets and analysis forms. Our working hypothesis is that the integration of FRM will improve the usability of BI tools and increase the benefits that end-users and organizations can gain from data resources. Our first research stage focuses on FRM based on assessment of previous usage and the associated value gain. We describe the development of such FRM, and the design of an experiment that will test the usability and the benefits of their integration. Our experiment incorporates value-driven usage metadata a novel methodology for tracking and communicating the usage of data, linked to a quantitative assessment of the value gained. We describe a high-level architecture for supporting the collection, storage, and presentation of this new metadata form, and a quantitative method for assessing it.
منابع مشابه
Enhancing Business-Intelligence Tools with Value-Driven Recommendations
Business-intelligence (BI) tools are broadly adopted in organizations today, supporting activities such as data analysis, decision making, and performance measurement. This study investigates the integration of feedback and recommendation mechanisms (FRM) into BI tool, defining FRM as visual cues that are embedded into the tools and provide the end-user with usage guidelines. The study focuses ...
متن کاملIntegrating value-driven feedback and recommendation mechanisms into business intelligence systems
Business intelligence (BI) systems and tools are broadly adopted in organizations today, supporting activities such as data analysis, managerial decision making, and business-performance measurement. Our research investigates the integration of feedback and recommendation mechanisms (FRM) into BI solutions. We define FRM as textual, visual, and/or graphical cues that are embedded into front-end...
متن کاملCognition-Driven Decision Support for Business Intelligence: Models, Techniques, Systems and Applications
Any books that you read, no matter how you got the sentences that have been read from the books, surely they will give you goodness. But, we will show you one of recommendation of the book that you need to read. This cognition driven decision support for business intelligence models techniques systems and applicat is what we surely mean. We will show you the reasonable reasons why you need to r...
متن کاملMaking money with clouds: Revenue optimization through automated policy decisions
Business intelligence (BI) systems and tools are broadly adopted in organizations today, supporting activities such as data analysis, managerial decision making, and business-performance measurement. Our research investigates the integration of feedback and recommendation mechanisms (FRM) into BI solutions. We define FRM as textual, visual, and/or graphical cues that are embedded into front-end...
متن کاملDirect Exact Feedback Linearization based control of the of the Output Voltage in the Minimum phase DC-DC Choppers
In this paper, a novel approach for control of the DC-DC buck converter in high-power and low-voltage applications is proposed. Designed method is developed according to state feedback linearization based controller , which is able to stabilize output voltage in a wide range of operation. It is clear that in high-power applications, parasitic elements of the converter may become comparable with...
متن کامل