Enhancing Business Dashboards with Explanatory Analytics & AI : Exploring the Use of AI and Explanatory Analytics to Enhance Business Decision-Making
Valkenburgh, Jeroen (2024-07-30)
Enhancing Business Dashboards with Explanatory Analytics & AI : Exploring the Use of AI and Explanatory Analytics to Enhance Business Decision-Making
Valkenburgh, Jeroen
(30.07.2024)
Julkaisu on tekijänoikeussäännösten alainen. Teosta voi lukea ja tulostaa henkilökohtaista käyttöä varten. Käyttö kaupallisiin tarkoituksiin on kielletty.
suljettu
Julkaisun pysyvä osoite on:
https://urn.fi/URN:NBN:fi-fe2024081965459
https://urn.fi/URN:NBN:fi-fe2024081965459
Tiivistelmä
Business dashboards have become increasingly popular for descriptive analytics, significantly
aiding the decision-making process. With the growth in data volume and complexity, ex-
planatory models for automatic diagnostic analytics have been developed. This thesis aims to
enhance these models, thereby extending the functionality of business dashboards by generating
textual explanations instead of relying on traditional visualisations or summarised tables. This
approach facilitates more informed decision-making.
This thesis employs design science research, where an artefact is created based on theory.
The research evaluates three theoretical frameworks for diagnostic modelling, ultimately in-
corporating only one: the explanation formalism. By utilising generative AI, the developed
artefact translates intricate data insights into easily understandable narratives. This approach
bridges the gap between data analysis and decision-making, providing clear and comprehensible
explanations of data trends and anomalies.
The created artefact was tested using a cognitive walkthrough, demonstrating its capability
to transform complex data figures into comprehensible text format. Additionally, a comparison
was made between the outputs of explanation formalism, an explanatory tree, and explanatory
text. This thesis contributes to the fields of information management and business intelligence by
presenting a method to integrate existing explanatory models with AI. The result is a prototype
that enhances the clarity and understanding of business data.
aiding the decision-making process. With the growth in data volume and complexity, ex-
planatory models for automatic diagnostic analytics have been developed. This thesis aims to
enhance these models, thereby extending the functionality of business dashboards by generating
textual explanations instead of relying on traditional visualisations or summarised tables. This
approach facilitates more informed decision-making.
This thesis employs design science research, where an artefact is created based on theory.
The research evaluates three theoretical frameworks for diagnostic modelling, ultimately in-
corporating only one: the explanation formalism. By utilising generative AI, the developed
artefact translates intricate data insights into easily understandable narratives. This approach
bridges the gap between data analysis and decision-making, providing clear and comprehensible
explanations of data trends and anomalies.
The created artefact was tested using a cognitive walkthrough, demonstrating its capability
to transform complex data figures into comprehensible text format. Additionally, a comparison
was made between the outputs of explanation formalism, an explanatory tree, and explanatory
text. This thesis contributes to the fields of information management and business intelligence by
presenting a method to integrate existing explanatory models with AI. The result is a prototype
that enhances the clarity and understanding of business data.