Business User-oriented Recommender System of Data

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Résumé

Companies nowadays are increasingly dependent on data. In an environment that is more dynamic than ever, they are looking for tools to leverage those data and obtain valuable information in a rapid and flexible way. One way to achieve this is by using Data-Driven Decision Support Systems (Data-Driven DSS). In this project, I focus on one such type of DSS, namely the Self-Service Business Intelligence (SSBI) Systems. These systems are designed specifically to avoid the involvement of the IT department when creating business reports by empowering businesspeople in the production of their own reports, thereby reducing the time-to-release of a given report and improving the responsiveness of companies. Business decision-makers, when developing their own reports, however face barriers. These challenges are related to the current self-service features that are not sufficiently adapted to their business needs and their lack of technical knowledge. The objective of my project is to build a framework based on Artificial Intelligence (AI) techniques such as Natural Language Processing techniques, Semantic and Recommender Systems to solve one of the main challenges faced by businesspeople, namely: the data picking within technical and large current databases. These AI systems offer a number of benefits that are strongly linked to the problems encountered by business users in the data picking process. This paper introduces the three main research questions of my thesis and positions them in the current literature. It then elaborates on the different theoretical, methodological and empirical contributions I plan to advance as part of my project.

langue originaleAnglais
Pages613-621
Nombre de pages9
Les DOIs
Etat de la publicationPublié - 2023
EvénementThe 17th International Conference on Research Challenges in Information Science - Ionian University, Department of Informatics, Corfu, Grèce
Durée: 23 mai 202326 mai 2023
Numéro de conférence: 17
https://www.rcis-conf.com/rcis2023/

Une conférence

Une conférenceThe 17th International Conference on Research Challenges in Information Science
Titre abrégéRCIS
Pays/TerritoireGrèce
La villeCorfu
période23/05/2326/05/23
Adresse Internet

Financement

This work has been partially funded by the Research Council of Norway under grant nr. 310105 -Norwegian Centre for Cybersecurity in Critical Sectors (NORCICS). BeCoDigital]. Financial support was also received from the European Regional Development Fund (ERDF) for the Wal-e-Cities project with award number [ETR121200003138] and from the Research Public Service of Wallonia (SPW Recherche) for the project ARIAC by DIGITALWALLONIA4AI with award number [2010235]. Acknowledgement. This research was supported by ERDF “CyberSecurity, CyberCrime and Critical Information Infrastructures Center of Excellence” (No. CZ.02.1.01/0.0/0.0/16_019/0000822). It was also co-founded by the European Union under Grant Agreement No. 101087529. Views and opinions expressed are however those of the author(s) only and do not necessarily reflect those of the European Union or European Research Executive Agency. Neither the European Union nor the granting authority can be held responsible for them. Acknowledgements. This research is supported by the Estonian Research Council (PRG1226) and the European Research Council (PIX Project). Unit 2023-2027 (CEX2021-001201-M) funded by MCIN/AEI /10.13039/501100011033, and the RCIS community for their valuable insights that helped develop this work. Acknowledgements. This work has been developed under the project Digital Knowledge Graph – Adaptable Analytics API with the financial support of Accenture LTD, the Generalitat Valenciana through the CoMoDiD project (CIPROM/2021/023), the Spanish State Research Agency through the DELFOS (PDC2021-121243-I00) and SREC (PID2021-123824OB-I00) projects, MICIN/AEI/10.13039/501 100011033 and co-financed with ERDF and the European Union Next Generation EU/PRTR. and H2020 Programmes under grant agreements 101070455 (DYNABIC), 101095634 (ENTRUST) and 101020416 (ERATOSTHENES), and the Research Council of Norway’s BIA-IPN programme under grant agreement 309700 (FLEET).

Bailleurs de fondsNuméro du bailleur de fonds
Accenture LTD
ENTRUST101020416
European Union Next Generation EU/PRTR
H2020 Programmes101070455, 101095634
Research Public Service of Wallonia2010235
SRECPID2021-123824OB-I00, MICIN/AEI/10.13039/501 100011033
European commission101087529
European Research Council
Eesti TeadusagentuurPRG1226
Generalitat ValencianaCIPROM/2021/023
Ministerio de Ciencia e Innovación
Norges Forskningsråd309700
European Regional Development FundCZ.02.1.01/0.0/0.0/16_019/0000822, ETR121200003138
Agencia Estatal de InvestigaciónPDC2021-121243-I00

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