Goal models for acceptance requirements analysis and gamification design

Conference paper


Piras, L., Paja, E., Giorgini, P. and Mylopoulos, J. 2017. Goal models for acceptance requirements analysis and gamification design. Mayr, H.C., Guizzardi, G., Ma, H. and Pastor, O. (ed.) 36th International Conference on Conceptual Modeling. Valencia 2017 Cham Springer. pp. 223-230 https://doi.org/10.1007/978-3-319-69904-2_18
TypeConference paper
TitleGoal models for acceptance requirements analysis and gamification design
AuthorsPiras, L., Paja, E., Giorgini, P. and Mylopoulos, J.
Abstract

The success of software systems highly depends on user engagement. Thus, to deliver engaging systems, software has to be designed carefully taking into account Acceptance Requirements, such as “70% of users will use the system”, and the psychological factors that could influence users to use the system. Analysis can then consider mechanisms that affect these factors, such as Gamification (making a game out of system use), advertising, incentives and more.

We propose a Systematic Acceptance Requirements Analysis Framework based on Gamification for supporting the requirements engineer in analyzing and designing engaging software systems. Our framework, named Agon, encompasses both a methodology and a meta-model capturing acceptance and gamification knowledge. In this paper, we describe the Agon Meta-Model and provide examples from the gamification of a decision-making platform in the context of a European Project.

KeywordsAcceptance requirements; Gamification; Goal modeling; Requirements engineering; Human behavior
Sustainable Development Goals9 Industry, innovation and infrastructure
Middlesex University ThemeCreativity, Culture & Enterprise
LanguageEnglish
Conference36th International Conference on Conceptual Modeling
Page range223-230
Proceedings TitleConceptual Modeling: 36th International Conference, ER 2017, Valencia, Spain, November 6–9, 2017, Proceedings
SeriesLecture Notes in Computer Science
EditorsMayr, H.C., Guizzardi, G., Ma, H. and Pastor, O.
ISSN0302-9743
Electronic1611-3349
ISBN
Hardcover9783319699035
Electronic9783319699042
PublisherSpringer
Place of publicationCham
Publication dates
Print21 Oct 2017
Publication process dates
Accepted24 Jun 2017
Deposited31 Jul 2023
Output statusPublished
Accepted author manuscript
Copyright Statement

Final version available at https://link.springer.com/chapter/10.1007/978-3-319-69904-2_18

Additional information

Final version available at https://doi.org/10.1007/978-3-319-69904-2_18

Digital Object Identifier (DOI)https://doi.org/10.1007/978-3-319-69904-2_18
Web of Science identifierWOS:000521402400018
Web address (URL) of conference proceedingshttp://doi.org/10.1007/978-3-319-69904-2
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