Skip to main content

Research Repository

Advanced Search

Towards computational dialogue types for BIM collaborative design: an initial study.

Toniolo, Alice; Leon, Marianthi

Authors

Alice Toniolo

Marianthi Leon



Contributors

Stefano Bistarelli
Editor

Massimiliano Giacomin
Editor

Andrea Pazienza
Editor

Abstract

Collaborative design is an iterative process of selecting and evaluating solutions under potentially conflicting requirements, a concept central to Building Information Modelling (BIM) implementation. Previous research has shown that design can be better understood via computational argumentation-based dialogue. We suggest that in BIM context different types of dialogue should be considered and we propose an approach that translates collaborative, conceptual and perceptual activities undertaken by design and construction professionals to dialogue types.

Citation

TONIOLO, A. and LEON, M. 2017. Towards computational dialogue types for BIM collaborative design: an initial study. In Bistarelli, S., Giacomin, M. and Pazienza, A. (eds.) Proceedings of the 1st Workshop on advances in argumentation in artificial intelligence (AI^3 2017), 16-17 November 2017, Bari, Italy. CEUR workshop proceedings, 2012. Aachen: CEUR-WS [online], session 3: dialogues, real world arguments and applications, pages 79-84. Available from: http://ceur-ws.org/Vol-2012/AI3-2017_paper_8.pdf

Conference Name 1st Workshop on advances in argumentation in artificial intelligence (AI^3 2017)
Conference Location Bari, Italy
Start Date Nov 16, 2017
End Date Nov 17, 2017
Acceptance Date Sep 29, 2017
Online Publication Date Nov 16, 2017
Publication Date Nov 30, 2017
Deposit Date Feb 19, 2018
Publicly Available Date Feb 19, 2018
Print ISSN 1613-0073
Publisher CEUR Workshop Proceedings
Pages 79-84
Series Title CEUR workshop proceedings
Series Number 2012
Series ISSN 1613-0073
Keywords Collaborative design; BIM; Architecture; Engineering; Construction
Public URL http://hdl.handle.net/10059/2764
Publisher URL http://ceur-ws.org/Vol-2012/AI3-2017_paper_8.pdf

Files




You might also like



Downloadable Citations