Different every time: A framework to model real-time instant message conversations
As startups and micro teams adopt real-time collaborative instant messaging solutions, a wealth of data is generated from day to day usage. Making sense of this data can be a challenge to teams, given the lack of inbuilt analytical tooling. In this study we model the distributions of duration, inter...
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doaj-6af2c80d20f14cd8a164fcebdbcda90e2020-11-24T21:39:06ZengFRUCTProceedings of the XXth Conference of Open Innovations Association FRUCT2305-72542343-07372017-11-0156221889910.23919/FRUCT.2017.8250169Different every time: A framework to model real-time instant message conversationsJonathan Dunne0David Malone1Hamilton Institute, Maynooth UniversityHamilton Institute, Maynooth UniversityAs startups and micro teams adopt real-time collaborative instant messaging solutions, a wealth of data is generated from day to day usage. Making sense of this data can be a challenge to teams, given the lack of inbuilt analytical tooling. In this study we model the distributions of duration, inter-arrival time, word count and user count of real-time electronic chat conversations in a framework, where these distributions can be used as an analogue to service time estimation of problem determination. Using both an enterprise and an open-source dataset, we answer the question of what distribution family and fitting techniques can be used to adequately model real-time chat conversations. Our framework can help startups and micro teams alike to effectively model their real-time chat conversations to allow high value decisions to be made based on their collaboration outputs.https://fruct.org/publications/fruct21/files/Dun.pdf Data ModellingReal-time chat discourseDistribution fittingHeavy-Tailed data analysis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jonathan Dunne David Malone |
spellingShingle |
Jonathan Dunne David Malone Different every time: A framework to model real-time instant message conversations Proceedings of the XXth Conference of Open Innovations Association FRUCT Data Modelling Real-time chat discourse Distribution fitting Heavy-Tailed data analysis |
author_facet |
Jonathan Dunne David Malone |
author_sort |
Jonathan Dunne |
title |
Different every time: A framework to model real-time instant message conversations |
title_short |
Different every time: A framework to model real-time instant message conversations |
title_full |
Different every time: A framework to model real-time instant message conversations |
title_fullStr |
Different every time: A framework to model real-time instant message conversations |
title_full_unstemmed |
Different every time: A framework to model real-time instant message conversations |
title_sort |
different every time: a framework to model real-time instant message conversations |
publisher |
FRUCT |
series |
Proceedings of the XXth Conference of Open Innovations Association FRUCT |
issn |
2305-7254 2343-0737 |
publishDate |
2017-11-01 |
description |
As startups and micro teams adopt real-time collaborative instant messaging solutions, a wealth of data is generated from day to day usage. Making sense of this data can be a challenge to teams, given the lack of inbuilt analytical tooling. In this study we model the distributions of duration, inter-arrival time, word count and user count of real-time electronic chat conversations in a framework, where these distributions can be used as an analogue to service time estimation of problem determination. Using both an enterprise and an open-source dataset, we answer the question of what distribution family and fitting techniques can be used to adequately model real-time chat conversations. Our framework can help startups and micro teams alike to effectively model their real-time chat conversations to allow high value decisions to be made based on their collaboration outputs. |
topic |
Data Modelling Real-time chat discourse Distribution fitting Heavy-Tailed data analysis |
url |
https://fruct.org/publications/fruct21/files/Dun.pdf
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work_keys_str_mv |
AT jonathandunne differenteverytimeaframeworktomodelrealtimeinstantmessageconversations AT davidmalone differenteverytimeaframeworktomodelrealtimeinstantmessageconversations |
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