MeetCues: Supporting Online Meetings Experience
October 13, 2020 Β· Declared Dead Β· π Visual ..
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Authors
Bon Adriel Aseniero, Marios Constantinides, Sagar Joglekar, Ke Zhou, Daniele Quercia
arXiv ID
2010.06259
Category
cs.HC: Human-Computer Interaction
Citations
41
Venue
Visual ..
Last Checked
3 months ago
Abstract
The remote work ecosystem is transforming patterns of communication between teams and individuals located at distance. Particularly, the absence of certain subtle cues in current communication tools may hinder an online's meeting outcome by negatively impacting attendees' overall experience and, often, make them feeling disconnected. The problem here might be due to the fact that current tools fall short in capturing it. To partly address this, we developed an online platform-MeetCues-with the aim of supporting online communication during meetings. MeetCues is a companion platform for a commercial communication tool with interactive and visual UI features that support back-channels of communications. It allows attendees to be more engaged during a meeting, and reflect in real-time or post-meeting. We evaluated our platform in a diverse set of five, real-world corporate meetings, and we found that, not only people were more engaged and aware during their meetings, but they also felt more connected. These findings suggest promise in the design of new communications tools, and reinforce the role of InfoVis in augmenting and enriching online meetings.
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