CHI-ANNOUNCEMENTS Archives

ACM SIGCHI General Interest Announcements (Mailing List)

CHI-ANNOUNCEMENTS@LISTSERV.ACM.ORG

Options: Use Forum View

Use Monospaced Font
Show HTML Part by Default
Condense Mail Headers

Message: [<< First] [< Prev] [Next >] [Last >>]
Topic: [<< First] [< Prev] [Next >] [Last >>]
Author: [<< First] [< Prev] [Next >] [Last >>]

Print Reply
Content-Type:
text/plain
X-To:
Date:
Fri, 6 Dec 2019 13:11:42 +0000
Reply-To:
Mark Graus <[log in to unmask]>
Subject:
From:
Mark Graus <[log in to unmask]>
Message-ID:
<mdpi-2>
MIME-Version:
1.0
Content-Transfer-Encoding:
quoted-printable
Sender:
"ACM SIGCHI General Interest Announcements (Mailing List)" <[log in to unmask]>
Parts/Attachments:
text/plain (59 lines)
* Please forward to anyone who might be interested *
* Apologies for cross-posting. *

------------------------------------------------------------------------
In collaboration with the MDPI journal "Multimodal Technologies and Interaction", we are bringing researchers together to contribute to a Special Issue on:
*Understanding UX through Implicit and Explicit Feedback*

Guest Editors:
Dr. ir. Bruce Ferwerda, Jonkoping University, Jonkoping, Sweden
Dr. ir. Mark Graus, Maastricht University, Maastricht, the Netherlands

https://www.mdpi.com/journal/mti/special_issues/UX_feedback

Submissions are ongoing with the final submission deadline for manuscripts to be considered on 31 March 2020.

------------------------------------------------------------------------
This special issue aims to explore the opportunities and challenges of combining implicit and explicit feedback to understand and design user experience (UX) in Human-Computer Interaction (HCI).

Measuring UX is important to understand how successful applications and systems are in reaching their goals. In general, there are two main approaches to measure UX: 1) explicit feedback (i.e., using data measured through surveys, interviews and focus groups) and 2) implicit feedback (i.e., using data describing users' observable interaction behavior measured through, for example, telemetry). Measuring explicit feedback is costlier, requires user input, and thus relies on smaller scale studies. However, it allows to gain deeper information and understanding about the relationship between user characteristics, their needs and preferences, their behavior and their experience. Although, implicit feedback can be collected automatically, it allows for limited understanding of the relationship between user behavior, user traits and user experience.

Implicit and explicit feedback can be combined to effectively measure and understand UX factors; implicit feedback can facilitate the breadth (by quantitatively indicating how designs influence UX) while explicit feedback can facilitate the depth (by providing insight how user behavior, user characteristics and user experience are related). The combination of these two approaches result in an understanding with a high level of detail with the cost efficiency of quantitative research.

Specific areas in which the combination of implicit and explicit feedback is valuable is in personalized and adaptive systems: systems that adapt itself based on users' interaction behavior to match their preferences or needs. A prominent direction using this approach is the field of recommender systems in which historical behavioral data (implicit feedback) is used to alter the order of items in a catalog (from highest predicted relevance to lowest predicted relevance), with the goal of helping users to find relevant items more easily or making them consume more items. In this case, implicit feedback (behavior) is used to make inferences about concepts that normally can only be measured through explicit feedback (preferences).

We encourage authors to submit original research articles, case studies, reviews, theoretical and critical perspectives, and viewpoint articles within the domain of HCI on topics including but not limited to:

 - Deriving metrics for measuring UX from qualitative research
 - The interplay between user characteristics/user behavior and UX
 - Combining explicit and implicit feedback for UX Research
 - Empirical studies incorporating UX factors, user behavior and/or user characteristics (e.g., A/B testing)
 - Explicit and implicit feedback in personalized/adaptive systems
 - Implicit feedback for UX design (e.g., data-driven design)
 - Explicit feedback for UX design (e.g., theory-driven design)


For more information about the Special Issue, please see:
https://www.mdpi.com/journal/mti/special_issues/UX_feedback

For information on manuscript preparation and related matters, please see the instructions for authors:
https://www.mdpi.com/journal/mti/instructions

Although the deadline for submission of manuscripts to the Special Issue is 31 March 2020, papers will be reviewed and published as they are received. The entire set of invited papers and any others in this domain will appear at the link indicated.

We are looking forward to your contribution to the Special Issue.

Sincerely yours,
Dr. ir. Bruce Ferwerda 
Dr. ir. Mark Graus

    ---------------------------------------------------------------
    For news of CHI books, courses & software, join CHI-RESOURCES
     mailto: [log in to unmask]

    To unsubscribe from CHI-ANNOUNCEMENTS send an email to
     mailto:[log in to unmask]

    For further details of CHI lists see http://listserv.acm.org
    ---------------------------------------------------------------

ATOM RSS1 RSS2