CALL FOR PAPERS: ACM Transactions on Recommender Systems
Special Issue on Recommender Systems for Good
Submission deadline: 24. December 2024

Guest Editors:
- Marko Tkalčič, University of Primorska, Slovenia
- Noemi Mauro, University of Turin, Italy
- Alan Said, University of Gothenburg, Sweden
- Nava Tintarev, University of Maastricht, Netherlands
- Antonela Tommasel, ISISTAN, CONICET-UNCPBA, Argentina

Recommender systems are among the most widely used applications of machine 
learning. Since they are so widely used, it is important that we, as 
practitioners and researchers, think about the impact these systems may have on 
users, society, and other stakeholders. In practice, the focus is often on 
systems and values of improving key performance indicators (KPIs), such as 
increased sales or customer retention. Recommendation technology is currently 
underutilized to serve societal goals that go beyond the business objectives of 
individual corporations.

However, other values, bound more to societal good, could be considered in the 
development and goals of a recommender system. In fact, recommender systems 
have already been explored to stimulate healthier eating behavior and for 
improved health and well-being in general, to help low-income families make 
school choices, to suggest successful learning paths for students, to entice 
climate-protecting energy-saving behavior, to support fair micro-lending, or 
improve the information diets of news readers. Research in these areas is 
however limited in numbers, compared to the many papers that are published 
every year that propose new models for improved movie recommendations.

Moreover, concerning the methodology and evaluation perspective in this area, 
it is essential to find a clear methodology and criteria for evaluating the 
effectiveness and "goodness" of the proposed algorithms. This includes 
acknowledging that different values may be conflicting, as well as resolving 
how and when (and by whom) certain values should be prioritized over others 
such as in the NORMalize workshop 
(https://sites.google.com/view/normalizeworkshop).

Research on "Recommender Systems for Good" may benefit from an 
interdisciplinary approach, drawing on insights from fields such as computer 
science, ethics, sociology, psychology, law, and economics. Collaborations with 
stakeholders from diverse backgrounds can enrich the research and ensure that 
recommendations are grounded in real-world needs and values.

This special issue aims to present state-of-the-art research works where 
recommender systems have a positive societal impact and help us address urgent 
societal challenges. It will thereby serve as a call to action for more 
research in these areas. Ultimately, through this special issue, we hope to 
establish a vision of "Recommender Systems for Good', following the spirit of 
the "AI for Good" initiative (https://aiforgood.itu.int) to achieve the United 
Nations Sustainable Development Goals (2015) and the more recent UNESCO 
recommendation on the Ethics of Artificial Intelligence (2024) 
(https://www.unesco.org/en/artificial-intelligence/recommendation-ethics).

Topics:
We aim to collect the latest research on recommender systems for societal good. 
The topics of the special issues include (but are not limited to):
- Recommender systems for safety, security, and privacy (e.g., reducing poverty 
and inequality)
- Recommender systems that protect the environment and ecosystems (e.g., lower 
energy consumption, water and energy management)
- Recommender systems that give control of data back to the users (e.g., 
transparency of data, models, and outputs)
- Recommender systems for the interconnected society (e.g., increase of 
solidarity, online conversational health, multi-stakeholder recommenders)
- Accountability in recommender systems, including addressing emerging 
regulations, such as the DSA (Digital Service Act)
- Recommender systems for the public good (e.g., mental and physical health, 
welfare, digital literacy, stakeholder engagement, e-learning)
- Introspective studies on the current state of RSs concerning societal good
- Fairness-preserving and fairness-enhancing recommender systems, unbiased 
recommendations (e.g. to preserve gender equality)
- Responsible recommendation (e.g., in social media and traditional news, 
avoiding filter bubbles and echo chambers)
- Sustainability and Cultural recommendations (e.g., art, cultural heritage)
- Recommendations to support disadvantaged groups (e.g., elderly, minorities)
- Recommender systems for personal development and well-being (e.g., behavioral 
change, fitness, self-actualization, personal growth)

Important Dates:
- Submission deadline: December 24, 2024
- First-round review decisions: March 24, 2025
- Deadline for revision submissions: May 24, 2025
- Notification of final decisions: June 24, 2025

Submissions that are received before the first deadline will be directly sent 
out for review; papers will be immediately published online after acceptance.

Submission Information:
The special issue welcomes technical research papers, survey papers, and 
opinion/reflective papers. Each paper should address one or more of the 
abovementioned topics or be in other scopes of Recommender Systems for Good. 
The special issue will also consider peer-reviewed journal versions (at least 
30% new content) of top papers from related recommender system conferences such 
as RecSys, SIGIR, KDD, CIKM, IUI, UMAP, CHI, WSDM, ACL, etc. Prospective 
authors may take advantage of submitting an early version of their work to the 
ACM RecSys RecSoGood Workshop https://recsogood.github.io/recsogood24/. The new 
content must be in terms of intellectual contributions, technical experiments, 
and findings.

Submissions must be prepared according to the TORS submission guidelines 
(https://dl.acm.org/journal/tors/author-guidelines) and must be submitted via 
Manuscript Central (https://mc.manuscriptcentral.com/tors).

For questions and further information, please contact the guest editors at 
rs4good [at] acm [dot] org.
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