====================================================

FashionXRecsys - Workshop on Recommender Systems in Fashion

          In conjunction with ACM RecSys 2020 (26th September 2020)

https://fashionxrecsys.github.io/fashionxrecsys-2020/

====================================================


**Important Note** Due to concerns about COVID-19, RecSys 2020 will cancel its physical component and go fully virtual.


We are pleased to invite you to participate in the 2nd workshop on Recommender Systems in Fashion (FashionXRecsys) that will be held on September 26th, 2020.



Online Fashion retailers have significantly increased in popularity over the last decade, making it possible for customers to explore hundreds of thousands of products without the need to visit multiple stores or stand in long queues for checkout. However, the customers still face several hurdles with current online shopping solutions. For example, customers often feel overwhelmed with the large selection of the assortment and brands. In addition, there is still a lack of effective suggestions capable of satisfying customers’ style preferences, or size and fit needs, necessary to enable them in their decision-making process.  In this context, recommender systems are very well positioned to play a crucial role in creating a great customer experience in fashion. Moreover, in recent years social shopping in fashion has surfaced, thanks to platforms such as Instagram, providing a very interesting opportunity that allows to explore fashion in radically new ways. Such recent developments provide exciting challenges for the Recommender Systems and Machine Learning research communities.


This workshop aims to bring together researchers and practitioners in the fashion, recommendations and machine learning domains to discuss open problems in the aforementioned areas. This involves addressing interdisciplinary problems with all of the challenges it entails. Within this workshop we aim to start the conversation among professionals in the fashion and e-commerce industries and recommender systems scientists, and create a new space for collaboration between these communities necessary for tackling these deep problems. To provide rich opportunities to share opinions and experience in such an emerging field, we will accept paper submissions on established and novel ideas, as well as new interactive participation formats.


Suggested topics for submissions are (but not limited to):


  *   Computer vision in Fashion (image classification, semantic segmentation, object detection)

  *   Deep learning in recommendation systems for Fashion

  *   Learning and application of fashion style (personalized style, implicit and explicit preferences, budget, social behaviour, etc)

  *   Size and Fit recommendations through mining customers implicit and explicit size and fit preferences

  *   Modelling articles and brands size and fit similarity

  *   Usage of ontologies and article metadata in fashion and retail (NLP, social mining, search)

  *   Addressing cold-start problem both for items and users in fashion recommendation

  *   Knowledge transfer in multi-domain fashion recommendation systems

  *   Hybrid recommendations on customers’ history and on-line behavior

  *   Multi- or Cross- domain recommendations (social media and online shops)

  *   Privacy preserving techniques for customer’s preferences tracing

  *   Understanding social and psychological factors and impacts of influence on users’ fashion choices (such as Instagram, influencers, etc.)


In order to encourage the reproducibility of research work presented in the workshop, we put together a list of open datasets in the fashionXrecsys website<https://fashionxrecsys.github.io/fashionxrecsys-2020/#datasets>. All submissions that present their work using at least one of the listed datasets will be considered for the best paper, best student paper and best demo awards, which will be given by workshop sponsors.


Mentorship

For the first time, we will offer mentorship opportunities to students who would like to get initial feedback on their work by industry colleagues. We aim to increase the chances of innovative student’s work being published, as well as to foster an early exchange across academia and industry. As a mentee, you should expect at least one round of review of your work prior to the submission deadline. If your work is accepted, you should  also expect at least one feedback session regarding your demo, poster or oral presentation.


Important Dates

  *   Mentorship deadline: June 10th, 2020

  *   Submission deadline: July 29th, 2020

  *   Author notification: August 21st, 2020

  *   Camera-ready version deadline: September 4th,2020


All deadlines refer to 23:59 (11:59pm) in the AoE (Anywhere on Earth) time zone.


Paper Submission Instructions

  *   All submissions and reviews will be handled electronically via EasyChair at the following address: https://easychair.org/conferences/?conf=fashionxrecsys2020

  *   Submissions should be prepared according to the ACM RecSys format<https://recsys.acm.org/recsys20/call/>.  Long papers should report on substantial contributions of lasting value. The maximum length is 14 pages (excluding references) in the new single-column format. For short papers, the maximum length is 7 pages (excluding references) in the new single-column format.

  *   The peer review process is double-blind (i.e. anonymised). All submissions must not include information identifying the authors or their organisation. Specifically, do not include the authors’ names and affiliations, anonymise citations to your previous work and avoid providing any other information that would allow to identify the authors, such as acknowledgments and funding. However, it is acceptable to explicitly refer in the paper to the companies or organizations that provided datasets, hosted experiments or deployed solutions, if specifically necessary for understanding the work described in the paper.

  *   Submitted work should be original. However, technical reports or ArXiv disclosure prior to or simultaneous with the workshop submission, is allowed, provided they are not peer-reviewed.

  *   The organizers also encourage authors to make their code and datasets publicly available.

  *   Accepted contributions are given either an oral or poster presentation slot at the workshop. At least one author of every accepted contribution must attend the workshop and present their work. Please contact the workshop organization if none of the authors will be able to attend.

  *   All accepted papers will be available through the program website<https://fashionxrecsys.github.io/fashionxrecsys-2020/>. Moreover, we are currently in conversations with Springer in order to publish the workshop papers in a special issue journal.


Additional Submission Instructions for Demos

The description of the demo should be prepared according to the standard double-column ACM SIG proceedings format<http://www.acm.org/publications/proceedings-template> with a one page limit. The submission should include:

  *   An overview of the algorithm or system that is the core of the demo, including citations to any publications that support the work.

  *   A discussion of the purpose and the novelty of the demo.

  *   A description of the required setup. If the system will feature an installable component (e.g., mobile app) or website for users to use throughout or after the conference, please mention this.

  *   A link to a narrated screen capture of your system in action, ideally a video. (This section will be removed for the camera-ready version of accepted contributions.)

For any inquiries and questions, please contact us: [log in to unmask]<mailto:[log in to unmask]>

Join the #fashionxrecsys community in slack by following these instructions<https://recsys.acm.org/slack-invite/>


Kindest Regards,

FashionXRecsys Organizers



    ---------------------------------------------------------------
    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
    ---------------------------------------------------------------