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RecSys 2020 Session P5A: Real World Applications II

Session P5A: Real-World Applications II
Session Chairs: Nava Tintarev and Dietmar Jannach

From the Lab to Production: A Case Study of Session-Based Recommendations in the Home-Improvement Domain
by Pigi Kouki (RelationalAI), Ilias Fountalis (RelationalAI), Nikolas Vasiloglou (RelationalAI), Xiquan Cui (The Home Depot), Edo Liberty (HyperCube), Khalifeh Al Jadda (The Home Depot)

Recommending the Video to Watch Next: An Offline and Online Evaluation at YOUTV.de
by Panagiotis Symeonidis (Free University of Bozen-Bolzano), Andrea Janes (Free University of Bozen-Bolzano), Dmitry Chaltsev (Free University of Bozen-Bolzano), Philip Giuliani (Keep in Mind), Daniel Morandini (Keep in Mind), Andreas Unterhuber (Keep in Mind), Ludovik Coba (Free University of Bozen-Bolzano), Markus Zanker (Free University of Bozen-Bolzano)

RecSeats: A Hybrid Convolutional Neural Network Choice Model for Seat Recommendations at Reserved Seating Venues
by Théo Moins (Polytechnique Montréal), Daniel Aloise (Polytechnique Montréal), Simon J. Blanchard (Georgetown University)

In-Store Augmented Reality-Enabled Product Comparison and Recommendation
by Jesús Omar Álvarez Márquez (University of Duisburg-Essen), Jürgen Ziegler (University of Duisburg-Essen)

Balancing Relevance and Discovery to Inspire Customers in the IKEA App
by Balázs Tóth (IKEA Group), Sandhya Sachidanandan (IKEA Group), Emil S. Jørgensen (IKEA Group)

On the Heterogeneous Information Needs in the Job Domain: A Unified Platform for Student Career
by Markus Reiter-Haas (Talto GmbH), David Wittenbrink (Talto GmbH), Emanuel Lacic (Know-Center GmbH)

Видео RecSys 2020 Session P5A: Real World Applications II канала ACM RecSys
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20 октября 2020 г. 4:13:05
01:30:01
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