30.04.2024

MCML at PAKDD 2024: One Accepted Paper
28th Pacific-Asia Conference on Knowledge Discovery and Data Mining (PAKDD 2024). Taipei, Taiwan, 07.05.2024–10.05.2024
We are happy to announce that MCML researchers have contributed a total of 1 paper to PAKDD 2024. Congrats to our researchers!
Main Track (1 paper)
On Diverse and Precise Recommendations for Small and Medium-Sized Enterprises.
PAKDD 2024 - 28th Pacific-Asia Conference on Knowledge Discovery and Data Mining. Taipeh, Taiwan, May 07-10, 2024. DOI GitHub
Abstract
Recommender Systems are a popular and common means to extract relevant information for users. Small and medium-sized enterprises make up a large share of the overall amount of business but need to be more frequently considered regarding the demand for recommender systems. Different conditions, such as the small amount of data, lower computational capabilities, and users frequently not possessing an account, require a different and potentially a more small-scale recommender system. The requirements regarding quality are similar: High accuracy and high diversity are certainly an advantage. We provide multiple solutions with different variants solely based on information contained in event-based sequences and temporal information. Our code is available at GitHub. We conduct experiments on four different datasets with an increasing set of items to show a possible range for scalability. The promising results show the applicability of these grammar-based recommender system variants and leave the final decision on which recommender to choose to the user and its ultimate goals.
MCML Authors
#research #top-tier-work #seidl
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