TL;DR
This paper introduces a psychology-inspired model based on the ACT-R framework to predict music relistening behavior, incorporating multiple cognitive factors to enhance recommendation accuracy.
Contribution
It extends prior models by utilizing five ACT-R components to better capture the cognitive aspects influencing music relistening behavior.
Findings
Recency and frequency are strong predictors of relistening.
Co-occurrence and familiarity improve prediction performance.
The approach outperforms baseline methods on a large dataset.
Abstract
Providing suitable recommendations is of vital importance to improve the user satisfaction of music recommender systems. Here, users often listen to the same track repeatedly and appreciate recommendations of the same song multiple times. Thus, accounting for users' relistening behavior is critical for music recommender systems. In this paper, we describe a psychology-informed approach to model and predict music relistening behavior that is inspired by studies in music psychology, which relate music preferences to human memory. We adopt a well-established psychological theory of human cognition that models the operations of human memory, i.e., Adaptive Control of Thought-Rational (ACT-R). In contrast to prior work, which uses only the base-level component of ACT-R, we utilize five components of ACT-R, i.e., base-level, spreading, partial matching, valuation, and noise, to investigate…
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