To Search or to Recommend: Predicting Open-App Motivation with Neural Hawkes Process
Incorporating Search and Recommendation (S&R) services within a singular application is prevalent in online platforms, leading to a new task termed open-app motivation prediction, which aims to predict whether users initiate the application with the specific intent of information searching, or t...
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Zusammenfassung: | Incorporating Search and Recommendation (S&R) services within a singular
application is prevalent in online platforms, leading to a new task termed
open-app motivation prediction, which aims to predict whether users initiate
the application with the specific intent of information searching, or to
explore recommended content for entertainment. Studies have shown that
predicting users' motivation to open an app can help to improve user engagement
and enhance performance in various downstream tasks. However, accurately
predicting open-app motivation is not trivial, as it is influenced by
user-specific factors, search queries, clicked items, as well as their temporal
occurrences. Furthermore, these activities occur sequentially and exhibit
intricate temporal dependencies. Inspired by the success of the Neural Hawkes
Process (NHP) in modeling temporal dependencies in sequences, this paper
proposes a novel neural Hawkes process model to capture the temporal
dependencies between historical user browsing and querying actions. The model,
referred to as Neural Hawkes Process-based Open-App Motivation prediction model
(NHP-OAM), employs a hierarchical transformer and a novel intensity function to
encode multiple factors, and open-app motivation prediction layer to integrate
time and user-specific information for predicting users' open-app motivations.
To demonstrate the superiority of our NHP-OAM model and construct a benchmark
for the Open-App Motivation Prediction task, we not only extend the public S&R
dataset ZhihuRec but also construct a new real-world Open-App Motivation
Dataset (OAMD). Experiments on these two datasets validate NHP-OAM's
superiority over baseline models. Further downstream application experiments
demonstrate NHP-OAM's effectiveness in predicting users' Open-App Motivation,
highlighting the immense application value of NHP-OAM. |
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DOI: | 10.48550/arxiv.2404.03267 |