Latest Research Papers
2024-12-18
arXiv
SAFERec: Self-Attention and Frequency Enriched Model for Next Basket Recommendation
SAFERec, a new algorithm for Next-Basket Recommendation, enhances transformer-based models by incorporating item frequency information, improving their performance on NBR tasks. Experiments show SAFERec outperforms other baselines, with an 8% improvement in Recall@10.
Transformer-based approaches such as BERT4Rec and SASRec demonstrate strong
performance in Next Item Recommendation (NIR) tasks. However, applying these
architectures to Next-Basket Recommendation (NBR) tasks, which often involve
highly repetitive interactions, is challenging due to the vast number of
possible item combinations in a basket. Moreover, frequency-based methods such
as TIFU-KNN and UP-CF still demonstrate strong performance in NBR tasks,
frequently outperforming deep-learning approaches. This paper introduces
SAFERec, a novel algorithm for NBR that enhances transformer-based
architectures from NIR by incorporating item frequency information,
consequently improving their applicability to NBR tasks. Extensive experiments
on multiple datasets show that SAFERec outperforms all other baselines,
specifically achieving an 8\% improvement in Recall@10.
2024-04-25
arXiv
A Survey of Generative Search and Recommendation in the Era of Large Language Models
The paper surveys the emerging paradigm of generative search and recommendation driven by large language models, providing a unified framework to categorize and analyze existing works. It highlights unique challenges, open problems, and future directions in this field.
With the information explosion on the Web, search and recommendation are
foundational infrastructures to satisfying users' information needs. As the two
sides of the same coin, both revolve around the same core research problem,
matching queries with documents or users with items. In the recent few decades,
search and recommendation have experienced synchronous technological paradigm
shifts, including machine learning-based and deep learning-based paradigms.
Recently, the superintelligent generative large language models have sparked a
new paradigm in search and recommendation, i.e., generative search (retrieval)
and recommendation, which aims to address the matching problem in a generative
manner. In this paper, we provide a comprehensive survey of the emerging
paradigm in information systems and summarize the developments in generative
search and recommendation from a unified perspective. Rather than simply
categorizing existing works, we abstract a unified framework for the generative
paradigm and break down the existing works into different stages within this
framework to highlight the strengths and weaknesses. And then, we distinguish
generative search and recommendation with their unique challenges, identify
open problems and future directions, and envision the next information-seeking
paradigm.