Generating Self-Serendipity Preference in Recommender Systems for
Addressing Cold Start Problems
- URL: http://arxiv.org/abs/2204.12651v1
- Date: Wed, 27 Apr 2022 01:29:47 GMT
- Title: Generating Self-Serendipity Preference in Recommender Systems for
Addressing Cold Start Problems
- Authors: Yuanbo Xu, Yongjian Yang, En Wang
- Abstract summary: serendipity-oriented recommender system generates users' self-serendipity preferences to enhance recommendation performance.
Model extracts users' interest and satisfaction preferences, generates virtual but convincible neighbors' preferences from themselves, and achieves their self-serendipity preference.
- Score: 9.281057513518498
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Classical accuracy-oriented Recommender Systems (RSs) typically face the
cold-start problem and the filter-bubble problem when users suffer the
familiar, repeated, and even predictable recommendations, making them boring
and unsatisfied. To address the above issues, serendipity-oriented RSs are
proposed to recommend appealing and valuable items significantly deviating from
users' historical interactions and thus satisfying them by introducing
unexplored but relevant candidate items to them. In this paper, we devise a
novel serendipity-oriented recommender system (\textbf{G}enerative
\textbf{S}elf-\textbf{S}erendipity \textbf{R}ecommender \textbf{S}ystem,
\textbf{GS$^2$-RS}) that generates users' self-serendipity preferences to
enhance the recommendation performance. Specifically, this model extracts
users' interest and satisfaction preferences, generates virtual but convincible
neighbors' preferences from themselves, and achieves their self-serendipity
preference. Then these preferences are injected into the rating matrix as
additional information for RS models. Note that GS$^2$-RS can not only tackle
the cold-start problem but also provides diverse but relevant recommendations
to relieve the filter-bubble problem. Extensive experiments on benchmark
datasets illustrate that the proposed GS$^2$-RS model can significantly
outperform the state-of-the-art baseline approaches in serendipity measures
with a stable accuracy performance.
Related papers
- Uncertainty-Penalized Direct Preference Optimization [52.387088396044206]
We develop a pessimistic framework for DPO by introducing preference uncertainty penalization schemes.
The penalization serves as a correction to the loss which attenuates the loss gradient for uncertain samples.
We show improved overall performance compared to vanilla DPO, as well as better completions on prompts from high-uncertainty chosen/rejected responses.
arXiv Detail & Related papers (2024-10-26T14:24:37Z) - The Nah Bandit: Modeling User Non-compliance in Recommendation Systems [2.421459418045937]
Expert with Clustering (EWC) is a hierarchical approach that incorporates feedback from both recommended and non-recommended options to accelerate user preference learning.
EWC outperforms both supervised learning and traditional contextual bandit approaches.
This work lays the foundation for future research in Nah Bandit, providing a robust framework for more effective recommendation systems.
arXiv Detail & Related papers (2024-08-15T03:01:02Z) - FedRec+: Enhancing Privacy and Addressing Heterogeneity in Federated
Recommendation Systems [15.463595798992621]
FedRec+ is an ensemble framework for federated recommendation systems.
It enhances privacy and reduces communication costs for edge users.
Experimental results demonstrate the state-of-the-art performance of FedRec+.
arXiv Detail & Related papers (2023-10-31T05:36:53Z) - BHEISR: Nudging from Bias to Balance -- Promoting Belief Harmony by
Eliminating Ideological Segregation in Knowledge-based Recommendations [5.795636579831129]
The main objective is to strike a belief balance for users while minimizing the detrimental influence caused by filter bubbles.
The BHEISR model amalgamates principles from nudge theory while upholding democratic and transparent principles.
arXiv Detail & Related papers (2023-07-06T06:12:37Z) - Rethinking Missing Data: Aleatoric Uncertainty-Aware Recommendation [59.500347564280204]
We propose a new Aleatoric Uncertainty-aware Recommendation (AUR) framework.
AUR consists of a new uncertainty estimator along with a normal recommender model.
As the chance of mislabeling reflects the potential of a pair, AUR makes recommendations according to the uncertainty.
arXiv Detail & Related papers (2022-09-22T04:32:51Z) - Control Variates for Slate Off-Policy Evaluation [112.35528337130118]
We study the problem of off-policy evaluation from batched contextual bandit data with multidimensional actions.
We obtain new estimators with risk improvement guarantees over both the PI and self-normalized PI estimators.
arXiv Detail & Related papers (2021-06-15T06:59:53Z) - PURS: Personalized Unexpected Recommender System for Improving User
Satisfaction [76.98616102965023]
We describe a novel Personalized Unexpected Recommender System (PURS) model that incorporates unexpectedness into the recommendation process.
Extensive offline experiments on three real-world datasets illustrate that the proposed PURS model significantly outperforms the state-of-the-art baseline approaches.
arXiv Detail & Related papers (2021-06-05T01:33:21Z) - Latent Unexpected Recommendations [89.2011481379093]
We propose to model unexpectedness in the latent space of user and item embeddings, which allows to capture hidden and complex relations between new recommendations and historic purchases.
In addition, we develop a novel Latent Closure (LC) method to construct hybrid utility function and provide unexpected recommendations based on the proposed model.
arXiv Detail & Related papers (2020-07-27T02:39:30Z) - Convolutional Gaussian Embeddings for Personalized Recommendation with
Uncertainty [17.258674767363345]
Most existing embedding based recommendation models use embeddings corresponding to a single fixed point in low-dimensional space.
We propose a unified deep recommendation framework employing Gaussian embeddings, which are proven adaptive to uncertain preferences.
Our framework adopts Monte-Carlo sampling and convolutional neural networks to compute the correlation between the objective user and the candidate item.
arXiv Detail & Related papers (2020-06-19T02:10:38Z) - Reward Constrained Interactive Recommendation with Natural Language
Feedback [158.8095688415973]
We propose a novel constraint-augmented reinforcement learning (RL) framework to efficiently incorporate user preferences over time.
Specifically, we leverage a discriminator to detect recommendations violating user historical preference.
Our proposed framework is general and is further extended to the task of constrained text generation.
arXiv Detail & Related papers (2020-05-04T16:23:34Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.