Learning Partially Aligned Item Representation for Cross-Domain Sequential Recommendation
- URL: http://arxiv.org/abs/2405.12473v3
- Date: Wed, 21 Aug 2024 06:31:40 GMT
- Title: Learning Partially Aligned Item Representation for Cross-Domain Sequential Recommendation
- Authors: Mingjia Yin, Hao Wang, Wei Guo, Yong Liu, Zhi Li, Sirui Zhao, Zhen Wang, Defu Lian, Enhong Chen,
- Abstract summary: Cross-domain sequential recommendation aims to uncover and transfer users' sequential preferences across domains.
misaligned item representations can potentially lead to sub-optimal sequential modeling and user representation alignment.
We propose a model-agnostic framework called textbfCross-domain item representation textbfAlignment for textbfCross-textbfDomain textbfSequential textbfRecommendation.
- Score: 72.73379646418435
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Cross-domain sequential recommendation (CDSR) aims to uncover and transfer users' sequential preferences across multiple recommendation domains. While significant endeavors have been made, they primarily concentrated on developing advanced transfer modules and aligning user representations using self-supervised learning techniques. However, the problem of aligning item representations has received limited attention, and misaligned item representations can potentially lead to sub-optimal sequential modeling and user representation alignment. To this end, we propose a model-agnostic framework called \textbf{C}ross-domain item representation \textbf{A}lignment for \textbf{C}ross-\textbf{D}omain \textbf{S}equential \textbf{R}ecommendation (\textbf{CA-CDSR}), which achieves sequence-aware generation and adaptively partial alignment for item representations. Specifically, we first develop a sequence-aware feature augmentation strategy, which captures both collaborative and sequential item correlations, thus facilitating holistic item representation generation. Next, we conduct an empirical study to investigate the partial representation alignment problem from a spectrum perspective. It motivates us to devise an adaptive spectrum filter, achieving partial alignment adaptively. Furthermore, the aligned item representations can be fed into different sequential encoders to obtain user representations. The entire framework is optimized in a multi-task learning paradigm with an annealing strategy. Extensive experiments have demonstrated that CA-CDSR can surpass state-of-the-art baselines by a significant margin and can effectively align items in representation spaces to enhance performance.
Related papers
- MISSRec: Pre-training and Transferring Multi-modal Interest-aware
Sequence Representation for Recommendation [61.45986275328629]
We propose MISSRec, a multi-modal pre-training and transfer learning framework for sequential recommendation.
On the user side, we design a Transformer-based encoder-decoder model, where the contextual encoder learns to capture the sequence-level multi-modal user interests.
On the candidate item side, we adopt a dynamic fusion module to produce user-adaptive item representation.
arXiv Detail & Related papers (2023-08-22T04:06:56Z) - Plug-and-Play Regulators for Image-Text Matching [76.28522712930668]
Exploiting fine-grained correspondence and visual-semantic alignments has shown great potential in image-text matching.
We develop two simple but quite effective regulators which efficiently encode the message output to automatically contextualize and aggregate cross-modal representations.
Experiments on MSCOCO and Flickr30K datasets validate that they can bring an impressive and consistent R@1 gain on multiple models.
arXiv Detail & Related papers (2023-03-23T15:42:05Z) - Towards Lightweight Cross-domain Sequential Recommendation via External
Attention-enhanced Graph Convolution Network [7.1102362215550725]
Cross-domain Sequential Recommendation (CSR) depicts the evolution of behavior patterns for overlapped users by modeling their interactions from multiple domains.
We introduce a lightweight external attention-enhanced GCN-based framework to solve the above challenges, namely LEA-GCN.
To further alleviate the framework structure and aggregate the user-specific sequential pattern, we devise a novel dual-channel External Attention (EA) component.
arXiv Detail & Related papers (2023-02-07T03:06:29Z) - A Clustering-guided Contrastive Fusion for Multi-view Representation
Learning [7.630965478083513]
We propose a deep fusion network to fuse view-specific representations into the view-common representation.
We also design an asymmetrical contrastive strategy that aligns the view-common representation and each view-specific representation.
In the incomplete view scenario, our proposed method resists noise interference better than those of our competitors.
arXiv Detail & Related papers (2022-12-28T07:21:05Z) - Framework-agnostic Semantically-aware Global Reasoning for Segmentation [29.69187816377079]
We propose a component that learns to project image features into latent representations and reason between them.
Our design encourages the latent regions to represent semantic concepts by ensuring that the activated regions are spatially disjoint.
Our latent tokens are semantically interpretable and diverse and provide a rich set of features that can be transferred to downstream tasks.
arXiv Detail & Related papers (2022-12-06T21:42:05Z) - Learning Vector-Quantized Item Representation for Transferable
Sequential Recommenders [33.406897794088515]
VQ-Rec is a novel approach to learning Vector-Quantized item representations for transferable sequential Recommender.
We propose an enhanced contrastive pre-training approach, using semi-synthetic and mixed-domain code representations as hard negatives.
arXiv Detail & Related papers (2022-10-22T00:43:14Z) - Towards Universal Sequence Representation Learning for Recommender
Systems [98.02154164251846]
We present a novel universal sequence representation learning approach, named UniSRec.
The proposed approach utilizes the associated description text of items to learn transferable representations across different recommendation scenarios.
Our approach can be effectively transferred to new recommendation domains or platforms in a parameter-efficient way.
arXiv Detail & Related papers (2022-06-13T07:21:56Z) - Beyond the Prototype: Divide-and-conquer Proxies for Few-shot
Segmentation [63.910211095033596]
Few-shot segmentation aims to segment unseen-class objects given only a handful of densely labeled samples.
We propose a simple yet versatile framework in the spirit of divide-and-conquer.
Our proposed approach, named divide-and-conquer proxies (DCP), allows for the development of appropriate and reliable information.
arXiv Detail & Related papers (2022-04-21T06:21:14Z) - AlignSeg: Feature-Aligned Segmentation Networks [109.94809725745499]
We propose Feature-Aligned Networks (AlignSeg) to address misalignment issues during the feature aggregation process.
Our network achieves new state-of-the-art mIoU scores of 82.6% and 45.95%, respectively.
arXiv Detail & Related papers (2020-02-24T10:00:58Z)
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.