全文获取类型
收费全文 | 659篇 |
免费 | 22篇 |
国内免费 | 45篇 |
专业分类
教育 | 212篇 |
科学研究 | 183篇 |
体育 | 11篇 |
综合类 | 16篇 |
文化理论 | 2篇 |
信息传播 | 302篇 |
出版年
2023年 | 5篇 |
2022年 | 15篇 |
2021年 | 30篇 |
2020年 | 41篇 |
2019年 | 29篇 |
2018年 | 22篇 |
2017年 | 19篇 |
2016年 | 23篇 |
2015年 | 30篇 |
2014年 | 49篇 |
2013年 | 56篇 |
2012年 | 77篇 |
2011年 | 75篇 |
2010年 | 34篇 |
2009年 | 45篇 |
2008年 | 44篇 |
2007年 | 37篇 |
2006年 | 26篇 |
2005年 | 20篇 |
2004年 | 21篇 |
2003年 | 13篇 |
2002年 | 6篇 |
2001年 | 7篇 |
2000年 | 2篇 |
排序方式: 共有726条查询结果,搜索用时 54 毫秒
721.
《Information processing & management》2023,60(3):103331
Sequential recommendation models a user’s historical sequence to predict future items. Existing studies utilize deep learning methods and contrastive learning for data augmentation to alleviate data sparsity. However, these existing methods cannot learn accurate high-quality item representations while augmenting data. In addition, they usually ignore data noise and user cold-start issues. To solve the above issues, we investigate the possibility of Generative Adversarial Network (GAN) with contrastive learning for sequential recommendation to balance data sparsity and noise. Specifically, we propose a new framework, Enhanced Contrastive Learning with Generative Adversarial Network for Sequential Recommendation (ECGAN-Rec), which models the training process as a GAN and recommendation task as the main task of the discriminator. We design a sequence augmentation module and a contrastive GAN module to implement both data-level and model-level augmentations. In addition, the contrastive GAN learns more accurate high-quality item representations to alleviate data noise after data augmentation. Furthermore, we propose an enhanced Transformer recommender based on GAN to optimize the performance of the model. Experimental results on three open datasets validate the efficiency and effectiveness of the proposed model and the ability of the model to balance data noise and data sparsity. Specifically, the improvement of ECGAN-Rec in two evaluation metrics (HR@N and NDCG@N) compared to the state-of-the-art model performance on the Beauty, Sports and Yelp datasets are 34.95%, 36.68%, and 13.66%, respectively. Our implemented model is available via https://github.com/nishawn/ECGANRec-master. 相似文献
722.
《Information processing & management》2023,60(5):103434
This paper focuses on personalized outfit generation, aiming to generate compatible fashion outfits catering to given users. Personalized recommendation by generating outfits of compatible items is an emerging task in the recommendation community with great commercial value but less explored. The task requires to explore both user-outfit personalization and outfit compatibility, any of which is challenging due to the huge learning space resulted from large number of items, users, and possible outfit options. To specify the user preference on outfits and regulate the outfit compatibility modeling, we propose to incorporate coordination knowledge in fashion. Inspired by the fact that users might have coordination preference in terms of category combination, we first define category combinations as templates and propose to model user-template relationship to capture users’ coordination preferences. Moreover, since a small number of templates can cover the majority of fashion outfits, leveraging templates is also promising to guide the outfit generation process. In this paper, we propose Template-guided Outfit Generation (TOG) framework, which unifies the learning of user-template interaction, user–item interaction and outfit compatibility modeling. The personal preference modeling and outfit generation are organically blended together in our problem formulation, and therefore can be achieved simultaneously. Furthermore, we propose new evaluation protocols to evaluate different models from both the personalization and compatibility perspectives. Extensive experiments on two public datasets have demonstrated that the proposed TOG can achieve preferable performance in both evaluation perspectives, namely outperforming the most competitive baseline BGN by 7.8% and 10.3% in terms of personalization precision on iFashion and Polyvore datasets, respectively, and improving the compatibility of the generated outfits by over 2%. 相似文献
723.
《Information processing & management》2023,60(5):103416
Recently, graph neural network (GNN) has been widely used in sequential recommendation because of its powerful ability to capture high-order collaborative relations, greatly promoting recommendation performance. However, some existing GNN-based methods fail to make full use of multiple relevant features of nodes and ignore the impact of semantic association between nodes on extracting user preferences. To this end, we propose a multi-feature fused collaborative attention network MASR, which sufficiently learns the temporal and positional features of nodes, and innovatively measures the importance of these two features for analyzing the nodes’ dynamic patterns. In addition, we incorporate semantic-enriched contrastive learning into collaborative filtering to enhance the semantic association between nodes and reduce the noise from the structural neighborhood, which has a positive effect on the sequential recommendation. Compared with the baseline models, the performance of MASR on MovieLens, CDs and Beauty datasets is improved by 2.0%, 2.1% and 1.7% respectively, proving its effectiveness in the sequential recommendation. 相似文献
724.
基于数据挖掘的图书智能推荐系统研究 总被引:2,自引:0,他引:2
针对目前传统数字图书馆无法为用户提供准确个性的图书推荐服务的问题,提出构建基于数据挖掘技术的图书智能推荐系统,简单分析数据挖掘技术中关联规则技术适用图书推荐的原因和相关概念,并且对该系统的框架进行研究,最后通过实验,运用数据挖掘软件对真实的借阅记录进行关联规则挖掘,得出关联规则作为图书智能推荐系统的关键技术是行之有效的结论。 相似文献
725.
726.
图书馆荐购系统研究现状、趋势与启示 总被引:1,自引:0,他引:1
赵英 《大学图书情报学刊》2021,39(2):82-87
采用文献调查法和文献计量法,梳理图书馆荐购系统研究现状,分析荐购系统产生与发展的驱动因素、荐购系统类型及其实现关键,并在此基础上探索荐购系统未来的发展趋势,为后续荐购系统的实践和研究提供参考。 相似文献