A crowd-sourcing recommendation algorithm OPCA-CF using outer-product co-attention mechanism

IF 3 3区 材料科学 Q2 MATERIALS SCIENCE, CHARACTERIZATION & TESTING
Kejun Bi, Jingwen Liu, Qiwen Zhao, Yanru Chen, Bin Xing, Bing Guo
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Abstract

ABSTRACTWith the rapid development of information technology, crowd-sourcing technology is increasingly used in non-invasive monitoring in smart cities. Applying recommendation algorithms in crowd-sourcing can optimise resource allocation, improve task-matching accuracy and enhance participant satisfaction, whereas existing recommendation algorithms cannot be directly applied in crowd-sourcing, as such scenarios have unique features, such as task timeliness and multi-role users. Designed explicitly for crowd-sourcing scenarios, our OPCA-CF (Outer-product Co-attention Collaborative Filtering) algorithm is formed by an upgraded ItemCF (Item-based Collaborative Filtering) algorithm as main-network and OPCA (Outer-product Co-attention) mechanism as a sub-network. Firstly, ItemCF is improved through attribute-level task feature learning, new-role feature and weighted cross-entropy in the loss function. Most importantly, we propose OPCA using outer-product, while the existing co-attention mechanism only uses inner-product. Compared with the best existing algorithm using real-world datasets, OPCA-CF’s performance is proved to be superior by 1.24%, 4.25% and 5.35%, with binary classification indicators AUC (Area under Curve), recommended Lists related indicators HR (Hit Ratio) and MRR (Mean Reciprocal Rank), respectively. All the performance indicators verified the effectiveness of the OPCA-CF algorithm.KEYWORDS: Recommendation algorithmattention mechanismcrowd-sourcingcollaborative filtering Disclosure statementNo potential conflict of interest was reported by the author(s).Additional informationFundingThis work was supported in part by the National Natural Science Foundation of China under Grant No. 62072319; the Sichuan Science and Technology Program under Grant No. 2023YFQ0022, 2022YFG0041, 2022YFG0155 and 2022YFG0157; the Luzhou Science and Technology Innovation R&D Program under Grant No. 2022CDLZ-6.
基于产品外共同关注机制的众包推荐算法OPCA-CF
【摘要】随着信息技术的飞速发展,众包技术越来越多地应用于智慧城市的无创监测。在众包场景中应用推荐算法可以优化资源分配,提高任务匹配精度,提高参与者满意度,但由于众包场景具有任务时效性和多角色用户等特点,现有推荐算法无法直接应用于众包场景。我们的OPCA- cf (Outer-product Co-attention Collaborative Filtering)算法是专门为众包场景设计的,由升级后的ItemCF (Item-based Collaborative Filtering)算法作为主网和OPCA (Outer-product Co-attention)机制作为子网组成。首先,通过属性级任务特征学习、新角色特征和损失函数加权交叉熵对ItemCF进行改进;最重要的是,我们提出OPCA使用外积,而现有的共注意机制只使用内积。与使用真实数据集的现有最佳算法相比,OPCA-CF在二元分类指标AUC (Area under Curve)、推荐列表相关指标HR (Hit Ratio)和MRR (Mean Reciprocal Rank)下的性能分别优于1.24%、4.25%和5.35%。所有性能指标验证了OPCA-CF算法的有效性。关键词:推荐算法关注机制众包协同过滤披露声明作者未报告潜在的利益冲突。本研究得到国家自然科学基金项目资助(No. 62072319);四川省科技计划项目(2023YFQ0022、2022YFG0041、2022YFG0155、2022YFG0157);泸州市科技创新发展计划(2022CDLZ-6)
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来源期刊
Nondestructive Testing and Evaluation
Nondestructive Testing and Evaluation 工程技术-材料科学:表征与测试
CiteScore
4.30
自引率
11.50%
发文量
57
审稿时长
4 months
期刊介绍: Nondestructive Testing and Evaluation publishes the results of research and development in the underlying theory, novel techniques and applications of nondestructive testing and evaluation in the form of letters, original papers and review articles. Articles concerning both the investigation of physical processes and the development of mechanical processes and techniques are welcomed. Studies of conventional techniques, including radiography, ultrasound, eddy currents, magnetic properties and magnetic particle inspection, thermal imaging and dye penetrant, will be considered in addition to more advanced approaches using, for example, lasers, squid magnetometers, interferometers, synchrotron and neutron beams and Compton scattering. Work on the development of conventional and novel transducers is particularly welcomed. In addition, articles are invited on general aspects of nondestructive testing and evaluation in education, training, validation and links with engineering.
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