基于融合的多模式用户生成社交网络内容表示学习模型

IF 1.5 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
R. J. Martin, Rajvardhan Oak, Mukesh Soni, V. Mahalakshmi, Arsalan Muhammad Soomar, Anjali Joshi
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引用次数: 0

摘要

随着移动网络和app的发展,用户生成内容(user-generated content, UGC)成为提高个性化服务质量的重要基础,UGC包含用户评论、标签、分数、图片、视频等多源异构数据。由于数据的多源异构特性,大数据融合既有希望,也有缺点。随着移动网络和应用的兴起,包含评分、评分、分数、图片、视频等多源异构数据的UGC变得越来越重要。这些信息对于提高定制服务的质量非常重要。应用成功的关键是对多源异构UGC进行融合和矢量化的表征学习。多源文本融合和表示学习已成为其应用的关键。为此,提出了一种多源文本和图像的融合表示学习方法。与拼接和融合相比,卷积融合技术可以考虑到各种尺寸的不同数据特征。本研究受卷积神经网络的启发,提出了一种基于卷积运算的数据特征融合策略。利用Doc2vec和LDA模型,给出了多源文本的矢量化表示,并利用深度卷积网络进行了求解。最后,基于UGC矢量化表示项目的分类准确率,将本文算法应用于亚马逊包含UGC内容的商品数据集,并展示了本文算法的可行性和影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusion-based Representation Learning Model for Multimode User-generated Social Network Content
As mobile networks and APPs are developed, user-generated content (UGC), which includes multi-source heterogeneous data like user reviews, tags, scores, images, and videos, has become an essential basis for improving the quality of personalized services. Due to the multi-source heterogeneous nature of the data, big data fusion offers both promise and drawbacks. With the rise of mobile networks and applications, UGC, which includes multi-source heterogeneous data including ratings, marks, scores, images, and videos, has gained importance. This information is very important for improving the calibre of customized services. The key to the application's success is representational learning of fusing and vectorization on the multi-source heterogeneous UGC. Multi-source text fusion and representation learning have become the key to its application. In this regard, a fusion representation learning for multi-source text and image is proposed. The convolutional fusion technique, in contrast to splicing and fusion, may take into consideration the varied data characteristics in each size. This research proposes a new data feature fusion strategy based on the convolution operation, which was inspired by the convolutional neural network. Using Doc2vec and LDA model, the vectorized representation of multi-source text is given, and the deep convolutional network is used to obtain it. Finally, the proposed algorithm is applied to Amazon's commodity dataset containing UGC content based on the classification accuracy of UGC vectorized representation items and shows the feasibility and impact of the proposed algorithm.
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来源期刊
ACM Journal of Data and Information Quality
ACM Journal of Data and Information Quality COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.10
自引率
4.80%
发文量
0
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