MPCM: Multi-modal User Portrait Classification Model Based on Collaborative Learning

IF 2 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS
Jinhang Liu, Lin Li
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Abstract

A social-media user portrait is an important means of improving the quality of an Internet information service. Current user profiling methods do not discriminate the emotional differences of users of different genders and ages on social media against a background of multi-modality and a lack of domain sentiment labels. This paper adopts the sentiment analysis of images and text to improve label classification, incorporating gender and age differences in the sentiment analysis of multi-modal social-media user profiles. In the absence of domain sentiment labels, instance transfer learning technology is used to express the learning method with the sentiment of text and images; the semantic association learning of multi-modal data of graphics and text is realized; and a multi-modal attention mechanism is introduced to establish the hidden image and text. Alignment relationships are used to address the semantic and modal gaps between modalities. A multi-modal user portrait label classification model (MPCM) is constructed. In an analysis of the sentiment data of User users on Facebook, Twitter, and News, the MPCM method is compared with the naive Bayes, Latent Dirichlet Allocation, Tweet-LDA and LUBD-CM(3) methods in terms of accuracy, precision, recall and the FL-score. At a 95% confidence, the performance is improved by 1% to 4% by using the MPCM method.
MPCM:基于协作学习的多模态用户肖像分类模型
社交媒体用户画像是提高互联网信息服务质量的重要手段。在多模态和缺乏领域情感标签的背景下,目前的用户画像方法无法区分社交媒体上不同性别和年龄用户的情感差异。本文采用图像和文本的情感分析来改进标签分类,将性别和年龄差异纳入多模态社交媒体用户资料的情感分析中。在缺乏领域情感标签的情况下,采用实例迁移学习技术表达文本和图像情感的学习方法,实现图形和文本多模态数据的语义关联学习,并引入多模态关注机制建立隐藏的图像和文本。对齐关系用于解决模态之间的语义和模态差距。构建了多模态用户肖像标签分类模型(MPCM)。在对 Facebook、Twitter 和 News 上的用户情感数据进行分析时,MPCM 方法在准确度、精确度、召回率和 FL 分数方面与天真贝叶斯、潜在德里希特分配、Tweet-LDA 和 LUBD-CM(3) 方法进行了比较。在置信度为 95% 的情况下,使用 MPCM 方法可将性能提高 1%-4%。
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来源期刊
Information Technology and Control
Information Technology and Control 工程技术-计算机:人工智能
CiteScore
2.70
自引率
9.10%
发文量
36
审稿时长
12 months
期刊介绍: Periodical journal covers a wide field of computer science and control systems related problems including: -Software and hardware engineering; -Management systems engineering; -Information systems and databases; -Embedded systems; -Physical systems modelling and application; -Computer networks and cloud computing; -Data visualization; -Human-computer interface; -Computer graphics, visual analytics, and multimedia systems.
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