Author_Institution :
Nat. Lab. of Pattern Recognition, Inst. of Autom., Beijing, China
Abstract :
Nowadays, more and more people are engaged in social media to generate multimedia information, i.e, creating text and photo profiles and posting multimedia messages. Such multimodal social networking activities reveal multiple user attributes such as age, gender, and personal interest. Inferring user attributes is important for user profiling, retrieval, and personalization. Existing work is devoted to inferring user attributes independently and ignores the dependency relations between attributes. In this work, we investigate the problem of relational user attribute inference by exploring the relations between user attributes and extracting both lexical and visual features from online user-generated content. We systematically study six types of user attributes: gender, age, relationship, occupation, interest, and emotional orientation. In view of methodology, we propose a relational latent SVM (LSVM) model to combine a rich set of user features, attribute inference, and attribute relations in a unified framework. In the model, one attribute is selected as the target attribute and others are selected as the auxiliary attributes to assist the target attribute inference. The model infers user attributes and attribute relations simultaneously. Extensive experiments conducted on a collected dataset from Google+ with full attribute annotations demonstrate the effectiveness of the proposed approach in user attribute inference and attribute-based user retrieval.
Keywords :
feature extraction; information retrieval; multimedia systems; social networking (online); support vector machines; text analysis; Google+; LSVM; attribute-based user retrieval; auxiliary attributes; emotional orientation; lexical feature extraction; multimedia information; multimedia messages; multimodal social networking activities; online user-generated content; personalization; relational latent SVM; relational user attribute inference; social media; target attribute; target attribute inference; user age; user features; user gender; user interest; user occupation; user profiling; user relationship; visual feature extraction; Correlation; Feature extraction; Media; Multimedia communication; Social network services; Support vector machines; Visualization; Attribute relation; latent SVM (LSVM); user attribute inference;