Discriminative Tag Learning on YouTube Videos with Latent Sub-tags (DRAFT)
نویسندگان
چکیده
We consider the problem of content-based automated tag learning. In particular, we address semantic variations (sub-tags) of the tag. Each video in the training set is assumed to be associated with a sub-tag label, and we treat this sub-tag label as latent information. A latent learning framework based on LogitBoost is proposed, which jointly considers both the tag label and the latent sub-tag label. The latent sub-tag information is exploited in our framework to assist the learning of our end goal, i.e., tag prediction. We use the cowatch information to initialize the learning process. In experiments, we show that the proposed method achieves significantly better results over baselines on a large-scale testing video set which contains about 50 million YouTube videos.
منابع مشابه
Accurate Visual Features for Automatic Tag Correction in Videos
We present a new system for video auto tagging which aims at correcting the tags provided by users for videos uploaded on the Internet. Unlike most existing systems, in our proposal, we do not use the questionable textual information nor any supervised learning system to perform a tag propagation. We propose to compare directly the visual content of the videos described by different sets of fea...
متن کاملThe role of taxonomies in social media and the semantic web for health education. A study of SNOMED CT terms in YouTube health video tags.
BACKGROUND An increasing amount of health education resources for patients and professionals are distributed via social media channels. For example, thousands of health education videos are disseminated via YouTube. Often, tags are assigned by the disseminator. However, the lack of use of standardized terminologies in those tags and the presence of misleading videos make it particularly hard to...
متن کاملvExplorer: A Search Method to Find Relevant YouTube Videos for Health Researchers
Patients and caregivers are increasingly using online video sharing services, such as YouTube, to document experiences with a health condition. Despite the richness of shared information and social commentaries in such videos, there have been few systematic studies focused on the health content of such media. Finding related videos on YouTube can be challenging for researchers because of inadeq...
متن کاملTowards Boosting Video Popularity via Tag Selection
Video content abounds on the Web. Although viewers may reach items via referrals, a large portion of the audience comes from keywordbased search. Consequently, the textual features of multimedia content (e.g., title, description, tags) will directly impact the view count of a particular item, and ultimately the advertisement-generated revenue. This study makes progress on the problem of automat...
متن کاملThe Role of Taxonomies in Social Media and the Semantic Web for Health Education
Background: An increasing amount of health education resources for patients and professionals are distributed via social media channels. For example, thousands of health education videos are disseminated via YouTube. Often, tags are assigned by the disseminator. However, the lack of use of standardized terminologies in those tags and the presence of misleading videos make it particularly hard t...
متن کامل