학술논문

Truncated SVD-based Feature Engineering for Short Video Understanding and Recommendation
Document Type
Conference
Source
2019 IEEE International Conference on Multimedia & Expo Workshops (ICMEW) Multimedia & Expo Workshops (ICMEW), 2019 IEEE International Conference on. :695-700 Jul, 2019
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Signal Processing and Analysis
Streaming media
Neural networks
Task analysis
Deep learning
Urban areas
Boosting
Decision trees
Short-Video-Recommendation,Deep-Learning,Gradient-Boosting-Decision-Tree
Language
Abstract
Short video app, like TikTok, has received wide acclaim due to the prevalence of social media and the availability of recording devices such as mobile phones. Moreover, with the advent of the big data age, the use of historical user behaviors from multi-modal resources plays a pivotal role in the video recommendation system. In the ICME 2019 Short Video Understanding Challenge, participants are asked to predict whether a user will finish and like a specific short video along with its multi-modal features, i.e., the problem is formulated as a click-through rate prediction task. In this paper, we present an ensemble of unconventional models to the task, including tailored neural networks structure based on Compressed Interaction Network (CIN) and Gradient Boosting Decision Trees (GDBTs) using classic SVD-based features. We achieved a weighted AUC score of 0.8029 and 0.8037 on the Public and Private Leaderboard of track2, respectively, and ended up with the 3rd place in the competition.