DocumentCode :
3705627
Title :
Trending pool: Visual analytics for trending event compositions for time-series categorical log data
Author :
Yi-Chih Tsai; Liang-Chi Hsieh; Wen-Feng Cheng; Yin-Hsi Kuo; Winston Hsu; Wen-Chin Chen
Author_Institution :
National Taiwan University, Taipei, Taiwan
fYear :
2015
Firstpage :
221
Lastpage :
222
Abstract :
Although many visualization tools provide us plenty of ways to view the data, users can not easily find the trending events and their explanation from the data. In this work, we address the issue by leveraging the real music streaming log data as an example to better understand a million-scale dataset. Trending event explanation turns out to be challenging when it comes to categorical log data. Therefore, we propose to use a learning-based method with an interface design to uncover the trending event compositions for time-series categorical log data, which can be extend to other datasets, e.g., the hashtags in social media. First, we perform “trending pool” operation to save the memory and time cost. Second, we apply sparse coding to learn important trending candidate combination sets instead of traditional brute-force way or manual investigation for generating combinations. Besides the contributions above, we also observe some interesting user behaviors by exploring detected trending candidate combinations visually through our interface.
Keywords :
"Encoding","Market research","Visual analytics","Image color analysis","Layout","Learning systems","Music"
Publisher :
ieee
Conference_Titel :
Visual Analytics Science and Technology (VAST), 2015 IEEE Conference on
Type :
conf
DOI :
10.1109/VAST.2015.7347688
Filename :
7347688
Link To Document :
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