LEADER 02840nam 2200373 450 001 9910412104903321 005 20230831112114.0 024 7 $a10.1145/3326937 035 $a(CKB)5280000000242933 035 $a(NjHacI)995280000000242933 035 $a(EXLCZ)995280000000242933 100 $a20230831d2019 uy 0 101 0 $aeng 135 $aur||||||||||| 181 $ctxt$2rdacontent 182 $cc$2rdamedia 183 $acr$2rdacarrier 200 10$aDLP-KDD '19 $eProceedings of the 1st International Workshop on Deep Learning Practice for High-Dimensional Sparse Data /$fXiaoqiang Zhu [and eight others] 210 1$aNew York, NY :$cAssociation for Computing Machinery,$d2019. 215 $a1 online resource (109 pages) 311 $a1-4503-6783-6 330 $aIn the increasingly digitalized world, it is of utmost importance for various applications to harness the ability to process, understand, and exploit data collected from the Internet. For instance, in customer-centric applications such as personalized recommendation, online advertising, and search engines, interest/intention modeling from customers' behavioral data can not only significantly enhance user experiences but also greatly contribute to revenues. Recently, we have witnessed that Deep Learning-based approaches began to empower these internet- scale applications by better leveraging the massive data. However, the data in these internet-scale applications are high dimensional and extremely sparse, which makes it different from many applications with dense data such as image classification and speech recognition where Deep Learning-based approaches have been extensively studied. For example, the training samples of a typical click-through rate (CTR) prediction task often involve billions of sparse features, how to mine, model and inference from such data becomes an interesting problem, and how to leverage such data in Deep Learning could be a new research direction. The characteristics of such data pose unique challenges to the adoption of Deep Learning in these applications, including modeling, training, and online serving, etc. More and more communities from both academia and industry have initiated the endeavors to solve these challenges. We organized this workshop to provide a venue for both the research and engineering communities to discuss the challenges, opportunities, and new ideas in the practice of Deep Learning on high-dimensional sparse data. 606 $aData mining$vCongresses 606 $aKnowledge management$vCongresses 615 0$aData mining 615 0$aKnowledge management 676 $a006.312 700 $aZhu$b Xiaoqiang$01421484 801 0$bNjHacI 801 1$bNjHacl 906 $aBOOK 912 $a9910412104903321 996 $aDLP-KDD '19$93542886 997 $aUNINA