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Jia-Feng Guo, Yi-Qing Zhou. Preface[J]. Journal of Computer Science and Technology, 2022, 37(4): 741-742. DOI: 10.1007/s11390-022-0004-9
Citation: Jia-Feng Guo, Yi-Qing Zhou. Preface[J]. Journal of Computer Science and Technology, 2022, 37(4): 741-742. DOI: 10.1007/s11390-022-0004-9

Preface

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  • Author Bio:

    Jia-Feng Guo is currently a researcher in the Institute of ComputingTechnology, Chinese Academy of Sciences, Beijing, as well as a professorin University of Chinese Academy of Sciences, Beijing. He received hisPh.D. degrees from University of Chinese Academy of Sciences, Beijing,in 2009. His major research interests include information retrieval andbig data analysis. He currently serves on the editorial board of severaljournals, including ACM Transactions on Information Systems, InformationRetrieval Journal, and Journal of Computer Science and Technology.

    Yi-Qing Zhou received her B.S. degree in communication andinformation engineering and her M.S. degree in signal and informationprocessing from the Southeast University, Nanjing, in 1997 and 2000,respectively. In 2004, she received her Ph.D. degree in electrical andelectronic engineering from the University of Hong Kong, Hong Kong. Nowshe is a professor in Wireless Communication Research Center, Instituteof Computing Technology, Chinese Academy of Sciences. Dr. Zhou haspublished over 150 papers and four book/book chapters in the areas ofwireless mobile communications. Dr. Zhou is the associate/guest editorfor IEEE Internet of Things Journal, IEEE Trans. Vehicular Technology(TVT), IEEE JSAC (Special Issue on “Broadband Wireless Communication forHigh Speed Vehicles” and “Virtual MIMO”), ETT and JCST. She is also theTPC co-chair of ChinaCom2012, executive co-chair of IEEE ICC2019,symposia co-chair of ICC2015, symposium co-chair of GLOBECOM2016 andICC2014, tutorial co-chair of ICCC2014 and WCNC2013, and the workshopco-chair of SmartGridComm2012 and GlobeCom2011. She received Best PaperAwards from WCSP2019, IEEE ICC2018, ISCIT2016, PIMRC2015, ICCS2014 andWCNC2013. She also received the 2014 Top 15 Editor Award from IEEE TVTand the 2016–2017 Top Editors of ETT.

  • Published Date: July 24, 2022
  • Xia Peisu Young Scholars Forum 2021 is intended to promote thecommunication between young scholars world wide and exchange novelresearch ideas and methods in the frontier of computer science. Theforum is named after Prof. Xia Peisu, an academician of the ChineseAcademy of Sciences, who made a great contribution to the development ofcomputational technologies and participated in building the firstcomputer in China. Prof. Xia Peisu has also founded the first Englishcomputer journal of China, i.e., Journal of Computer Science andTechnology (JCST), in 1986.
    The main topic of Xia Peisu Young Scholars Forum 2021 is “Network,Data and AI”, which aims to discuss the opportunities and challenges indeveloping the big data, artificial intelligence and next-generationnetwork technologies. With the development of information technologies,we are entering an age of intelligence where network, data and AI havebecome indispensable elements which are intertwined closely and havehuge impact on the human society. The intensive discussions on the threetopics in this forum help promote the cross-disciplinary researchbetween these fields. After the forum, we invited the participants tosubmit their work to JCST. After two rounds of peer-review, eight paperswere selected for the Special Section of Xia Peisu Young Scholars Forum2021.
    In this special section, there are three papers on the jointoptimization of applications and networking. Traditionally, applicationstreat networks as a black box, which mainly provides informationtransport services. Meanwhile, networking optimizations focus on “lowerlatency and higher throughput” for decades. However, networking's realand only mission should be making applications better, and networkingschemes should be jointly optimized with applications. Being aware ofoccasional packet corruptions' detrimental effects to RDMA-enabledapplications, Gao et al.'s work strives to shrinkthe flow completion time by orders of magnitude. By understandingapplication semantics from passing-through packets, Dong etal.'s work could improve data-parallel jobs' performance byover 10%. Wang et al.'s workintelligently places energy harvesting nodes that can significantlyprolong the lifetime of a sensor service.
    Another two papers are related to distributive networking, which hasattracted much attention in recent years. Shi etal.'s work focuses on the performance assessment ofdecentralized clouds and proposes a robust assessment solution RODE.Experiments show that RODE can accurately monitor the performance ofcloud providers. Meanwhile, considering distributive platforms,iterative algorithms are promising to analyze large scale data. Yu et al.'s work designs an efficient executionmanager Aiter-R, which can be integrated into existing delta-basediterative processing to achieve maximum efficiency, with the proposedgroup-based iterative execution approach. Experimental results show thatAiter-R outperforms state-of-the-art solutions.
    Besides, there are three papers related to the topics of big data andartificial intelligence, including information retrieval, recommendationand text summarization. Wu et al.'s work focuseson the document ranking in information retrieval and investigates howusers' information gain accumulates both within a document and across aquery session. The proposed model PCGM, which incorporates thedocument-level and query-level passage cumulative gain, outperformsmultiple advanced ranking baselines and the predicted results are highlyconsistent with users' preferences. Jiang et al.'swork aims to improve the friend recommendation with fine-grainedevolving interests and proposes an LPRF-F framework which explores thelearning interest tags and time features to predict the user interests.Extensive experiments validate the effectiveness of this work as well asthe effects of social influence and cross-domain interest. Jiang et al.'s another paper strives to better evaluatethe performance of abstractive summarization models by consideringngram-based semantic information. Empirical results demonstrate theproposed evaluation metrics are well correlated with humanjudgements.
    Five papers of this special section are published in Vol.37, No.4,2022, and the other three, i.e., the papers of Shi etal. and Jiang et al., will be includedin Vol.37, No.5, 2022.
    We hope that readers will enjoy this special section. We are gratefulto all the paper authors and reviewers for their valuablecontributions.
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