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Research on Sampling Estimation Method for Complex Networks-Oriented

Published:19 April 2023Publication History

ABSTRACT

As an important innovation element in the new round of industrial revolution, big data plays an important role in the development of digital economy. As an important carrier of network digital platform economy, researchers have found that most of the real networks are neither traditional regular networks nor completely random networks, but complex networks with certain statistical rules. Complex network has the characteristics of small world and scale-free. Its network structure is complex, its scale is huge, and its individuals are independent and connected. At the same time, there are a large number of users in the network, carrying tens of thousands of information. The traditional network analysis method is not comprehensive, so it is difficult to grasp the whole picture of the network environment. Therefore, this paper introduces a method to solve the network data dilemma by improving the sampling estimation. The data information closely related to the research variables found in the network is introduced into the model-aided estimation method as auxiliary information, and the whole information is studied through the local information of the network. Facing the huge scale of network data, it is an important technology with high efficiency and low cost, which provides a way to quickly obtain data and analysis results.

References

  1. Chen M, Mao S, Liu Y. Big data: A survey. Mobile networks and applications, 2014, 19(2): 171-209.Google ScholarGoogle ScholarCross RefCross Ref
  2. Hansen M H,Hurwitz W N. The Problem of Non-Response in Sample Surveys. Journal of the American Statistical Association, 1946, 41(236): 517-529.Google ScholarGoogle ScholarCross RefCross Ref
  3. Bethlehem J G, Kersten H M P. On the treatment of nonresponse in sample Surve surveys. Journal of official statistics, 1985, 1(3): 287-300.Google ScholarGoogle Scholar
  4. Shu Yang, Jae Kwang Kim. Statistical data integration in survey sampling: a review. Japanese Journal of Statistics and Data Science, 2020, 3(2).Google ScholarGoogle Scholar
  5. Vincent Kyle, Thompson Steve. Estimating the Size and Distribution of Networked Populations with Snowball Sampling. Journal of Survey Statistics and Methodology, 2021, 10(2).Google ScholarGoogle Scholar
  6. Douglas D. Heckathorn, Christopher J. Cameron. Network Sampling: From Snowball and Multiplicity to Respondent-Driven Sampling. Annual Review of Sociology, 2017, 43(1).Google ScholarGoogle Scholar
  7. Hongyu Li. Research on sampling survey method based on social network in the context of big data. South China University of Technology, 2021.Google ScholarGoogle Scholar
  8. Breidt F J, Claeskens G and Opsomer J D. Model-assisted estimation for complex surveys using penalized splines. Biometrika, 2005, 92, 4, 831–846.Google ScholarGoogle ScholarCross RefCross Ref
  9. Ahmed N K, Neville J, Kompella R. Network Sampling:From Static to Streaming Graphs. Acm Transactions on Knowledge Discovery from Data, 2013, 8(2):1-56.Google ScholarGoogle Scholar
  10. Särndal C E, Swensson B, Wretman J. Model Assisted Survey Sampling. New York: Springer-Verlag Press, 1992: 219-242.Google ScholarGoogle ScholarCross RefCross Ref

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          icWCSN '23: Proceedings of the 2023 10th International Conference on Wireless Communication and Sensor Networks
          January 2023
          162 pages
          ISBN:9781450398466
          DOI:10.1145/3585967

          Copyright © 2023 ACM

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          Publication History

          • Published: 19 April 2023

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