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Dive into the research topics where Rui She is active.

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Featured researches published by Rui She.


international conference on communications | 2017

Focusing on a probability element: Parameter selection of message importance measure in big data

Rui She; Shanyun Liu; Yunquan Dong; Pingyi Fan

Message importance measure (MIM) is applicable to characterize the importance of information in the scenario of big data, similar to entropy in information theory. In fact, MIM with a variable parameter can make an effect on the characterization of distribution. Furthermore, by choosing an appropriate parameter of MIM, it is possible to emphasize the message importance of a certain probability element in a distribution. Therefore, parametric MIM can play a vital role in anomaly detection of big data by focusing on probability of an anomalous event. In this paper, we propose a parameter selection method of MIM focusing on a probability element and then present its major properties. In addition, we discuss the parameter selection with prior probability, and investigate the availability in a statistical processing model of big data for anomaly detection problem.


Entropy | 2018

Recognizing Information Feature Variation: Message Importance Transfer Measure and Its Applications in Big Data

Rui She; Shanyun Liu; Pingyi Fan

Information transfer that characterizes the information feature variation can have a crucial impact on big data analytics and processing. Actually, the measure for information transfer can reflect the system change from the statistics by using the variable distributions, similar to Kullback-Leibler (KL) divergence and Renyi divergence. Furthermore, to some degree, small probability events may carry the most important part of the total message in an information transfer of big data. Therefore, it is significant to propose an information transfer measure with respect to the message importance from the viewpoint of small probability events. In this paper, we present the message importance transfer measure (MITM) and analyze its performance and applications in three aspects. First, we discuss the robustness of MITM by using it to measuring information distance. Then, we present a message importance transfer capacity by resorting to the MITM and give an upper bound for the information transfer process with disturbance. Finally, we apply the MITM to discuss the queue length selection, which is the fundamental problem of caching operation on mobile edge computing.


IEEE Access | 2017

Amplifying Inter-Message Distance: On Information Divergence Measures in Big Data

Rui She; Shanyun Liu; Pingyi Fan


IEEE Transactions on Communications | 2018

Non-parametric Message Importance Measure: Storage Code Design and Transmission Planning for Big Data

Shanyun Liu; Rui She; Pingyi Fan; Khaled Ben Letaief


asia-pacific conference on communications | 2017

Non-parametric message important measure: Compressed storage design for big data in wireless communication systems

Shanyun Liu; Rui She; Pingyi Fan; Jiaxun Lu


international conference on wireless communications and mobile computing | 2018

Big Data Viewpoint On Channel Information Measures Based on ACE Algorithm

Shanyun Liu; Rui She; Jiaxun Lu; Pingyi Fan


international conference on wireless communications and mobile computing | 2018

A Switch to the Concern of User: Importance Coefficient in Utility Distribution and Message Importance Measure

Shanyun Liu; Rui She; Shuo Wan; Pingyi Fan; Yunquan Dong


arXiv: Information Theory | 2018

State Variation Mining: On Information Divergence with Message Importance in Big Data.

Rui She; Shanyun Liu; Pingyi Fan


arXiv: Information Theory | 2018

How Many Samples Required in Big Data Collection: A Differential Message Importance Measure.

Shanyun Liu; Rui She; Pingyi Fan


IEEE Access | 2018

Differential Message Importance Measure: A New Approach to the Required Sampling Number in Big Data Structure Characterization

Shanyun Liu; Rui She; Pingyi Fan

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Yunquan Dong

Nanjing University of Information Science and Technology

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Khaled Ben Letaief

Hong Kong University of Science and Technology

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