2021
DOI: 10.1109/jiot.2020.3037669
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6G-Enabled Short-Term Forecasting for Large-Scale Traffic Flow in Massive IoT Based on Time-Aware Locality-Sensitive Hashing

Abstract: With the advent of the Internet of Things (IoT) and the increasing popularity of the Intelligent Transportation System, a large number of sensing devices are installed on the road for monitoring traffic dynamics in real-time. These sensors can collect streaming traffic data distributed across different traffic sites, which constitute the main source of big traffic data.Analyzing and mining such a big traffic data in massive IoT can help traffic administrations to make scientific and reasonable traffic scheduli… Show more

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Cited by 37 publications
(18 citation statements)
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“…In addition, there are many other privacy-preservation techniques. Therefore, in the future work, we will further refine our method by integrating more privacy-preserving techniques such as Blockchain [30][31] , Differential Privacy [32][33][34] , Locality-Sensitive Hashing [35][36] and so on. At last, balancing multiple conflicting performances is necessary for a decision-making problem [37][38][39] .…”
Section: Discussionmentioning
confidence: 99%
“…In addition, there are many other privacy-preservation techniques. Therefore, in the future work, we will further refine our method by integrating more privacy-preserving techniques such as Blockchain [30][31] , Differential Privacy [32][33][34] , Locality-Sensitive Hashing [35][36] and so on. At last, balancing multiple conflicting performances is necessary for a decision-making problem [37][38][39] .…”
Section: Discussionmentioning
confidence: 99%
“…Many articles [191][192][193][194] in big data-driven and nonparametric model supported by 6G is suggested to extract comparable traffic patterns over time for accurate and efficient short-term traffic flow prediction in enormous IoT, which is mostly based on time-aware LSH, which is mainly based on time-aware LSH.…”
Section: Resource Allocationmentioning
confidence: 99%
“…In general, there are always some noises caused by uncontrollable factors in traffic profiles. Therefore, we adopt the data preprocessing method in [15] and Z-score standardization technology [18] to reduce noises.…”
Section: Tensor Construction and Partitionmentioning
confidence: 99%
“…Besides, we adopt KNN (K-nearest neighbor method; benchmark method that cannot protect privacy), enhanced KNN [8] (based on KNN method enhanced by multiple technologies), and TracForet ime-LSH [15] (based on time-aware LSH) as comparative methods for experimental comparisons. Moreover, four competitive methods are measured in terms of four metrics, i.e., MAE (Mean Absolute Error, defined by Eq.…”
Section: Experimental Configurationsmentioning
confidence: 99%