Title: Probabilistic Reverse Nearest Neighbors on Uncertain Data Streams
Authors: Feng, Lin-Ru
Liu, Chuan-Ming
Lai, Chuan-Chi
電機工程學系
Department of Electrical and Computer Engineering
Keywords: reverse nearest neighbors;uncertain data;data streams;query processing;execution time
Issue Date: 1-Jan-2018
Abstract: hi these days, many applications of IoT, Big Data, and Cloud computing have been proposed and discussed. One of the common important issues in these applications is data processing. The data to be considered now have the properties of velocity, veracity, and volume. Uncertain data streams simultaneously have these properties. Reverse nearest neighbors (RNN) query finds the objects that have the query as the nearest object and plays an important in many applications. We thus study probabilistic RNN (PRNN) query over the uncertain data streams in this paper. Due to the uncertainty. the computation overhead for updates gets much higher and how to reduce the computation cost becomes challenging. We provide efficient PRNN query processes over uncertain data streams in terms of time. Our methods can effectively prune the irrelevant data objects and keep only the possible ones for further updates. thus saving time. The proposed methods are also validated through extensive simulation experiments.
URI: http://hdl.handle.net/11536/146241
ISSN: 2378-8593
Journal: 2018 7TH IEEE INTERNATIONAL SYMPOSIUM ON NEXT-GENERATION ELECTRONICS (ISNE)
Begin Page: 243
End Page: 246
Appears in Collections:Conferences Paper