为了解决传统距离向量-跳段(DV-Hop)定位算法的精确度受限问题,提出了一种基于跳段大小校正和定位优化的改进DV-Hop算法。根据参考节点之间实际距离和估计距离的差异,计算出整个网络中有效的跳段大小,未知节点和参考节点之间的跳段添加...为了解决传统距离向量-跳段(DV-Hop)定位算法的精确度受限问题,提出了一种基于跳段大小校正和定位优化的改进DV-Hop算法。根据参考节点之间实际距离和估计距离的差异,计算出整个网络中有效的跳段大小,未知节点和参考节点之间的跳段添加了校正值,而接收信号强度指示(received signal strength indicator,RSSI)的数值用于校正单跳的距离,应用莱文贝格-马奈特(Levenberg-Marquardt,LM)算法来估计每个传感器的优化位置。在求值的过程中,研究了影响距离向量-跳段定位精确度的各种因素。仿真结果表明,与传统的DV-Hop和一些现有的改进算法相比,提出算法的定位精度有所提高。展开更多
The risk classification of BBS posts is important to the evaluation of societal risk level within a period. Using the posts collected from Tianya forum as the data source, the authors adopted the societal risk indicat...The risk classification of BBS posts is important to the evaluation of societal risk level within a period. Using the posts collected from Tianya forum as the data source, the authors adopted the societal risk indicators from socio psychology, and conduct document-level multiple societal risk classification of BBS posts. To effectively capture the semantics and word order of documents, a shallow neural network as Paragraph Vector is applied to realize the distributed vector representations of the posts in the vector space. Based on the document vectors, the authors apply one classification method KNN to identify the societal risk category of the posts. The experimental results reveal that paragraph vector in document-level societal risk classification achieves much faster training speed and at least 10% improvements of F-measures than Bag-of-Words. Furthermore, the performance of paragraph vector is also superior to edit distance and Lucene-based search method. The present work is the first attempt of combining document embedding method with socio psychology research results to public opinions area.展开更多
文摘为了解决传统距离向量-跳段(DV-Hop)定位算法的精确度受限问题,提出了一种基于跳段大小校正和定位优化的改进DV-Hop算法。根据参考节点之间实际距离和估计距离的差异,计算出整个网络中有效的跳段大小,未知节点和参考节点之间的跳段添加了校正值,而接收信号强度指示(received signal strength indicator,RSSI)的数值用于校正单跳的距离,应用莱文贝格-马奈特(Levenberg-Marquardt,LM)算法来估计每个传感器的优化位置。在求值的过程中,研究了影响距离向量-跳段定位精确度的各种因素。仿真结果表明,与传统的DV-Hop和一些现有的改进算法相比,提出算法的定位精度有所提高。
基金supported by the National Natural Science Foundation of China under Grant Nos.71171187,71371107,and 61473284
文摘The risk classification of BBS posts is important to the evaluation of societal risk level within a period. Using the posts collected from Tianya forum as the data source, the authors adopted the societal risk indicators from socio psychology, and conduct document-level multiple societal risk classification of BBS posts. To effectively capture the semantics and word order of documents, a shallow neural network as Paragraph Vector is applied to realize the distributed vector representations of the posts in the vector space. Based on the document vectors, the authors apply one classification method KNN to identify the societal risk category of the posts. The experimental results reveal that paragraph vector in document-level societal risk classification achieves much faster training speed and at least 10% improvements of F-measures than Bag-of-Words. Furthermore, the performance of paragraph vector is also superior to edit distance and Lucene-based search method. The present work is the first attempt of combining document embedding method with socio psychology research results to public opinions area.