The main challenges of data streams classification include infinite length, concept-drifting, arrival of novel classes and lack of labeled instances. Most existing techniques address only some of them and ignore others. So an ensemble classification model based on decision-feedback(ECM-BDF) is presented in this paper to address all these challenges. Firstly, a data stream is divided into sequential chunks and a classification model is trained from each labeled data chunk. To address the infinite length and concept-drifting problem, a fixed number of such models constitute an ensemble model E and subsequent labeled chunks are used to update E. To deal with the appearance of novel classes and limited labeled instances problem, the model incorporates a novel class detection mechanism to detect the arrival of a novel class without training E with labeled instances of that class. Meanwhile, unsupervised models are trained from unlabeled instances to provide useful constraints for E. An extended ensemble model Ex can be acquired with the constraints as feedback information, and then unlabeled instances can be classified more accurately by satisfying the maximum consensus of Ex. Experimental results demonstrate that the proposed ECM-BDF outperforms traditional techniques in classifying data streams with limited labeled data.
We firstly present a novel scheme for deterministic joint remote state preparation of an arbitrary five-qubit Brown state using four Greenberg-Horme-Zeilinger (GHZ) entangled states as the quantum channel. The success probability of this scheme is up to 1, which is superior to the existing ones. Moreover, the scheme is extended to the generalized case where three-qubit and four-qubit non-maximally entangled states are taken as the quantum channel. We simultaneously employ two common methods to reconstruct the desired state. By comparing these two methods, we draw a conclusion that the first is superior to the second-optimal positive operator-valued measure only taking into account the number of auxiliary particles and the success probability.
对数据动态更新和第三方审计的支持的实现方式是影响现有数据持有性证明(provable data possession,简称PDP)方案实用性的重要因素.提出面向真实云存储环境的安全、高效的PDP系统IDPA-MF-PDP.通过基于云存储数据更新模式的多文件持有性证明算法MF-PDP,显著减少审计多个文件的开销.通过隐式第三方审计架构和显篡改审计日志,最大限度地减少了对用户在线的需求.用户、云服务器和隐式审计者的三方交互协议,将MF-PDP和隐式第三方审计架构结合.理论分析和实验结果表明:IDPA-MF-PDP具有与单文件PDP方案等同的安全性,且审计日志提供了可信的审计结果历史记录;IDPA-MF-PDP将持有性审计的计算和通信开销由与文件数线性相关减少到接近常数.