The products of an archival culture in colleges and universities are the final result of the development of archival cultural resources, and the development of archival cultural effects in colleges and universities should be an important part of improving the artistic level of libraries. The existing RippleNet model doesn’t consider the influence of key nodes on recommendation results, and the recommendation accuracy is not high. Therefore, based on the RippleNet model, this paper introduces the influence of complex network nodes into the model and puts forward the Cn RippleNet model. The performance of the model is verified by experiments, which provide a theoretical basis for the promotion and recommendation of its cultural products of universarchives, solve the problem that RippleNet doesn’t consider the influence of key nodes on recommendation results, and improve the recommendation accuracy. This paper also combs the development course of archival cultural products in detail. Finally, based on the Cn-RippleNet model, the cultural effect of university archives is recommended and popularized.
Active learning has been widely used to select the most informative data for labeling in classification tasks, except for time series classification. The main challenge of active learning in time series classification is to evaluate the informativeness of a time series instance. Specifically, many informativeness metrics have been proposed for traditional active learning, however, none of them is particularly effective on time series data. In this paper, we design an informativeness metric that considers the characteristics of time series data in defining our instance uncertainty and utility. We prove that our informativeness metric is a submodular set function, and further develop an effective and efficient algorithm to select the most informative time series instances for training. In the experiment, we validate our method on a variety of datasets in the UCR Time Series Data Archive. The results show that our method achieves a higher classification accuracy than existing methods, using only 50% of the training instances.
Database queries, in particular, event-driven continuous queries, are useful for many pervasive computing applications, such as video surveillance. In order to enable these applications, we have developed a pervasive query processing framework called Aorta. Unlike traditional database systems, a pervasive query processor requires systems support for managing a large number of networked, heterogeneous devices. In this paper, we present the communication, synchronization, and scheduling mechanisms in Aorta. Even though these techniques have their roots in distributed and parallel systems, we show how these techniques are customized and applied for pervasive query processing. In essence, communication between heterogeneous devices enables network data independence, synchronization on devices protects action atomicity, and scheduling works for adaptive, cost-based multi-query optimization. We have conducted empirical studies on our prototype as well as simulation studies to evaluate the system performance.
The following collection of articles aims to provide a sequel to Ugur Cetintemel's December 2001 interviewing advice article, with specific tips for times when the economy is in recession. The contributions are based on the personal experience of recent database graduates who were on the job market in the 2001-2002 season.
The betweenness centrality measure has been widely adopted in various graph analytics applications, such as community detection and brain network analysis. Due to the high intensity of BC computation and rapid data growth, there have been a number of studies on parallel BC computation, either on CPUs or GPUs. However, there has not been a comprehensive comparative study on the BC algorithm on different processors. In this paper, we revisit shared-memory parallel BC computation on four kinds of processors, including multi-core CPUs, many-core GPUs, and two generations of Intel MIC processors. We find that, with suitable parallelization strategies and data-oriented optimizations, commodity multi-core CPUs are the fastest, followed by the second generation MIC. These two processors are faster than the state-of-the-art GPU implementations across all kinds of graphs. In comparison, the GPU outperforms the first generation MIC only on small-diameter graphs and is the slowest on the other kinds of graphs.
The paper presented the management method of material evident microscope for special use, the general method of fixing a breakdown and its scientific maintenance. The purpose is to prolong the life of microscope to do teaching education of material evident test, to do scientific research and to handle a case, to improve using ratio, to serve the teaching education scientific research and material evident test appraisal better.