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Author(s):  
Naim Khalimovich Oblomurodov ◽  

The article highlights the heroism of the Uzbek people and Uzbeks during the Second World War, which is one of the examples of patriotism, providing national support to the front and the front defense fund, their contribution to the victory in the war with their hard work. In other words, the active participation of Uzbeks in the movement to establish a defense fund from the first days of the war, the economic and social characteristics of the material assistance provided by Hitler's Germany to the occupied territories, including Russia, Ukraine and Belarus. In particular, it analyzes the humanitarian contribution of Uzbek workers to the defense fund behind the front line, part of their salaries, money earned on "communist Saturdays", personal funds of citizens, valuables, government bonds, goods, especially agricultural workers of the republic and the herdsmen handed over food and livestock to the warriors and delivered them to the battlefields, as well as their unparalleled heroism in ending the war with victory.


2021 ◽  
Vol 2 (2) ◽  
pp. 1-26
Author(s):  
Yu Liu ◽  
Yangtao Wang ◽  
Lianli Gao ◽  
Chan Guo ◽  
Yanzhao Xie ◽  
...  

Data mining can hardly solve but always faces a problem that there is little meaningful information within the dataset serving a given requirement. Faced with multiple unknown datasets, to allocate data mining resources to acquire more desired data, it is necessary to establish a data quality assessment framework based on the relevance between the dataset and requirements. This framework can help the user to judge the potential benefits in advance, so as to optimize the resource allocation to those candidates. However, the unstructured data (e.g., image data) often presents dark data states, which makes it tricky for the user to understand the relevance based on content of the dataset in real time. Even if all data have label descriptions, how to measure the relevance between data efficiently under semantic propagation remains an urgent problem. Based on this, we propose a Deep Hash-based Relevance-aware Data Quality Assessment framework, which contains off-line learning and relevance mining parts as well as an on-line assessing part. In the off-line part, we first design a Graph Convolution Network (GCN)-AutoEncoder hash (GAH) algorithm to recognize the data (i.e., lighten the dark data), then construct a graph with restricted Hamming distance, and finally design a Cluster PageRank (CPR) algorithm to calculate the importance score for each node (image) so as to obtain the relevance representation based on semantic propagation. In the on-line part, we first retrieve the importance score by hash codes and then quickly get the assessment conclusion in the importance list. On the one hand, the introduction of GCN and co-occurrence probability in the GAH promotes the perception ability for dark data. On the other hand, the design of CPR utilizes hash collision to reduce the scale of graph and iteration matrix, which greatly decreases the consumption of space and computing resources. We conduct extensive experiments on both single-label and multi-label datasets to assess the relevance between data and requirements as well as test the resources allocation. Experimental results show our framework can gain the most desired data with the same mining resources. Besides, the test results on Tencent1M dataset demonstrate the framework can complete the assessment with a stability for given different requirements.


Sententiae ◽  
2021 ◽  
Vol 40 (1) ◽  
pp. 160-174
Author(s):  
Natalia Viatkina ◽  
◽  
Amina Khelufi ◽  
Kseniia Myroshnyk ◽  
Nataliia Reva ◽  
...  
Keyword(s):  

Interview of Amina Khelufi, Kseniia Myroshnyk and Nataliia Reva with Natalia Viatkina.


Author(s):  
Т.А. Zubairov ◽  
◽  
P.V. Vinogradov ◽  
R.I. Valiakhmetov ◽  
A.V. Alferov ◽  
...  

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