技术发展预测应用程序的开发——以电视广播为例

D. Korobkin, Grigory Vereschak, S. Fomenkov
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引用次数: 0

摘要

目前,在电视和广播软件开发领域工作的许多俄罗斯公司可以通过分析从外国竞争对手那里获得的信息来提取有关其活动领域趋势的必要知识,例如,在研究专业科普文献时,根据外国竞争对手官方网站上发布的信息,在分析从展览和演示中获得的信息时。这样的机会可以大大加强俄罗斯公司在战略发展计划的形成。本工作的目的是以电视和无线电广播为例,开发预测技术发展的软件。为了实现这一目标,开发了一种专利解析算法,该算法可以从Google Patents网站上提取所考虑的来源描述的必要元素,以及一种基于提取的专利数据构建时间序列并使用ARIMA方法预测技术发展的算法。专利文件元素提取模块使用Beautiful Soup库实现,Multiprocessing库用于并行化解析过程,statmodels用于数据分析和预测,Matplotlib用于数据可视化。选择MySQL数据库管理系统(DBMS)来组织信息的存储。通过这项工作,我们处理了28591项专利,并基于构建的2015-2020年期间的时间序列,对电视和无线电技术发展的预测过程进行了测试。
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Development of an Application for Forecasting the Development of Technologies on the Example of Television and Radio Broadcasting
At the moment, many Russian companies working in the field of software development for television and radio broadcasting can extract the necessary knowledge about trends in their field of activity by analyzing information received from foreign competitors, for example, when studying specialized popular science literature, based on information posted on the official websites of foreign competitors, when analyzing information obtained from exhibitions and presentations. Such an opportunity can significantly strengthen Russian companies in the formation of strategic development plans. The purpose of this work is to develop software for forecasting the development of technologies on the example of television and radio broadcasting. To achieve this goal, a patent parsing algorithm was developed that allows extracting the necessary elements of the description of the sources under consideration obtained from the Google Patents website, as well as an algorithm for constructing time series based on the extracted patent data and forecasting technology development using the ARIMA method. The module for extracting elements from patent files is implemented using the Beautiful Soup library, the Multiprocessing library is used for parallelizing the parsing process, Statsmodels is used for data analysis and forecasting, and Matplotlib is used for data visualization. The MySQL database management System (DBMS) was chosen to organize the storage of information. As a result of the work carried out, 28591 patents were processed, with the help of which the process of forecasting the development of television and radio technologies was tested on the basis of the constructed time series in the interval 2015-2020.
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