College of Education and Sports Sciences, Yangtze University, Jingzhou, China.
School of Physical Education and Health, Guangxi Normal University, Guilin, China.
Comput Intell Neurosci. 2022 Jun 29;2022:6069881. doi: 10.1155/2022/6069881. eCollection 2022.
Nowadays, emerging industries are emerging, and the sports industry has become a remarkable new economic growth point. Vigorously tapping the potential of residents' sports consumption has important theoretical and practical significance for promoting the development of the sports industry, improving people's living standards, and stimulating economic growth. In this paper, a deep learning model is constructed, and the random forest and random network models in the deep learning network are used to analyze the pulling effect of urban residents' sports consumption on economic growth. Since the consumption level of urban residents is much higher than that of rural residents, urban residents are in a dominant position in sports consumption, so this paper takes urban residents' sports consumption as the core to explore the pulling effect of urban residents' sports consumption on economic growth. The research theme of this paper is the pulling effect of urban residents' sports consumption on economic growth, so this paper sets the explanatory variable as the added value of GDP, expressed by GDP. Sports consumption has the characteristics of inevitability, gradualness, and diversity. With the continuous change of people's living standards, sports consumption also presents several stages of relative consumption pattern changes. Research shows that sports consumption has a positive role in promoting economic growth and the transformation and upgrading of economic development mode. Every one percentage point change in sports consumption leads to an economic growth of 0.186 percentage points, and with the increase of the lag period, urban residents' sports consumption will gradually increase the driving effect of economic growth. This effect can be analyzed at the micro- and macrolevels and enhanced by a causal cumulative cycle mechanism.
如今,新兴产业层出不穷,体育产业已成为新的经济增长点。大力挖掘居民体育消费潜力,对于推动体育产业发展、提高人民生活水平、拉动经济增长具有重要的理论和现实意义。本文构建了深度学习模型,采用深度学习网络中的随机森林和随机网络模型分析了城镇居民体育消费对经济增长的拉动作用。由于城镇居民的消费水平远高于农村居民,城镇居民在体育消费中处于主导地位,因此本文以城镇居民体育消费为核心,探讨城镇居民体育消费对经济增长的拉动作用。本文的研究主题是城镇居民体育消费对经济增长的拉动作用,因此本文将解释变量设定为 GDP 的增加值,用 GDP 表示。体育消费具有必然性、渐增性和多样性的特点。随着人们生活水平的不断变化,体育消费也呈现出几种相对消费模式的变化阶段。研究表明,体育消费对促进经济增长和经济发展方式转变升级具有积极作用。体育消费每增加一个百分点,经济增长 0.186 个百分点,且随着滞后期的增加,城镇居民体育消费对经济增长的拉动作用逐渐增强。这种效应可以从微观和宏观两个层面进行分析,并通过因果累积循环机制得到增强。