流行病背景下基于深度学习的因果营销和互联网对会展活动的影响

IF 1.2 4区 工程技术 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Fluctuation and Noise Letters Pub Date : 2024-02-01 DOI:10.1142/s0219477524400200
Kun Shi, Boshi Cui, XinTong Zhao, Yuwei Ma, Yang Yang, Zewen Du
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引用次数: 0

摘要

2019 年以来,新型冠状病毒肺炎在全球范围内肆虐,一旦疫情爆发,会议、奖励旅游、大会及展览(MICE)活动往往会受到不同程度的影响。此外,在疫情背景下,消费者越来越将会展旅游活动参与慈善活动作为衡量其社会责任的标准,并据此判断会展旅游活动的好坏。因此,基于深度学习的公益营销和互联网对疫情背景下会奖活动的影响备受关注。本研究在CiteSpace分析的基础上,系统梳理了善因营销对会展活动的影响体系,并通过单因素组间实验拟合了神经网络模型。结果表明,当将完整数据集分为 70% 的训练集和 30% 的测试集时,训练函数为 Train lm 且有 7 个隐藏层的模型在所有模型中表现最佳。这表明,在慈善营销过程中,消费者与慈善活动的契合度决定了消费者参与慈善营销的态度和意愿。
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Deep Learning-Based Cause-Related Marketing and the Impact of the Internet on MICE Events in the Context of the Epidemic

Since 2019, novel coronavirus pneumonia has been rampant around the world, and when outbreaks occur, Meetings, Incentives, Conferences and Exhibitions (MICE) events are often affected to varying degrees. In addition, in the context of the epidemic, consumers have increasingly taken the participation of MICE in charitable activities as a measure of their social responsibility and judged MICE events as good or bad accordingly. Therefore, the impact of deep learning-based good cause marketing and the Internet on MICE events in the context of the epidemic has attracted much attention. Based on the CiteSpace analysis, this study systematically reviewed the impact system of cause-related marketing on exhibition activities and fitted the neural network model with a single-factor inter-group experiment. The results show that when the complete data set is divided into 70% training set and 30% test set, the model with the training function of Train lm and seven hidden layers performs best in all models. This shows that in the process of charity marketing, the fit between consumers and charity activities determines the attitude and willingness of consumers to participate in charity marketing.

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来源期刊
Fluctuation and Noise Letters
Fluctuation and Noise Letters 工程技术-数学跨学科应用
CiteScore
2.90
自引率
22.20%
发文量
43
审稿时长
>12 weeks
期刊介绍: Fluctuation and Noise Letters (FNL) is unique. It is the only specialist journal for fluctuations and noise, and it covers that topic throughout the whole of science in a completely interdisciplinary way. High standards of refereeing and editorial judgment are guaranteed by the selection of Editors from among the leading scientists of the field. FNL places equal emphasis on both fundamental and applied science and the name "Letters" is to indicate speed of publication, rather than a limitation on the lengths of papers. The journal uses on-line submission and provides for immediate on-line publication of accepted papers. FNL is interested in interdisciplinary articles on random fluctuations, quite generally. For example: noise enhanced phenomena including stochastic resonance; 1/f noise; shot noise; fluctuation-dissipation; cardiovascular dynamics; ion channels; single molecules; neural systems; quantum fluctuations; quantum computation; classical and quantum information; statistical physics; degradation and aging phenomena; percolation systems; fluctuations in social systems; traffic; the stock market; environment and climate; etc.
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