An empirical study of the impact of biological information dissemination in social media on public science literacy

IF 3.1 Q1 Mathematics
Pei Tang, Mengxiao Zhang
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引用次数: 0

Abstract

Abstract In this paper, we first establish a locally converged bioinformatics dataset based on gradient sampling and design an optimal data mining control model to improve the accuracy of bioinformatics big data feature mining. The performance of the Compressive Tracking algorithm and Online Bosting algorithm is compared with the mining error as a test index. At the same time, we propose a social media information dissemination algorithm applicable to large-scale social network datasets, taking the degree value of each node as the node’s full influence and comparing and analyzing the dissemination influence of BP-IM, RAND and MC-CELF algorithms. Finally, taking public health big data as the research object, the least squares regression method was used to analyze the influence of the amount of public attention to bioinformatics scientific knowledge on their scientific literacy in different media. The results showed that there was a significant positive correlation between scientific literacy and willingness to engage in science participation behavior on social media when the amount of public attention to scientific information was β =0225, p <0.01. When more people are interested in scientific knowledge of bioinformatics on social media, their scientific literacy will improve.
社交媒体生物信息传播对公众科学素养影响的实证研究
摘要本文首先建立了基于梯度采样的局部融合生物信息学数据集,并设计了最优数据挖掘控制模型,以提高生物信息学大数据特征挖掘的准确性。以挖掘误差为测试指标,比较了压缩跟踪算法和在线提升算法的性能。同时,我们提出了一种适用于大规模社交网络数据集的社交媒体信息传播算法,以每个节点的度值作为节点的全影响力,对比分析了BP-IM、RAND和MC-CELF算法的传播影响力。最后,以公共卫生大数据为研究对象,运用最小二乘回归方法,分析不同媒介下公众对生物信息学科学知识的关注度对其科学素养的影响。结果表明,当公众对科学信息的关注度为β =0225, p <0.01时,科学素养与参与社会媒体科学行为的意愿呈显著正相关。当更多的人在社交媒体上对生物信息学的科学知识感兴趣时,他们的科学素养就会提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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