The Opportunities and Limitations of Using Artificial Neural Networks in Social Science Research

Q4 Social Sciences Politologija Pub Date : 2019-07-17 DOI:10.15388/POLIT.2019.94.2
L. Pukelis, V. Stanciauskas
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引用次数: 4

Abstract

Artificial Neural Networks (ANNs) are being increasingly used in various disciplines outside computer science, such as bibliometrics, linguistics, and medicine. However, their uptake in the social science community has been relatively slow, because these highly non-linear models are difficult to interpret and cannot be used for hypothesis testing. Despite the existing limitations, this paper argues that the social science community can benefit from using ANNs in a number of ways, especially by outsourcing laborious data coding and pre-processing tasks to machines in the early stages of analysis. Using ANNs would enable small teams of researchers to process larger quantities of data and undertake more ambitious projects. In fact, the complexity of the pre-processing tasks that ANNs are able to perform mean that researchers could obtain rich and complex data typically associated with qualitative research at a large scale, allowing to combine the best from both qualitative and quantitative approaches.
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人工神经网络在社会科学研究中的机遇与局限
人工神经网络正越来越多地应用于计算机科学之外的各个学科,如文献计量学、语言学和医学。然而,它们在社会科学界的应用相对缓慢,因为这些高度非线性的模型很难解释,也不能用于假设检验。尽管存在现有的局限性,但本文认为,社会科学界可以从多种方式使用人工神经网络中受益,特别是在分析的早期阶段,将费力的数据编码和预处理任务外包给机器。使用人工神经网络将使小型研究团队能够处理更多的数据,并进行更雄心勃勃的项目。事实上,人工神经网络能够执行的预处理任务的复杂性意味着研究人员可以获得通常与大规模定性研究相关的丰富而复杂的数据,从而能够结合定性和定量方法的最佳效果。
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来源期刊
Politologija
Politologija Social Sciences-Political Science and International Relations
CiteScore
0.30
自引率
0.00%
发文量
19
审稿时长
12 weeks
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