Quantitative Technology Forecasting: A Review of Trend Extrapolation Methods

Peng-Hung Tsai, D. Berleant, R. Segall, H. Aboudja, Venkata Jaipal Reddy Batthula, Sheela Duggirala, M. Howell
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Abstract

Quantitative technology forecasting uses quantitative methods to understand and project technological changes. It is a broad field encompassing many different techniques and has been applied to a vast range of technologies. A widely used approach in this field is trend extrapolation. Based on the literature available to us, there has been little or no attempt made to systematically review the empirical evidence on quantitative trend extrapolation techniques. This study attempts to close this gap by conducting a systematic review of the technology forecasting literature addressing the application of quantitative trend extrapolation techniques. We identified 25 studies relevant to the objective of this research and classified the techniques used in the studies into different categories, among which the growth curves and time series methods were shown to remain popular over the past decade while the newer methods, such as machine learning-based hybrid models, have emerged in recent years. As more effort and evidence are needed to determine if hybrid models are superior to traditional methods, we expect a growing trend in the development and application of hybrid models to technology forecasting.
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定量技术预测:趋势外推方法综述
定量技术预测使用定量方法来理解和预测技术变化。它是一个涵盖许多不同技术的广泛领域,并已应用于广泛的技术范围。在这一领域广泛使用的方法是趋势外推法。根据我们现有的文献,很少或根本没有尝试系统地审查定量趋势外推技术的经验证据。本研究试图通过对技术预测文献进行系统回顾来解决定量趋势外推技术的应用,从而缩小这一差距。我们确定了与本研究目标相关的25项研究,并将研究中使用的技术分为不同的类别,其中增长曲线和时间序列方法在过去十年中仍然很受欢迎,而近年来出现了新的方法,如基于机器学习的混合模型。由于需要更多的努力和证据来确定混合模型是否优于传统方法,我们预计混合模型在技术预测中的发展和应用将会越来越多。
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来源期刊
CiteScore
3.40
自引率
16.70%
发文量
73
期刊介绍: The main emphasis of the International Journal of Innovation and Technology Management (IJITM) is on the promotion and discussion of excellent research on technological innovation. As a platform for reporting, sharing, as well as exchanging ideas, IJITM encourages novel research findings, industry best practices, and reports on recent trends. In particular, the journal focuses on managerial issues and challenges (and ways to address them) motivated through the increasing pace of technological advancement globally. This international and interdisciplinary research dimension is emphasized in order to promote greater exchange between researchers of different disciplines as well as cultural and national backgrounds. This double-blind peer-reviewed journal encompasses all facets of the process of technological innovation from idea generation, conceptualization of new products and processes, R&D activities, and commercial application. Research on all firm sizes, from entrepreneurial ventures, small and medium sized enterprises (SMEs), as well as large organizations, is welcome.
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