Technological forecasting based on estimation of word embedding matrix using LSTM networks

被引:15
作者
Gozuacik, Necip [1 ]
Sakar, C. Okan [1 ]
Ozcan, Sercan [2 ,3 ]
机构
[1] Bahcesehir Univ, Dept Comp Engn, Ciragan Cad, TR-34353 Istanbul, Turkiye
[2] Univ Portsmouth, Portsmouth Business Sch, Portsmouth, England
[3] Bahcesehir Univ, Dept Engn Management, Istanbul, Turkiye
关键词
Technological forecasting; Deep learning; Natural language processing; Text mining; Trend analysis; Emerging topics; SCIENCE-AND-TECHNOLOGY; EMERGING TECHNOLOGIES; TOPICS; MODEL; TRENDS; EXTRACTION; PREDICTION; EMERGENCE; EVOLUTION; LANGUAGE;
D O I
10.1016/j.techfore.2023.122520
中图分类号
F [经济];
学科分类号
02 ;
摘要
There are a vast number of quantitative and qualitative technological forecasting methods. In the last decade, advanced quantitative technological forecasting methods based on the various applications of data science ap-proaches have been proposed. Text mining is one of the key approaches used to examine large datasets consisting of scientific publications and patent documents with the aim of offering foresight for a selected area. However, the existing related studies either perform a qualitative approach by analysing the recent data to identify the emerging topics or use extrapolation techniques to predict the future values of some statistical terms or the future frequency of some important keywords. In this study, different from such related studies, we propose a deep learning-based framework to predict future co-similarity matrix representing the possible new and disappearing interactions between the words in the future. For this purpose, word vectors are generated using a word embedding technique and the temporal changes of the associations between the words are modelled using Long Short-Term Memory networks for the future estimation of the word embedding matrix. The text mining area is chosen as a case study. The clusters of the terms extracted from the predicted word embedding matrices were analysed and potentially emerging areas were identified for different prediction horizon lengths. The accuracy of the proposed model was analysed based on a set of evaluation metrics that measure the amount of overlapping between the actual and predicted word maps. The quantitative analysis showed that the proposed system can successfully identify the emerging and disappearing areas and can be used as a decision-making tool for the future projection of other areas.
引用
收藏
页数:16
相关论文
共 104 条
  • [1] Technology forecasting: A case study of computational technologies
    Adamuthe, Amol C.
    Thampi, Gopakumaran T.
    [J]. TECHNOLOGICAL FORECASTING AND SOCIAL CHANGE, 2019, 143 : 181 - 189
  • [2] Aggarwal C. C., 2015, Data mining: the textbook., V1
  • [3] Traffic accident detection and condition analysis based on social networking data
    Ali, Farman
    Ali, Amjad
    Imran, Muhammad
    Naqvi, Rizwan Ali
    Siddiqi, Muhammad Hameed
    Kwak, Kyung-Sup
    [J]. ACCIDENT ANALYSIS AND PREVENTION, 2021, 151
  • [4] A natural human language framework for digital forensic readiness in the public cloud
    Baror, Stacey O.
    Venter, Hein S.
    Adeyemi, Richard
    [J]. AUSTRALIAN JOURNAL OF FORENSIC SCIENCES, 2021, 53 (05) : 566 - 591
  • [5] Bastian M., 2009, Int Conf Weblogs Social Media, V3, P361, DOI [10.1609/icwsm.v3i1.13937, DOI 10.1609/ICWSM.V3I1.13937]
  • [6] Automatic trend detection: Time-biased document clustering
    Behpour, Sahar
    Mohammadi, Mohammadmahdi
    Albert, Mark V.
    Alam, Zinat S.
    Wang, Lingling
    Xiao, Ting
    [J]. KNOWLEDGE-BASED SYSTEMS, 2021, 220
  • [7] Forecasting emerging technologies with the aid of science and technology databases
    Bengisu, Murat
    Nekhili, Ramzi
    [J]. TECHNOLOGICAL FORECASTING AND SOCIAL CHANGE, 2006, 73 (07) : 835 - 844
  • [8] Berry M.W., 2007, SURVEY TEXT MINING
  • [9] Bouma G., 2009, P GSCL, V30, P31, DOI DOI 10.1007/BF02774984
  • [10] Analysing the theoretical roots of technology emergence: an evolutionary perspective
    Burmaoglu, Serhat
    Sartenaer, Olivier
    Porter, Alan
    Li, Munan
    [J]. SCIENTOMETRICS, 2019, 119 (01) : 97 - 118