993
Views
5
CrossRef citations to date
0
Altmetric
Articles

Value creation in emerging technologies through text mining: the case of blockchain

ORCID Icon, ORCID Icon, ORCID Icon, ORCID Icon & ORCID Icon
Pages 1404-1420 | Received 07 Jan 2020, Accepted 06 Jan 2021, Published online: 20 Jan 2021

References

  • Abramova, S., and R. Böhme. 2016. “Perceived Benefit and Risk as Multidimensional Determinants of Bitcoin Use: A Quantitative Exploratory Study.” In 2016 International Conference on Information Systems, December 11–14. Dublin.
  • Adner, R., and R. Kapoor. 2010. “Value Creation in Innovation Ecosystems: How the Structure of Technological Interdependence Affects Firm Performance in new Technology Generations.” Strategic Management Journal 31 (3): 306–333.
  • Alketbi, A., Q. Nasir, and M. A. Talib. 2018. “Blockchain for Government Services – Use Cases, Security Benefits and Challenges.” In 2018 15th Learning and Technology Conference (L&T), 112–119, February. IEEE.
  • Amit, R., and C. Zott. 2001. “Value Creation in e-Business.” Strategic Management Journal 22 (6–7): 493–520.
  • An, H. J., and S. J. Ahn. 2016. “Emerging Technologies – Beyond the Chasm. Assessing Technological Forecasting and Its Implication for Innovation Management in Korea.” Technological Forecasting and Social Change 102: 132–142.
  • Andoni, M., V. Robu, D. Flynn, S. Abram, D. Geach, D. Jenkins, P. McCallum, and A. Peacock. 2019. “Blockchain Technology in the Energy Sector: A Systematic Review of Challenges and Opportunities.” Renewable and Sustainable Energy Reviews 100: 143–174.
  • Annett, M., and G. Kondrak. 2008. “A Comparison of Sentiment Analysis Techniques: Polarizing Movie Blogs.” In Conference of the Canadian Society for Computational Studies of Intelligence, 25–35. Berlin, Heidelberg: Springer.
  • Appio, F. P., A. Martini, and G. Fantoni. 2017. “The Light and Shade of Knowledge Recombination: Insights from a General-Purpose Technology.” Technological Forecasting and Social Change 125: 154–165.
  • Apreda, R., A. Bonaccorsi, F. Dell’Orletta, and G. Fantoni. 2019. “Expert Forecast and Realized Outcomes in Technology Foresight.” Technological Forecasting and Social Change 141: 277–288.
  • Apreda, R., A. Bonaccorsi, G. Fantoni, and D. Gabelloni. 2014. “Functions and Failures, how to Manage Technological Promises for Societal Challenges.” Technology Analysis and Strategic Management 26 (4): 369–384.
  • Arun, R., V. Suresh, C. V. Madhavan, and M. N. Murthy. 2010. “On Finding the Natural Number of Topics with Latent Dirichlet Allocation: SOME Observations.” In Pacific-Asia Conference on Knowledge Discovery and Data Mining, 391–402, June. Berlin, Heidelberg: Springer.
  • Batubara, F. R., J. Ubacht, and M. Janssen. 2018. “Challenges of Blockchain Technology Adoption for E-government: A Systematic Literature Review.” In Proceedings of the 19th Annual International Conference on Digital Government Research: Governance in the Data Age, May, 76. ACM.
  • Beltagy, I., Lo, K., & Cohan, A., 2019. “SciBERT: A Pretrained Language Model for Scientific Text.” arXiv preprint arXiv:1903.10676.
  • Blei, D. M., A. Y. Ng, and M. I. Jordan. 2003. “Latent Dirichlet Allocation.” Journal of Machine Learning Research 3: 993–1022.
  • Bonaccorsi, A., R. Apreda, and G. Fantoni. 2020. “Expert Biases in Technology Foresight. Why They Are a Problem and How to Mitigate Them.” Technological Forecasting and Social Change 151: 119855.
  • Cao, J., T. Xia, J. Li, Y. Zhang, and S. Tang. 2009. “A Density-Based Method for Adaptive LDA Model Selection.” Neurocomputing 72 (7–9): 1775–1781.
  • Casino, F., T. K. Dasaklis, and C. Patsakis. 2018. “A Systematic Literature Review of Blockchain-Based Applications: Current Status, Classification and Open Issues.” Telematics and Informatics 36: 55–81.
  • Chen, H., R. H. Chiang, and V. C. Storey. 2012. “Business Intelligence and Analytics: From Big Data to Big Impact.” MIS Quarterly 36 (4): 1165–1188.
  • Chiarello, F., A. Bonaccorsi, and G. Fantoni. 2020. “Technical Sentiment Analysis. Measuring Advantages and Drawbacks of New Products Using Social Media.” Computers in Industry 123: 103299.
  • Chiarello, F., G. Fantoni, and A. Bonaccorsi. 2017. “Product Description in Terms of Advantages and Drawbacks: Exploiting Patent Information in Novel Ways.” In DS 87-6 Proceedings of the 21st International Conference on Engineering Design (ICED 17). Vol. 6: Design Information and Knowledge, 101–110, Vancouver, August 21–25.
  • Choi, J., S. Oh, J. Yoon, J. M. Lee, and B. Y. Coh. 2020. “Identification of Time-Evolving Product Opportunities via Social Media Mining.” Technological Forecasting and Social Change 156: 120045.
  • Conneau, A., G. Kruszewski, G. Lample, L. Barrault, and M. Baroni. 2018. “What You Can Cram into a Single Vector: Probing Sentence Embeddings for Linguistic Properties.” arXiv preprint arXiv:1805.01070.
  • Conoscenti, M., A. Vetro, and J. C. De Martin. 2016. “Blockchain for the Internet of Things: A Systematic Literature Review.” In 2016 IEEE/ACS 13th International Conference of Computer Systems and Applications (AICCSA), 1–6, November. IEEE.
  • Davidson, S., P. De Filippi, and J. Potts. 2016. “Economics of Blockchain.” doi:https://doi.org/10.2139/ssrn.2744751.
  • Dedehayir, O., and M. Steinert. 2016. “The Hype Cycle Model: A Review and Future Directions.” Technological Forecasting and Social Change 108: 28–41.
  • Deveaud, R., E. SanJuan, and P. Bellot. 2014. “Accurate and Effective Latent Concept Modeling for ad hoc Information Retrieval.” Document Numérique 17 (1): 61–84.
  • Devlin, J., M. W. Chang, K. Lee, and K. Toutanova. 2018. “Bert: Pre-training of Deep Bidirectional Transformers for Language Understanding.” arXiv preprint arXiv:1810.04805.
  • Dunham, J., J. Melot, and D. Murdick. 2020. “Identifying the Development and Application of Artificial Intelligence in Scientific Text.” arXiv:2002.07143v1.
  • Ebadi, A., S. Tremblay, C. Gouffe, and A. Schiffauerova. 2020. “Application of Machine Learning Techniques to Assess the Trends and Alignment of the Funded Research Output.” Journal of Informetrics 14: 101018.
  • European Patent Office. 2018. “Talking About a New Revolution: Blockchain.” In Report of the Patenting Blockchain Conference, The Hague, December 4. Accessed 22 November 2019. https://tinyurl.com/rhqan87.
  • Eyal, I., and E. G. Sirer. 2018. “Majority Is Not Enough: Bitcoin Mining Is Vulnerable.” Communications of the ACM 61 (7): 95–102.
  • Fantoni, G., R. Apreda, F. Dell’Orletta, and M. Monge. 2013. “Automatic Extraction of Function–Behaviour–State Information from Patents.” Advanced Engineering Informatics 27 (3): 317–334.
  • Gartner. 2019. “Gartner 2019 Hype Cycle Shows Most Blockchain Technologies Are Still Five to 10 Years Away from Transformational Impact.” Gartner. Accessed 2 November 2019. https://tinyurl.com/y4gd3okl.
  • Goehrke, S. 2019. “Will 2019 Fulfill the Promises of 3-D Printing?” Forbes. Accessed 14 November 2019. https://tinyurl.com/vgckr75.
  • Golzio, D. 2012. “WWWHOW (Why, When, Who, Where, What, How) Read a Patent!” European Patent Office. Accessed 14 November 2019. https://tinyurl.com/uz6ee7t.
  • Greiner-Petter, A., A. Youssef, T. Ruas, B. R. Miller, M. Schubotz, A. Aizawa, and B. Gipp. 2020. “Math-word Embedding in Math Search and Semantic Extraction.” Scientometrics 125 (3): 3017–3046. doi:https://doi.org/10.1007/s11192-020-03502-9.
  • Griffiths, T. L., and M. Steyvers. 2004. “Finding Scientific Topics.” Proceedings of the National Academy of Sciences 101 (Suppl 1): 5228–5235.
  • Han, K., and J. Shin. 2014. “A Systematic Way of Identifying and Forecasting Technological Reverse Salient Using QFD, Bibliometrics, and Trend Impact Analysis. A Carbon Nanotube Biosensor Case.” Technovation 34: 559–570.
  • Hassan, S. U., M. Imram, S. Iqbal, N. R. Aljohari, and R. Nawaz. 2018. “Deep Context of Citations Using Machine-Learning Models in Scholarly Full-Text Articles.” Scientometrics 117: 1645–1662.
  • Hawlitschek, F., B. Notheisen, and T. Teubner. 2018. “The Limits of Trust-Free Systems: A Literature Review on Blockchain Technology and Trust in the Sharing Economy.” Electronic Commerce Research and Applications 29: 50–63.
  • Hope, T., J. Portenoy, K. Vasank, J. Borchardt, E. Horvitz, D. S. Weld, M. A. Hearst, and J. West. 2020. “SciSight: Combining Faceted Navigation and Research Group Detection for Covid-19 Exploratory Scientific Search.” bioRxiv. doi:https://doi.org/10.1101/2020.05.23.112284.
  • Hu, K., K. Qi, S. Yang, S. Shen, X. Cheng, H. Wu, J. Zheng, S. McClure, and T. Yu. 2018a. “Identifying the ‘Ghost City’ of Domain Topics in a Keyword Semantic Space Combining Citations.” Scientometrics 114: 1141–1157.
  • Hu, K., H. Wu, K. Qi, J. Yu, S. Yang, T. Yu, J. Zheng, and B. Liu. 2018b. “A Domain Keyword Analysis Approach Extending Term Frequency-Keyword Active Index with Google Word2vec Model.” Scientometrics 114: 1031–1068.
  • Hughes, L., Y. K. Dwivedi, S. K. Misra, N. P. Rana, V. Raghavan, and V. Akella. 2019. “Blockchain Research, Practice and Policy: Applications, Benefits, Limitations, Emerging Research Themes and Research Agenda.” International Journal of Information Management 49: 114–129.
  • Joung, J., and K. Kim. 2017. “Monitoring Emerging Technologies for Technology Planning Using Technical Keyword Base Analysis from Patent Data.” Technological Forecasting and Social Change 114: 281–292.
  • Kai, H., L. Qing, Q. Kunlun, Y. Siluo, M. Jin, F. Xiaokang, Z. Jie, W. Huai, G. Ya, and Z. Qibing. 2019. “Understanding the Topic Evolution of Scientific Literatures Like an Evolving City: Using Google Word2vec Model and Spatial Autocorrelation Analysis.” Information Processing and Management 56: 1185–1203.
  • Kay, H. J., C. Kim, and K. Kang. 2019. “Analysis of the Trends in Biochemical Research Using Latent Dirichlet Allocation (LDA).” Processes 7: 379–399.
  • Kim, J., S. Kim, and C. Lee. 2019. “Anticipating Technological Convergence. Link Prediction Using Wikipedia Hyperlinks.” . Technovation 79: 25–34.
  • Kim, S., H. Park, and J. Lee. 2020. “Word2vec-based Latent Semantic Analysis (W2V-LSA) for Topic Modeling. A Study of Blockchain Technology Trend Analysis.” Expert Systems with Applications 152: 113401.
  • Konstantinidis, I., G. Siaminos, C. Timplalexis, P. Zervas, V. Peristeras, and S. Decker. 2018. “Blockchain for Business Applications: A Systematic Literature Review.” In International Conference on Business Information Systems, 384–399, July. Cham: Springer.
  • Kreutz, C. K., P. Sahitaj, and R. Schenkel. 2020. “Evaluating Semantometrics from Computer Science Publications.” Scientometrics 125: 2915–2954. doi:https://doi.org/10.1007/s11192-020-03409-5.
  • Kricka, L. J., S. Polevikov, Y. Park, P. Fortina, S. Bernardini, D. Satchkov, V. Kolesov, and M. Grishkov. 2020. “Artificial Intelligence-Powered Search Tools and Resources in the Fight Agains COVID-19.” eJIFCC 31 (2): 106–116.
  • Kwon, H., J. Kim, and Y. Park. 2017. “Applying LSA Text Mining Technique in Envisioning Social Impacts of Emerging Technologies. The Case of Drone Technology.” Technovation 60–61: 15–28.
  • Kyebambe, M. N., G. Cheng, Y. Huang, C. He, and Z. Zhang. 2017. “Forecasting Emerging Technologies. A Supervise Learning Approach Through Patent Analysis.” Technological Forecasting and Social Change 125: 236–244.
  • Lee, C., D. Jeon, J. M. Ahn, and O. Kwon. 2020. “Navigating a Product Landscape for Technology Opportunity Analysis. A Word2vec Approach Using an Integrated Patent-Product Database.” Technovation 96–97: 102140. doi:https://doi.org/10.1016/j.technovation.2020.102140.
  • Lee, C., O. Kwon, M. Kim, and O. Kwon. 2018. “Early Identification of Emerging Technologies. A Machine Learning Approach Using Multiple Patent Indicators.” Technological Forecasting and Social Change 127: 291–303.
  • Lepak, D. P., K. G. Smith, and M. S. Taylor. 2007. “Value Creation and Value Capture: a Multilevel Perspective.” Academy of Management Review 32 (1): 180–194.
  • Lieberman, M. B., R. Garcia-Castro, and N. Balasubramanian. 2017. “Measuring Value Creation and Appropriation in Firms: The VCA Model.” Strategic Management Journal 38 (6): 1193–1211.
  • Madani, A., O. Boussaid, and D. E. Zegour. 2015. “Real-time Trending Topics Detection and Description from Twitter Content.” Social Network Analysis and Mining 5: 59.
  • Madani, F., T. Daim, and C. Weng. 2017. “‘Smart Building’ Technology Network Analysis: Applying Core–Periphery Structure Analysis.” International Journal of Management Science and Engineering Management 12 (1): 1–11.
  • Miau, S., and J. M. Yang. 2018. “Bibliometrics-based Evaluation of the Blockchain Research Trend: 2008–March 2017.” Technology Analysis & Strategic Management 30 (9): 1029–1045.
  • Mikolov, T., I. Sutskever, K. Chen, G. S. Corrado, and J. Dean. 2013. “Distributed Representations of Words and Phrases and Their Compositionality.” In Advances in Neural Information Processing Systems, 3111–3119.
  • Mohsin, A. H., A. A. Zaidan, B. B. Zaidan, O. S. Albahri, A. S. Albahri, M. A. Alsalem, and K. I. Mohammed. 2018. “Blockchain Authentication of Network Applications: Taxonomy, Classification, Capabilities, Open Challenges, Motivations, Recommendations and Future Directions.” Computer Standards & Interfaces 64: 41–60.
  • Pennington, J., R. Socher, and C. D. Manning. 2014. “Glove: Global Vectors for Word Representation.” In Proceedings of the 2014 Conference on Empirical Methods in Natural Language Processing (EMNLP), 1532–1543, October.
  • Priem, R. L. 2007. “A Consumer Perspective on Value Creation.” Academy of Management Review 32 (1): 219–235.
  • Radford, A., J. Wu, R. Child, D. Luan, D. Amodei, and I. Sutskever. 2019. “Language Models are Unsupervised Multitask Learners.” OpenAI Blog 1 (8): 9.
  • R Core Team. 2020. “R: A Language and Environment for Statistical Computing.” In R Foundation for Statistical Computing. Vienna. Accessed 14 November 2019. http://www.R-project.org/.
  • Rezvani, Z., J. Jansson, and J. Bodin. 2015. “Advances in Consumer Electric Vehicle Adoption Research: A Review and Research Agenda.” Transportation Research Part D: Transport and Environment 34: 122–136.
  • Rinker, T. 2018. “Sentimentr: Calculate Text Polarity Sentiment – An R Package.” Accessed 24 September 2019. http://github.com/trinker/sentiment.
  • Risus, M., and K. Spohrer. 2017. “A Blockchain Research Framework: What we (Don’t) Know, Where we go from Here, and how we Will get There.” Business & Information Systems Engineering 59 (6): 385–409.
  • Rotolo, D., D. Hicks, and B. Martin. 2015. “What Is an Emerging Technology?” Research Policy 44 (10): 1827–1843.
  • Salah, K., M. H. U. Rehman, N. Nizamuddin, and A. Al-Fuqaha. 2019. “Blockchain for AI: Review and Open Research Challenges.” IEEE Access 7: 10127–10149.
  • Sanyal, D. K., P. K. Bhowmick, P. Pratid Das, S. Chattopadhyay, and T. Y. S. S. Santos. 2019. “Enhancing Access to Scholarly Publications with Surrogate Resources.” Scientometrics 121: 1129–1164.
  • Shin, J., B. Y. Coh, and C. Lee. 2013. “Robust Future-Oriented Technology Portfolios: Black–Litterman Approach.” R&D Management 43 (5): 409–419.
  • Siano, F., and P. Wysocki. 2019. “Transfer Learning and Textual Analysis of Accounting Disclosures. Applying Big Data Methods to Small(er) Data Sets.” Paper presented at the AH Conference, December.
  • Snyder, H. 2019. “Literature Review as a Research Methodology: An Overview and Guidelines.” Journal of Business Research 104: 333–339.
  • Son, C., J. Kim, and Y. Kim. 2020. “Developing Scenario-Based Technology Roadmap in the Big Data era. An Utilization of Fuzzy Cognitive map and Text Mining Techniques.” Technology Analysis and Strategic Management 32 (3): 272–291.
  • Straka, M., and J. Straková. 2017. “Tokenizing, POS Tagging, Lemmatizing and Parsing ud 2.0 with UDPipe.” In Proceedings of the CoNLL 2017 Shared Task: Multilingual Parsing from Raw Text to Universal Dependencies, 88–99, August.
  • Taylor, P. J., T. Dargahi, A. Dehghantanha, R. M. Parizi, and K. K. R. Choo. 2019. “A Systematic Literature Review of Blockchain Cyber Security.” Digital Communications and Networks 6: 147–156.
  • Tu, Y. N., and J. L. Seng. 2012. “Indices of Novelty for Emerging Topic Detection.” Information Processing and Management 48: 303–325.
  • Wang, Y., J. H. Han, and P. Beynon-Davies. 2019. “Understanding Blockchain Technology for Future Supply Chains: A Systematic Literature Review and Research Agenda.” Supply Chain Management: An International Journal 24 (1): 62–84.
  • Wang, X., X. Yang, X. Wang, M. Xia, and J. Wang. 2020. “Evaluating the Competitiveness of Enterprise’s Technology Based on LDA Topic Model.” Technology Analysis and Strategic Management 32 (2): 208–222.
  • Xu, S., L. Hao, X. An, G. Yang, and F. Wang. 2019. “Emerging Research Topics Detection with Multipla Machine Learning Models.” Journal of Informetrics 13: 100983.
  • Yan, E. 2014. “Research Dynamics: Measuring the Continuity and Popularity of Research Topics.” Journal of Informetrics 8 (1): 98–110.
  • Yeow, K., A. Gani, R. W. Ahmad, J. J. Rodrigues, and K. Ko. 2017. “Decentralized Consensus for Edge-Centric Internet of Things: A Review, Taxonomy, and Research Issues.” IEEE Access 6: 1513–1524.
  • Yli-Huumo, J., D. Ko, S. Choi, S. Park, and K. Smolander. 2016. “Where Is Current Research on Blockchain Technology? – a Systematic Review.” PloS One 11 (10): e0163477.
  • Yoon, B., and C. L. Magee. 2018. “Exploring Technological Opportunities by Visualizing Patent Information Based on Generative Topographic Mapping and Link Prediction.” Technological Forecasting and Social Change 132: 105–117.
  • Young, K., C. Wang, L. Y. Wang, and K. Strunz. 2013. “Electric Vehicle Battery Technologies.” In R. Garcia-Valle & J. Peças Lopes (Eds.), Electric Vehicle Integration Into Modern Power Networks, 15–56. New York: Springer.
  • Zerva, C., M. Q. Nghiem, N. T. H. Nguyen, and S. Ananiadou. 2020. “Cited Text Span Identification for Scientific Summarization Using Pre-trained Encoders.” Scientometrics. 125: 3109–3137. doi:https://doi.org/10.1007/s11192-020-03455-z.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.