Abstract
AbstractIntention mining is a promising research area of data mining that aims to determine end-users’ intentions from their past activities stored in the logs, which note users’ interaction with the system. Search engines are a major source to infer users’ past searching activities to predict their intention, facilitating the vendors and manufacturers to present their products to the user in a promising manner. This area has been consistently getting pertinence with an increasing trend for online purchasing. Noticeable research work has been accomplished in this area for the last two decades. There is no such systematic literature review available that provides a comprehensive review in intension mining domain to the best of our knowledge. This article presents a systematic literature review based on 109 high-quality research papers selected after rigorous screening. The analysis reveals that there exist eight prominent categories of intention. Furthermore, a taxonomy of the approaches and techniques used for intention mining have been discussed in this article. Similarly, six important types of data sets used for this purpose have also been discussed in this work. Lastly, future challenges and research gaps have also been presented for the researchers working in this domain.
Publisher
Springer Science and Business Media LLC
Subject
General Earth and Planetary Sciences,General Environmental Science
Reference116 articles.
1. Epure EV, Hug C, Deneckère R, Brinkkemper S (2013) Intention-mining: a solution to process participant support in process aware information systems. Department of Information and Computing Sciences Utrecht University, Utrecht
2. Khodabandelou G, Hug C, Deneckere R, Salinesi C (2013) Process mining versus intention mining. Enterprise, business-process and information systems modeling. Springer, Berlin, pp 466–480
3. Bag S, Tiwari MK, Chan FT (2019) Predicting the consumer’s purchase intention of durable goods: an attribute-level analysis. J Bus Res 94:408–419
4. Huang Q, Xia X, Lo D, Murphy GC (2018) Automating intention mining. IEEE Trans Softw Eng 46:1098–1119
5. Papadimitriou D, Koutrika G, Mylopoulos J, Velegrakis Y (2016) The goal behind the action: toward goal-aware systems and applications. ACM Trans Database Syst 41(4):1–43
Cited by
20 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献