An Extensive Research on Knowledge Mining Systems:A Review

  • Authors

    • K Kalaiselvi
    • J Sowmiya
    2018-07-04
    https://doi.org/10.14419/ijet.v7i3.6.14947
  • Component, formatting, style, styling.
  • Abstract

    With the huge amount of information available, the analysis over the data is the fertile area of knowledge mining research. Knowledge mining is the recent hot and promising research area. Knowledge mining is defined as the process of obtaining relevant knowledge from the pool of resources. In this review paper, we surveyed about the prior works carried out in the knowledge mining systems. We explore the primitives of knowledge mining systems. Attribute imbalance is the primary issue prevails in the knowledge mining process. In the field of higher education, most of the attributes are shared among the data features. In addition a precise introduction to knowledge mining along with its process is presented to get acquainted with the vital information on the subject of knowledge mining system

     

     

  • References

    1. [1] Farid DM & Sarwar H, “Knowledge mining for effective teaching and enhancing engineering educationâ€, 7th International Conference on Electrical & Computer Engineering (ICECE), (2012), pp.354-357.

      [2] Han J, Sun Y, Yan X & Philip SY, “Mining knowledge from data: An information network analysis approachâ€, IEEE 28th International Conference on Data Engineering, (2012), pp.1214-1217.

      [3] Hua XS, Ye M & Li J, “Mining knowledge from clicks: MSR-Bing image retrieval challengeâ€, IEEE International Conference on Multimedia and Expo Workshops, (2014), pp.1-4.

      [4] Jadon KS, Maheshwari S & Dixit M, “Competent Searching for Geographic Information Gathering Using Knowledge Miningâ€, Fourth International Conference on Computational Intelligence and Communication Networks (CICN), (2012), pp.968-972.

      [5] Hasapis P, Ntalaperas, D, Kannas CC, Aristodimou A, Alexandrou D, Bouras T, Georgousopoulos C, Antoniades A, Pattichis CS & Constantinou A, “Molecular clustering via knowledge mining from biomedical scientific corporaâ€, IEEE 13th International Conference on Bioinformatics and Bioengineering, (2013), pp.1-5.

      [6] Xie J, Chen Z, Xie G & Lin TY, “Knowledge mining in big data-A lesson from algebraic geometryâ€, IEEE International Conference on Granular Computing (GrC), (2013), pp.362-367.

      [7] Eltahir MA & Dafa-Alla AF, “Extracting knowledge from web server logs using web usage miningâ€, International Conference on Computing, Electrical and Electronics Engineering (ICCEEE), (2013), pp.413-417.

      [8] Chen X, Vorvoreanu M & Madhavan K, “Mining social media data for understanding students’ learning experiencesâ€, IEEE Transactions on Learning Technologies, Vol.7, No.3,(2014), pp.246-259.

      [9] Hudec M, VuÄetić M & VujoÅ¡ević M, “Synergy of linguistic summaries and fuzzy functional dependencies for mining knowledge in the dataâ€, 18th International Conference System Theory, Control and Computing, (2014), pp.335-340.

      [10] Duan J & Fu Y, “Attribute knowledge mining for Chinese word sense disambiguationâ€, International Conference on Asian Language Processing (IALP), (2015), pp.73-77.

      [11] Atahary T, Taha T, Webber F & Douglass S, “Knowledge mining for cognitive agents through path based forward checkingâ€, 16th IEEE/ACIS International Conference on Software Engineering, Artificial Intelligence, Networking and Parallel/Distributed Computing (SNPD), (2015), pp.1-8.

      [12] Hu Y, Guo Z, Wen J & Han J, “Research on knowledge mining for agricultural machinery maintenance based on association rulesâ€, IEEE 10th Conference on Industrial Electronics and Applications (ICIEA), (2015), pp.885-890.

      [13] Chemchem A & Drias H, “From data mining to knowledge mining: Application to intelligent agentsâ€, Expert Systems with Applications, Vol.42, No.3,(2015), pp.1436-1445.

      [14] Yang L, Wang Y & Xu Y, “Tacit knowledge mining algorithm based on linguistic truth-valued concept latticeâ€, 10th International Conference on Intelligent Systems and Knowledge Engineering (ISKE), (2015), pp.121-127.

      [15] Eltahir MA & Dafa-Alla AF, “Extracting knowledge from web server logs using web usage miningâ€, International Conference on Computing, Electrical and Electronics Engineering (ICCEEE), (2013), pp.413-417.

      [16] Wu PH, Lin MPH & Ho TY, “Analog layout synthesis with knowledge miningâ€, European Conference on Circuit Theory and Design (ECCTD), (2015), pp.1-4.

      [17] Sihui D & Xueguo X, “Research on tacit knowledge mining of university libraries based on data miningâ€, 13th International Conference on Service Systems and Service Management (ICSSSM), (2016), pp.1-4.

      [18] Vrablecová P & Å imko M, “Supporting semantic annotation of educational content by automatic extraction of hierarchical domain relationshipsâ€, IEEE Transactions on Learning Technologies, Vol.9, No.3,(2016), pp.285-298.

      [19] Al-Mardini M, Hajja A, Clover L, Olaleye D, Park Y, Paulson J & Xiao Y, “Reduction of hospital readmissions through clustering based actionable knowledge miningâ€, IEEE/WIC/ACM International Conference on Web Intelligence (WI), (2016), pp. 444-448.

      [20] Peng ZJ, Peng JL & Jiang YX, “Research and Implementation of Large Scale Bilingual Knowledge Mining Algorithm Based on Webâ€, International Conference on Robots & Intelligent System (ICRIS), (2016), pp.292-295.

      [21] Idoudi R, Ettabaa KS, Solaiman B & Hamrouni K, “Ontology knowledge mining based association rules rankingâ€, Procedia Computer Science, (2016), pp.345-354.

      [22] Cao G, Luo P, Wang L & Yang X, “Key Technologies for Sustainable Design Based on Patent Knowledge Miningâ€, Procedia CIRP, (2016), pp.97-102.

      [23] Dutt A, Ismail MA & Herawan T, “A systematic review on educational data miningâ€, IEEE Access, Vol.5, (2017), pp.15991-16005.

      [24] Schwendimann BA, Rodriguez-Triana MJ, Vozniuk A, Prieto LP, Boroujeni MS, Holzer A, Gillet D & Dillenbourg P, “Perceiving learning at a glance: A systematic literature review of learning dashboard researchâ€, IEEE Transactions on Learning Technologies, Vol.10, No.1,(2017), pp.30-41.

      [25] Hung JL, Wang MC, Wang S, Abdelrasoul M, Li Y & He W, “Identifying At-Risk Students for Early Interventions-A Time-Series Clustering Approachâ€, IEEE Transactions on Emerging Topics in Computing, Vol.5, No.1,(2017), pp.45-55.

  • Downloads

  • How to Cite

    Kalaiselvi, K., & Sowmiya, J. (2018). An Extensive Research on Knowledge Mining Systems:A Review. International Journal of Engineering & Technology, 7(3.6), 94-96. https://doi.org/10.14419/ijet.v7i3.6.14947

    Received date: 2018-07-02

    Accepted date: 2018-07-02

    Published date: 2018-07-04