Corpus ID: 2824413

Comparative Study of Data Mining Tools

@inproceedings{Rangra2014ComparativeSO,
  title={Comparative Study of Data Mining Tools},
  author={Kalpana Rangra and K. L. Bansal},
  year={2014}
}
  • Kalpana Rangra, K. L. Bansal
  • Published 2014
  • Engineering
  • Today the rapid development of information technology and adoption of its several applications has created the revolution in business and various fields significantly. The growing interest in business using electronics and technology has brought vital improvement in data mining field also, since it's an important part of data accessibility. Data mining and it's applications can be viewed as one of the emerging and promising technological developments that provide efficient means to access… CONTINUE READING
    80 Citations

    Tables from this paper

    Data Mining Tools: A Comparative and Analytical Study
    • Dr. Sandeep Aggarwal
    • 2018
    • 1
    • Highly Influenced
    • PDF
    A Comparative Study on Data Mining Tools
    • 3
    • PDF
    A Study of Open Source Data Mining Tools and its Applications
    • 4
    • PDF
    Importance of Statistics for Data Mining and Data Science
    • 1
    • PDF

    References

    SHOWING 1-10 OF 10 REFERENCES
    KEEL: a software tool to assess evolutionary algorithms for data mining problems
    • 1,040
    • PDF
    Principles of Data Mining
    • 3,520
    • PDF
    SLIQ: A Fast Scalable Classifier for Data Mining
    • 871
    • PDF
    Principles of Data Mining
    • Davis
    • Computer Science
    • 2001
    • 83
    Layered neural net design through decision trees
    • I. Sethi
    • Computer Science
    • IEEE International Symposium on Circuits and Systems
    • 1990
    • 15
    Data Mining Practical Machine Learning Tools and Techniques
    • 9,834
    • PDF
    Eds.),. Advances in Knowledge Discovery and Data
    • 1996
    : “ PERFORMANCE COMPARISON OF DATA MINING TOOLS IN MINING ASSOCIATION RULES ”
    • International Journal of Research in IT , Management and Engineering ( IJRIME ) Ralf Mikut and Markus Reischl Wiley Interdisciplinary Reviews : Data Mining and Knowledge Discovery