Not Logged In

Bi-Level Associative Classifier using Automatic Learning on Rules

Full Text: DEXA2020.pdf PDF

The power of associative classifiers is to determine patterns from the data and perform classification based on the features that are most indicative of prediction. Although they have emerged as competitive classification systems, associative classifiers suffer from limitations such as cumbersome thresholds requiring prior knowledge which varies with the dataset. Furthermore, ranking discovered rules during inference rely on arbitrary heuristics using functions such as sum, average, minimum, or maximum of confidence of the rules. Therefore, in this study, we propose a two-stage classification model that implements automatic learning to discover rules and to select rules. In the first stage of learning, statistically significant classification association rules are derived through association rule mining. Further, in the second stage of learning, we employ a machine learning-based algorithm which automatically learns the weights of the rules for classification during inference. We use the p-value obtained from Fisher’s exact test to determine the statistical significance of rules. The machine learning-based classifiers like Neural Network, SVM and rule-based classifiers like RIPPER help in classifying the rules automatically in the second stage of learning, instead of forcing the use of a specific heuristic for the same. The rules obtained from the first stage form meaningful features to be used in the second stage of learning. Our approach, BiLevCSS (Bi-Level Classification using Statistically Significant Rules) outperforms various state-of-the-art classifiers in terms of classification accuracy.

Citation

N. Sood, L. Bindra, O. Zaiane. "Bi-Level Associative Classifier using Automatic Learning on Rules". International Conference on Database and Expert Systems Applications (DEXA), (ed: Sven Hartmann, Josef Küng, Gabriele Kotsis, A Min Tjoa, Ismail Khalil), pp 201-216, September 2020.

Keywords: Associative classification, Classification rules, Statistical significance
Category: In Conference
Web Links: doi
  Springer

BibTeX

@incollection{Sood+al:DEXA20,
  author = {Nitakshi Sood and Leepakshi Bindra and Osmar R. Zaiane},
  title = {Bi-Level Associative Classifier using Automatic Learning on Rules},
  Editor = {Sven Hartmann, Josef Küng, Gabriele Kotsis, A Min Tjoa, Ismail
    Khalil},
  Pages = {201-216},
  booktitle = {International Conference on Database and Expert Systems
    Applications (DEXA)},
  year = 2020,
}

Last Updated: September 15, 2020
Submitted by Sabina P

University of Alberta Logo AICML Logo