FAAD: A Self-Optimizing Algorithm for Anomaly Detection

FAAD: A Self-Optimizing Algorithm for Anomaly Detection

Adeel Hashmi and Tanvir Ahmad

Department of Computer Engineering, Jamia Millia Islamia, India

Abstract: Anomaly/Outlier detection is the process of finding abnormal data points in a dataset or data stream. Most of the anomaly detection algorithms require setting of some parameters which significantly affect the performance of the algorithm. These parameters are generally set by hit-and-trial; hence performance is compromised with default or random values. In this paper, the authors propose a self-optimizing algorithm for anomaly detection based on firefly meta-heuristic, and named as Firefly Algorithm for Anomaly Detection (FAAD). The proposed solution is a non-clustering unsupervised learning approach for anomaly detection. The algorithm is implemented on Apache Spark for scalability and hence the solution can handle big data as well. Experiments were conducted on various datasets, and the results show that the proposed solution is much accurate than the standard algorithms of anomaly detection.  

Keywords: Anomaly detection, outliers, firefly algorithm, big data, parallel algorithms and apache spark.

Received November 19, 2017; accepted April 28, 2019 

https://doi.org/10.34028/iajit/17/2/16

Full text    

Read 1369 times Last modified on Wednesday, 26 February 2020 05:55
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…