Open challenges for data stream mining research

Author:

Krempl Georg1,Žliobaite Indre2,Brzeziński Dariusz3,Hüllermeier Eyke4,Last Mark5,Lemaire Vincent6,Noack Tino7,Shaker Ammar4,Sievi Sonja8,Spiliopoulou Myra1,Stefanowski Jerzy3

Affiliation:

1. University Magdeburg, Germany

2. Aalto University and HIIT, Finland

3. Poznan U. of Technology, Poland

4. University of Paderborn, Germany

5. Ben-Gurion U. of the Negev, Israel

6. Orange Labs, France

7. TU Cottbus, Germany

8. Astrium Space Transportation, Germany

Abstract

Every day, huge volumes of sensory, transactional, and web data are continuously generated as streams, which need to be analyzed online as they arrive. Streaming data can be considered as one of the main sources of what is called big data. While predictive modeling for data streams and big data have received a lot of attention over the last decade, many research approaches are typically designed for well-behaved controlled problem settings, overlooking important challenges imposed by real-world applications. This article presents a discussion on eight open challenges for data stream mining. Our goal is to identify gaps between current research and meaningful applications, highlight open problems, and define new application-relevant research directions for data stream mining. The identified challenges cover the full cycle of knowledge discovery and involve such problems as: protecting data privacy, dealing with legacy systems, handling incomplete and delayed information, analysis of complex data, and evaluation of stream mining algorithms. The resulting analysis is illustrated by practical applications and provides general suggestions concerning lines of future research in data stream mining.

Publisher

Association for Computing Machinery (ACM)

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