Beta Distribution Drift Detection for Adaptive Classifiers

11/27/2018
by   Lukas Fleckenstein, et al.
0

With today's abundant streams of data, the only constant we can rely on is change. For stream classification algorithms, it is necessary to adapt to concept drift. This can be achieved by monitoring the model error, and triggering counter measures as changes occur. In this paper, we propose a drift detection mechanism that fits a beta distribution to the model error, and treats abnormal behavior as drift. It works with any given model, leverages prior knowledge about this model, and allows to set application-specific confidence thresholds. Experiments confirm that it performs well, in particular when drift occurs abruptly.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/16/2022

Class Distribution Monitoring for Concept Drift Detection

We introduce Class Distribution Monitoring (CDM), an effective concept-d...
research
07/28/2020

Diagnosing Concept Drift with Visual Analytics

Concept drift is a phenomenon in which the distribution of a data stream...
research
10/06/2016

Adaptive Online Sequential ELM for Concept Drift Tackling

A machine learning method needs to adapt to over time changes in the env...
research
03/14/2023

On the Connection between Concept Drift and Uncertainty in Industrial Artificial Intelligence

AI-based digital twins are at the leading edge of the Industry 4.0 revol...
research
06/08/2017

Distribution-Free One-Pass Learning

In many large-scale machine learning applications, data are accumulated ...
research
05/03/2023

An Adaptive Algorithm for Learning with Unknown Distribution Drift

We develop and analyze a general technique for learning with an unknown ...
research
07/10/2020

Reactive Soft Prototype Computing for Concept Drift Streams

The amount of real-time communication between agents in an information s...

Please sign up or login with your details

Forgot password? Click here to reset