Multi-Stage Classifier Design

05/20/2012
by   Kirill Trapeznikov, et al.
0

In many classification systems, sensing modalities have different acquisition costs. It is often unnecessary to use every modality to classify a majority of examples. We study a multi-stage system in a prediction time cost reduction setting, where the full data is available for training, but for a test example, measurements in a new modality can be acquired at each stage for an additional cost. We seek decision rules to reduce the average measurement acquisition cost. We formulate an empirical risk minimization problem (ERM) for a multi-stage reject classifier, wherein the stage k classifier either classifies a sample using only the measurements acquired so far or rejects it to the next stage where more attributes can be acquired for a cost. To solve the ERM problem, we show that the optimal reject classifier at each stage is a combination of two binary classifiers, one biased towards positive examples and the other biased towards negative examples. We use this parameterization to construct stage-by-stage global surrogate risk, develop an iterative algorithm in the boosting framework and present convergence and generalization results. We test our work on synthetic, medical and explosives detection datasets. Our results demonstrate that substantial cost reduction without a significant sacrifice in accuracy is achievable.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/20/2015

Feature-Budgeted Random Forest

We seek decision rules for prediction-time cost reduction, where complet...
research
10/27/2021

Cascaded Classifier for Pareto-Optimal Accuracy-Cost Trade-Off Using off-the-Shelf ANNs

Machine-learning classifiers provide high quality of service in classifi...
research
10/01/2018

Classification from Positive, Unlabeled and Biased Negative Data

Positive-unlabeled (PU) learning addresses the problem of learning a bin...
research
10/04/2017

Constructing multi-modality and multi-classifier radiomics predictive models through reliable classifier fusion

Radiomics aims to extract and analyze large numbers of quantitative feat...
research
09/26/2019

Two-stage Image Classification Supervised by a Single Teacher Single Student Model

The two-stage strategy has been widely used in image classification. How...
research
10/26/2022

UnfoldML: Cost-Aware and Uncertainty-Based Dynamic 2D Prediction for Multi-Stage Classification

Machine Learning (ML) research has focused on maximizing the accuracy of...
research
10/15/2019

Dynamically Aggregating Diverse Information

An agent has access to multiple data sources, each of which provides inf...

Please sign up or login with your details

Forgot password? Click here to reset