Search Results for author: Paul Koch

Found 6 papers, 6 papers with code

Image and AIS Data Fusion Technique for Maritime Computer Vision Applications

1 code implementation7 Dec 2023 Emre Gülsoylu, Paul Koch, Mert Yıldız, Manfred Constapel, André Peter Kelm

This demonstrates the potential of our approach in creating datasets for vessel detection, pose estimation and auto-labelling pipelines.

Management object-detection +4

Towards Realistic Evaluation of Industrial Continual Learning Scenarios with an Emphasis on Energy Consumption and Computational Footprint

1 code implementation ICCV 2023 Vivek Chavan, Paul Koch, Marian Schlüter, Clemens Briese

This paper addresses research gaps between current IL research and industrial project environments, including varying incremental tasks and the introduction of Joint Training in tandem with IL.

Class Incremental Learning Incremental Learning

Generating Annotated Training Data for 6D Object Pose Estimation in Operational Environments with Minimal User Interaction

1 code implementation17 Mar 2021 Paul Koch, Marian Schlüter, Serge Thill

Here, we present a proof of concept for a novel approach of autonomously generating annotated training data for 6D object pose estimation.

6D Pose Estimation using RGB Robot Manipulation

InterpretML: A Unified Framework for Machine Learning Interpretability

2 code implementations19 Sep 2019 Harsha Nori, Samuel Jenkins, Paul Koch, Rich Caruana

InterpretML is an open-source Python package which exposes machine learning interpretability algorithms to practitioners and researchers.

Additive models BIG-bench Machine Learning

Axiomatic Interpretability for Multiclass Additive Models

1 code implementation22 Oct 2018 Xuezhou Zhang, Sarah Tan, Paul Koch, Yin Lou, Urszula Chajewska, Rich Caruana

In the first part of this paper, we generalize a state-of-the-art GAM learning algorithm based on boosted trees to the multiclass setting, and show that this multiclass algorithm outperforms existing GAM learning algorithms and sometimes matches the performance of full complexity models such as gradient boosted trees.

Additive models Binary Classification +1

Considerations When Learning Additive Explanations for Black-Box Models

1 code implementation ICLR 2019 Sarah Tan, Giles Hooker, Paul Koch, Albert Gordo, Rich Caruana

In this paper, we study global additive explanations for non-additive models, focusing on four explanation methods: partial dependence, Shapley explanations adapted to a global setting, distilled additive explanations, and gradient-based explanations.

Additive models

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