Skip to Content

Recommendations on analysing and testing for biases in datasets

Virtual
Unique Identifier: c7049c9f-e33c-433e-8557-fa0a544e703b

Service Description

Providing expertise and recommendations on analysing biases in the dataset or between datasets that could influence the performance of the algorithm. Differences could, for example, be caused by measurement devices or the operator.

Method Description: For unknown biases can be tested with, for example, clustering algorithms or layer-wise relevance propagation for supervised learning.

Method reference:

Offerings: Data (FAIRness, preprocessing, standardization, best practices, etc.)
Provider Logo

Provider & Contact

Provider Country Germany
Published Email bjoern.eskofier@fau.de

Pricing is available to registered users. SMEs receive significant state-aid reductions (GBER) — or, depending on the call, free services during the funded project. Sign in or register to see the price for your organisation.

Operational Details

Service Inputs Dataset/Documentation about the data collection procedure (e.g. sensory output and study protocols)
Service Outputs Analysis Report highlighting potential biases/limitations of the dataset for use in AI applications
Certification Support None
Service Standards None