The documentation practice for machine-learned (ML) models often falls short of established practices for traditional software, which impedes model accountability and inadvertently abets inappropriate or misuse of models. Recently, model cards, a proposal for model documentation, have attracted notable attention, but their impact on the actual practice is unclear. In this work, we systematically study the model documentation in the field and investigate how to encourage more responsible and accountable documentation practice. Our analysis of publicly available model cards reveals a substantial gap between the proposal and the practice. We then design a tool named DocML aiming to (1) nudge the data scientists to comply with the model cards p...
The potential of ecological models for supporting environmental decision making is increasingly ackn...
The critical data modeling issue is learning to think like a data modeler. The representation method...
Community-developed minimum information checklists are designed to drive the rich and consistent rep...
Deep learning models for natural language processing (NLP) are increasingly adopted and deployed by ...
Datasets are central to training machine learning (ML) models. The ML community has recently made si...
Documenting complex models has long been a problem. Models are currently developed, implemented, and...
The workflow of running simulations, converting from model data format to a common data format and t...
International audienceThe acceptance and usefulness of simulation models are often limited by the ef...
Context: Over the past years, the development of machine learning (ML) enabled software has seen a r...
The acceptance and usefulness of simulation models are often limited by the efficiency, transparency...
Currently, research requires processing data at alarge scale. Data is not anymore a collection of st...
The demand for better reproducibility of research results is growing. With more data becoming availa...
In the face of the "crisis of reproducibility" and the rise of "big data" with its associated issues...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.Ma...
CONTEXT.—: Machine learning (ML) allows for the analysis of massive quantities of high-dimensional c...
The potential of ecological models for supporting environmental decision making is increasingly ackn...
The critical data modeling issue is learning to think like a data modeler. The representation method...
Community-developed minimum information checklists are designed to drive the rich and consistent rep...
Deep learning models for natural language processing (NLP) are increasingly adopted and deployed by ...
Datasets are central to training machine learning (ML) models. The ML community has recently made si...
Documenting complex models has long been a problem. Models are currently developed, implemented, and...
The workflow of running simulations, converting from model data format to a common data format and t...
International audienceThe acceptance and usefulness of simulation models are often limited by the ef...
Context: Over the past years, the development of machine learning (ML) enabled software has seen a r...
The acceptance and usefulness of simulation models are often limited by the efficiency, transparency...
Currently, research requires processing data at alarge scale. Data is not anymore a collection of st...
The demand for better reproducibility of research results is growing. With more data becoming availa...
In the face of the "crisis of reproducibility" and the rise of "big data" with its associated issues...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.Ma...
CONTEXT.—: Machine learning (ML) allows for the analysis of massive quantities of high-dimensional c...
The potential of ecological models for supporting environmental decision making is increasingly ackn...
The critical data modeling issue is learning to think like a data modeler. The representation method...
Community-developed minimum information checklists are designed to drive the rich and consistent rep...