Home icon
Data Visualisation Guide

Visual representation

2 minutes read

Ethics in data visualisation

For an overview of pitfalls to avoid in ethical, visual representation of data, see the pages on Pitfalls in dataviz: scales, Pitfalls in dataviz: colours and Pitfalls in dataviz: chart types. These pitfalls are listed here again for reference. So, ethical data visualisation also means

These pitfalls should be avoided to produce undistorted, meaningful and truthful visualisations to communicate data.

When any chance in misinterpretation arises, chart authors should guide the reader in a way that visualisations are clear, and can only be interpreted in the correctly. This can be done by making good use of labels, axis titles, legends and annotations.

Related pages

Data aggregation

Representing people

Data acquisition

Data quantification

Data transformation

Anonymisation

Ethics in data visualisation