🏆 Test your reinforced steel (rebar) knowledge! Take our ShapeCode Quiz and enter to win a Shape Code Champ t-shirt
Removing AI bias for better decision making

Removing AI bias for better decision making

It is difficult to deny that humans make biased decisions. Unconsciously we all make choices that are based on prejudices and flawed associations. This bias that we introduce to our business decisions can trickle through entire organisations, from recruitment to market segmentation. AI, with its lack of consciousness, human experience and gut feelings, has the potential to remove bias from businesses, and yet all too often AI is found to exhibit the same biases - link no longer works that we do.

Where does AI bias come from?

An algorithm is only as good as the data it is trained upon, and frequently the source of bias in AI is either biased data or biased sampling of data. An algorithm trained only to understand data associated with caucasian males will not make informed decisions about other ethnicities or genders. Some developers remove labels - link no longer works that can introduce bias, such as gender labels, only to find that the resulting algorithm has incorporated gender bias from a different variable, such as predominantly used words - link no longer works by subjects of a certain gender.

Why should you care about AI bias?

AI free from bias can support improved decision making, not just by computing more variables more quickly than a human can, but also by avoiding the pitfalls of clouded human judgement. For example, with a rigorous algorithm that has been audited to remove bias, an AI could examine a much wider pool of applicants and introduce fair testing to the whole of your recruitment pipeline, finding the best possible candidate for a job instead of the candidate that best fits an outdated benchmark.

How can AI bias be removed?

Key to developing ethical, unbiased AI is collaboration. A bias management - link no longer works strategy should be built into the development process at every step to attempt to catch bias before it is introduced. Following the ethics guidelines for trustworthy AI - link no longer works, algorithms should be lawful, ethical, and robust. Key to all of these is that AI should be auditable for bias, so that the bias can either be removed or compensated for by targeted training and human intervention.

Ultimately, it is easier to find and remove bias - link no longer works in an algorithm, than it is to do so in a human. However, a diverse team - link no longer works is more likely to understand and identify areas of bias in an algorithm, and an organisation that values fairness and equality will be less likely to produce biased training data. For business leaders hoping to deploy unbiased AI, addressing existing areas of bias within the business is a good place to start.

With AI we can remove bias from our decisions, but only if we actively remove our own biases from AI.

Share :

Related Posts

What is cloud data development?

What is cloud data development?

Azure Data Factory is a cloud-based data integration service. It does not store data itself, but allows you to create and monitor automated workflows that collect, integrate, and (to some extent) transform large volumes of data from disparate sources, and pass them on to other services that can store, transform, analyse and use the data.

Read More: What is cloud data development?
Garbage In, Garbage Out – The pitfalls of bad data

Garbage In, Garbage Out – The pitfalls of bad data

What is it? In advance of our upcoming Data Science Bootcamp, we are pleased to announce an open evening to explore the importance of data quality. Talent Garden faculty member, Steph Locke – data scientist and Microsoft AI MVP talks Garbage In, Garbage Out – The pitfalls of bad data.

Read More: Garbage In, Garbage Out – The pitfalls of bad data

Building a solid foundation in data science

Steph Locke on building a solid foundation in data science We spoke to Steph Locke about how much experience is needed to build a solid foundation in data science and how to future-proof your tech skills.

Read More: Building a solid foundation in data science