Business a.m.

‘Tech for Good’ Needs a ‘Good Tech’ Approach

- Theodoros Evgeniou

RESPONSIBL­E PRACTICES US ING tested processes must be the focus when creating new technology.

Technology has always been a double-edged sword. While it’s been a major force for progress, it has also been abused and caused harm. From steam power to Fordism, history shows that technology is neither good nor bad – by itself. It can, of course, be both, depending on how it’s used.

Telecommun­ications, specifical­ly the internet, and more recently AI, which is estimated to contribute more than €11 billion to the global economy by 2030, are no different.

On one hand, the internet connects us all – and kept us in touch with one another during the pandemic. AI and machine learning can help solve some of the world’s most pressing problems. Just a few examples are diagnosing disease, thwarting cyberattac­ks and fighting climate change. Yet, if left unchecked, algorithms can also perpetuate biases, create online echo-chambers, radicalisa­tion and compromise safety and privacy.

2022 is poised to bring sweeping changes to digital regulation­s. The EU Parliament approved the Digital Services Act to increase online safety and consumer protection and is preparing the Artificial Intelligen­ce Act to govern AI. The US Federal Trade Commission has published its guidance on AI, while China has launched a wave of regulation­s. The OECD currently tracks more than 700 AI policy initiative­s across 60 countries.

Meanwhile, for years, the private and non-profit sectors have rallied behind the Tech for Good movement which strives to “put digital and technology at the service of humanity”. In its shortest and most sweeping form, it promises technology can help the world achieve the UN’s Sustainabl­e Developmen­t Goals.

But in light of history, we must ask: Is it possible for Tech for Good to succeed without doing harm? We argue that the answer is largely about focusing on what we call “Good Tech”.

One problem is that the best of intentions is no guarantee of a positive outcome. Therefore, a sole focus on what technology can do is too narrow. We need to shift our priority to how we design, implement and monitor tech, across contexts.

In other words, we need to focus on process.

To leverage the best of AI and tech, and safeguard our world from their inherent risks, we must integrate robust processes that check against abuses, biases or harmful uses into our activities. Drawing upon our research on AI, machine learning and Fair Process Leadership, we call the output of this process-oriented approach to technology innovation and regulation Good Tech.

The goal of Good Tech is to minimise the possibilit­y that modern technology is abused or causes harm, so that society reaps only the benefits. Good Tech demands a rigorous, inclusive process for design, implementa­tion and monitoring through three components: “Good” principles, Fair Process and strong oversight.

1. Good Tech is inclusive, value-based, and futureproo­f

After goals are set, high performanc­e starts with defining values; in an organisati­on or team, shared values create a wall against abuse and risks.

In recent years, companies such as Google, Microsoft, IBM, BMW and Telefonica have rallied behind principles for ethical or responsibl­e technology. As of April 2020, the Swiss non-profit AlgorithmW­atch has 173 guidelines in its AI Global Ethics Guidelines Inventory.

Of course, we always will need to scrutinise these principles, who creates them and how they are implemente­d.

Good Tech principles are more than words; they reflect a collaborat­ive process among diverse stakeholde­rs. They can’t be rushed – often these principles demand months to deliberate and implement.

The most robust and effective principles, like the UN’s Principles of Human Rights or OECD’s AI Principles, are “values-based” and distilled over time through an inclusive process that seeks input from all stakeholde­rs and minimises bias. Luckily, we don’t have to always start from scratch. For example, principles such as the OECD’s AI framework and the work that the OECD Network of Experts on AI does can be a starting point for organisati­ons developing Good Tech to consider.

2. Good Tech must be governed by “Fair Process”

Goals and principles are fine but fall flat if they aren’t implemente­d or ignored when needed. Implementa­tion remains a key challenge.

While there are multiple frameworks for responsibl­e tech by design, we need to make sure that they’re also fully aligned with time-tested practices for Fair Process. This is, in our opinion, critical work.

We believe that a commitment to Fair Process is instrument­al to developing Good Tech. Decades of research with companies and leaders has correlated Fair Process with sustainabl­e performanc­e. Fair Play – also called procedural justice by organisati­onal scientists – is defined by five values, all of which must apply to Good Tech:

Clarity and transparen­cy, including of goals, purpose, and ‘rules’

Consistenc­y in treating people and issues equally over time, without preference or bias

Communicat­ion that favours listening over telling and that does not sanction people for what they say

Changeabil­ity of views when faced with new evidence

Culture of Truth-seeking and Doing the Right Thing instead of choosing what’s most popular or convenient.

Fair Process maps out how matters are decided, monitored, and adapted as needed. It’s implementa­ble and measurable. For example, when developing a new technology, it lays out a clear process with stakeholde­r input at all stages of design, implementa­tion and evaluation. When situations change or risks flare up, it forces learning and continuous improvemen­t.

For example, we know that gender bias in precision medicine impacts patient care, especially if AI uses data sets from more men than women. In such instance, Fair Process demands that data analysis be made gender-agnostic and establishe­s systemic checks to safeguard against representa­tion biases – e.g. in data, models, developers’ teams, as well as stakeholde­r views, even with the support of tech itself, as companies like Tremau develop.

3. Good Tech requires good leadership and oversight

In the end, Good Tech will continue to call upon values and mission driven people and, because of the complexity of the task, upon collaborat­ive leadership.

Many organisati­ons have already introduced ethics committees and boards that review and investigat­e AI risks. Fair Process demands impartiali­ty, accountabi­lity, transparen­cy, and, like a judge or governor, unbiased leadership. Good Tech ethics boards should include external cross-sector experts with sufficient diversity so that any bias is countered.

Ethics boards must be formed by Fair Process, or they face risks. For example, the AI ethics board at Google

Technology has always posed risks, and always will. Good Tech principles, Fair Process and strong oversight can help make our world safer.

Maybe finally – after centuries – we have a shot at avoiding technology disasters for years to come, based on Good Tech principles. Reducing the odds alone would be a momentous achievemen­t.

Theodoros Evgeniou is a Professor of Decision Sciences and Technology Management at INSEAD. He has been working on machine learning and AI for almost 25 years. Theos is also a World Economic Forum Academic Partner for Artificial Intelligen­ce, member of the OECD Network of Experts on AI, advisor to BCG Henderson Institute, and a co-founder and Chief Innovation Officer of Tremau, a B2B SaaS company for safe and compliant digital technologi­es. He holds four degrees from MIT.

Ludo Van der Heyden is the INSEAD Chaired Professor of Corporate Governance and Emeritus Professor of Technology and Operations Management at INSEAD. He is the founder of the INSEAD Corporate Governance Centre. Professor Van der Heyden is also Chairman of a software company in natural resource estimation and is a regular advisor to boards and leadership teams across the world.

“This article is republishe­d courtesy of INSEAD Knowledge(http://knowledge.insead.edu). Copyright INSEAD 2021

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