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AI and Ethics: Guide to Navigating AI’s Ethical Challenges
mercredi 31 juillet 2024, 22:00 , par eWeek
Artificial intelligence (AI) has improved to the point that machines can now perform tasks once limited to humans. AI can produce art, engage in intelligent conversations, recognize objects, learn from experience, and make autonomous decisions, making it useful for personalized recommendations, social media content creation, healthcare decisions, screening job candidates, self-driving cars, and facial recognition. The relationship between AI and ethics is of growing importance—while the technology is new and exciting, with the potential to benefit businesses and humanity as a whole, it also creates many unique ethical challenges that need to be understood, addressed, and regulated.
KEY TAKEAWAYS Incorporating ethics into the use of artificial intelligence and related technologies protects organizations, their employees, and their customers. (Jump to Section) Organizations that implement AI must prioritize transparency, fairness, data protection, and safety. (Jump to Section) Ethical AI guidelines assist organizations in creating frameworks that match local regulations and standards for AI. (Jump to Section) TABLE OF CONTENTS ToggleThe Importance of Ethics in AI4 Key Ethical Principles in AIEthical Challenges in AICase Study Examples of Ethics in Artificial IntelligenceGovernment Regulations and Policies for AI EthicsOther Frameworks and Guidelines for Ethical AI7 Ways To Implement Ethical AIBottom Line: Understanding AI and Ethics The Importance of Ethics in AI The role of ethics in AI is to create frameworks and guardrails that ensure that organizations develop and use AI in ways that put privacy and safety first. This includes making sure AI treats all groups fairly, without bias; preserving people’s privacy through responsible data usage; and holding companies responsible for the behavior of artificial intelligence they’ve developed or deployed. For AI to be considered trustworthy, companies must be transparent about what training data is used, how it is used, and what processes AI systems use to make decisions. In addition, AI must be built to be secure—particularly in sectors like healthcare, where patient privacy is paramount. Ultimately, humans establish moral and ethical criteria for AI to ensure that it acts according to our values and ideals. Ethical AI helps organizations create trust and loyalty with their users. It also helps companies comply with regulations, reduce their legal risk, and improve their reputations. Ethical behaviors promote innovation and progress, resulting in new opportunities, and establishing the safety and reliability of AI can reduce harm and increase confidence in its applications. Overall, ethical AI fosters an equal society by preserving human rights and contributing to larger societal benefits, indirectly helping economic success and providing users with fair, dependable, and respectful AI systems. 4 Key Ethical Principles in AI Following ethical principles can help ensure that AI systems are trustworthy, safe, fair, and respectful of user rights, letting AI developers create a technology that helps as many people as possible while minimizing potential risks. Transparency and Accountability in AI Transparency in AI refers to being clear and open about how AI systems work, including how decisions are made and what data is used. This transparency fosters trust by making it easier for users to understand AI behaviors, and accountability ensures that there are defined responsibilities for AI system outputs, allowing faults to be identified and corrected. This concept means that AI creators and users are held accountable for any undesirable consequences. Fairness and Non-Discrimination in AI Fairness in AI means treating everyone equally and avoiding favoritism for any group. AI algorithms must be free of biases that might lead to unjust treatment. Non-discrimination indicates that AI should not base its choices on biased or unfair factors. Together, these principles make certain that AI systems are reasonable and equitable, treating all humans equally regardless of background. Privacy and Data Protection in AI In AI, privacy refers to the need to keep personal information confidential and secure and verifying that data is used in ways that respect users’ privacy. Data protection entails protecting data from abuse or theft, installing robust security measures to prevent cyberattacks and guaranteeing that it is only used for its intended purposes. These principles promote trust by promising users that their data is handled ethically and securely. Safety and Reliability in AI Safety in AI attests that systems do not hurt people, property, or the environment, which requires extensive testing to avoid harmful malfunctions or unexpected incidents. Reliability implies that AI systems continuously perform their intended functions successfully under a variety of contexts, including managing unforeseen events. These principles make certain that AI systems are reliable and pose no threat to users or society. Ethical Challenges in AI Despite widespread public concern about AI ethics, many businesses have yet to fully address these issues. A survey conducted by Conversica reported that 86 percent of organizations that have adopted AI agree on the need to have clearly stated guidelines for its appropriate use. However, just 6 percent of companies have guidelines in place to ensure the responsible use of AI. Companies using AI reported that the major issues were lack of transparency, the risk of false information, and the accuracy of data models. Bias in AI Data Because humans created AI, and AI relies on data provided by humans, some human bias will make its way into AI systems. In a very public example, the AI criminal justice tool database COMPAS (Correctional Offender Management Profiling for Alternative Sanctions) tended to discriminate against certain groups. Designed to predict a defendant’s risk of committing another crime, courts and probation and parole officials used the system to determine appropriate criminal sentences and which offenders were eligible for probation or parole. But ProPublica reported that COMPAS was 45 percent more likely to assign higher risk scores to Black defendants than white defendants. In reality, Black and white defendants reoffend at about the same rate—59 percent—but Black defendants were receiving longer sentences and were less likely to receive probation or parole because of AI bias. While some bias may be inevitable, steps should be taken to mitigate it. Difficult questions remain concerning to what degree bias must be eliminated before an AI can be used to make decisions. Is it sufficient to create an AI system that is less biased than humans, or should we require that the system is closer to having no biases? Data Privacy Issues Our digital lives mean we leave a trail of data that can be exploited by businesses and governments. Even when done legally, this collection and use of personal data is ethically dubious, and people are often unaware of the extent to which this is going on—and would likely be troubled by it if they were better informed. AI exacerbates all these issues by making it easier to collect personal data and use it to manipulate people. In some instances, that manipulation is fairly benign—such as steering viewers to movies and TV programs that they might like because they have watched something similar—but the lines get blurrier when the AI is using personal data to manipulate customers into buying products. In other cases, algorithms might be using personal data to sway people’s political beliefs or even convince them to believe things that aren’t true. Additionally, AI facial recognition software makes it possible to gather extensive information about people by scanning photos of them. Governments are wrestling with the question of when people have the right to expect privacy when they are out in public. A few countries have decided that it is acceptable to perform widespread facial recognition, while some others outlaw it in all cases. Most draw the lines somewhere in the middle. Privacy and surveillance concerns present obvious ethical challenges for which there is no easy solution. At a minimum, organizations need to make sure that they are complying with all relevant legislation and upholding industry standards. But leaders also need to make sure that they are doing some introspection and considering whether they might be violating people’s privacy with their AI tools. Read our article on the history of artificial intelligence to learn more about the evolution of this dynamic technology. Transparency About Data Use and Algorithms AI systems often help make important choices that affect people’s lives, including hiring, medical, and criminal justice decisions. Because the stakes are so high, people should be able to understand why a particular AI system came to the conclusion that it did. However, the rationale for determinations made by AI is often hidden from the people who are affected. The reason for this is that algorithms that AI systems use to make decisions are often kept secret by vendors to protect them from competitors. Also, AI algorithms can sometimes be too complicated for non-experts to easily understand. AI decisions are often not transparent to anyone, not even the people who designed them. Deep learning, in particular, can result in models that only machines can understand. Organizational leaders need to ask themselves whether they are comfortable with “black box” systems having such a large role in important decisions. Increasingly, the public is growing uncomfortable with opaque AI systems and demanding more transparency. As a result, many organizations are looking for ways to bring more traceability and governance to their artificial intelligence tools. Human Liability and Accountability for AI Transgressions The fact that AI systems are capable of acting autonomously raises important liability and accountability issues about who should be held responsible when something goes wrong. For example, this issue arises when autonomous vehicles cause accidents or even deaths. In most cases, when a defect causes an accident, the manufacturer is held responsible for the accident and required to pay the appropriate legal penalty. However, in the case of autonomous systems like self-driving cars, legal systems have significant gaps. It is unclear when the manufacturer is to be held responsible in such cases. Similar difficulties arise when AI is used to make healthcare recommendations. If the AI makes the wrong recommendation, should its manufacturer be held responsible? Or does the practitioner bear some responsibility for double-checking that the AI is correct? Legislatures and courts are still working out the answers to many questions like these. Self-Awareness and Ethical Obligations Some experts say that AI could someday achieve self-awareness. This could potentially imply that an AI system would have rights and moral standing similar to humans. This may seem farfetched, but it’s a goal for AI scientists, and at the pace that AI technology is progressing, it is a real possibility. AI has already become able to do things that were once thought impossible. If this were to happen, humans could have significant ethical obligations regarding the way they treat AI. Would it be wrong to force an AI to accomplish the tasks that it was designed to do? Would we be obligated to give an AI a choice about whether or how it was going to execute a command? And could we ever potentially be in danger from an AI? Learn more about how AI is altering software development with AI augmentation. Case Study Examples of Ethics in Artificial Intelligence AI is transforming a number of industries, providing significant benefits while posing ethical challenges in such fields as healthcare, criminal justice, finance, and autonomous vehicles. Ethics of AI in Healthcare In diagnostic imaging, AI algorithms are used to evaluate medical images for early detection of diseases like cancer. These computers can occasionally outperform human radiologists, but their use can raise ethical concerns about patient privacy, data security, and potentially biased results if the training data is not representative. The ethical considerations include obtaining informed consent for data use, maintaining transparency in AI decision-making, correcting biases in training data, and protecting patient privacy. Ethics of AI in Criminal Justice Criminal law addresses the most harmful actions in society, minimizing crime and apprehending and punishing perpetrators. AI technologies provide new opportunities to drastically reduce crime and deal with criminals more fairly and efficiently by forecasting where crimes will occur and recording them as they happen. It can also assess the likelihood of reoffending, assisting judges in imposing suitable sentences to keep communication safe. However, the application of AI in criminal justice creates ethical considerations, including bias, privacy infringements, and the need for transparency and accountability in AI-driven decisions. The ethical use of AI factors careful consideration of these concerns as well as strong legal and regulatory structures to prevent misuse. Ethics of AI in Finance One interesting use of ethical AI in finance is loan application evaluation. Financial organizations can use AI to analyze loan applications more comprehensively and fairly. Ethical AI models can assess an applicant’s financial health by analyzing a broader set of data points over time, such as payment history, income stability, and spending habits. This technique helps to avoid biases that can develop from standard credit scoring systems which frequently rely on limited data points such as credit scores. By assuring openness and fairness in decision-making, ethical AI can promote financial inclusion and enable fairer access to finance for underrepresented communities. Ethics of AI in Autonomous Vehicles The implementation of emergency decision-making algorithms in autonomous vehicles is a compelling use case for ethical AI. These algorithms are intended to handle situations in which a collision is unavoidable and the AI must determine how to minimize damage. For example, if an autonomous vehicle is faced with the choice of hitting a pedestrian lane or swerving and perhaps endangering the passengers, the AI will use ethical frameworks to make the decision. In such circumstances, the AI weighs a variety of parameters, including the number of lives at stake, the severity of potential damage, and the possibility of different outcomes. The ethical considerations underlying this decision-making process include reducing harm and guaranteeing fairness. Government Regulations and Policies for AI Ethics Government regulation and policies on AI ethics range widely, with each region developing distinct strategies based on political, economic, and social contexts. These approaches influence how AI is developed, deployed, and governed with varying priorities such as innovation, ethics, privacy, and security. China China leads in AI regulation, having implemented guidelines for recommendation algorithms in 2021, deep synthesis content such as deepfakes in 2022, and generative AI including chatbots in 2023. These standards impose transparency, prevent price discrimination, safeguard worker rights, and demand algorithm registration and security assessment. National standards such as the “Governance Principles for the New Generation Artificial Intelligence” (2019) and “Ethical Norms for the New Generation Artificial Intelligence” (2021) emphasize ethical AI development. China’s strategy values information management, transparency, and ethical consideration, influencing AI deployment both domestically and globally. United States of America The U.S. lacks comprehensive AI legislation and instead relies on sector-specific regulations governing privacy, discrimination, and safety. Several institutions—notably the Federal Trade Commission (FTC) and the National Institute of Standards and Technology (NIST)—have issued guidelines for AI governance. However, there is a continuing discussion over the need for more centralized AI governance to address the rapid advancements in ethical concerns related to AI technologies. European Union The European Union (EU) prioritizes ethical AI development and human rights protection. The General Data Protection Regulation (GDPR) significantly affects how AI systems manage data, requiring transparency and responsibility. In addition, the proposed AI Act seeks to better regulate AI systems by ensuring transparency, accountability, and safety, reaffirming the EU’s commitment to ethical AI practices. Canada Canada’s rules and legislation aim to promote AI ethics and transparency. The Canadian AI strategy promotes responsible AI research and development while highlighting ethical considerations. The Personal Information Protection and Electronic Documents Act (PIPEDA) oversees data privacy in AI applications, requiring that personal information be handled responsibly and transparently. Asia (Excluding China) In Asia, countries like Japan, South Korea, and Singapore prioritize innovation, research, and collaboration in their AI strategies. While regulations vary amongst these countries, ethical concerns are important to their AI policies. These nations try to strike a balance between innovation and ethical standards to support responsible AI development and deployment. Other Frameworks and Guidelines for Ethical AI Frameworks and guidelines for ethical AI provide safety and security for organizations and its users. Many governments have begun to impose ethical standards that must be followed to avoid potential issues. Global Initiatives and Standards in AI Ethics The Institute of Electrical and Electronics Engineers’ (IEEE) Global Initiative on Ethics of Autonomous and Intelligent Systems seeks to guarantee that all parties participating in the design and development of autonomous and intelligent systems address ethical considerations. Their purpose is to advance these technologies for the good of humanity using the following approaches: Ethically Aligned Design (EAD): This document outlines ideas for guiding ethical issues in AI and autonomous system design. IEEE P7000 Series Standards: These standards cover the interface of technology and ethics and promote innovation while taking into account the societal impact. Working with groups focus on specific issues such as openness, accountability, and bias reduction. Ethics Certification Program for Autonomous and Intelligent Systems (ECPAIS): ECPAI seeks to develop certification criteria that encourage openness, accountability, and justice in autonomous and intelligent systems. Corporate Responsibility in AI and Ethics The integration of responsible AI practices and corporate responsibility demonstrates how important ethical considerations are for effective AI implementation in business. Adopting a sustainable and ethical strategy is important, not only for moral reasons but also as a strategic imperative in today’s technologically driven society. As organizations deploy AI, upholding ethical norms will determine the future of technology and solidify their status as responsible, forward-thinking companies. This commitment helps them to capitalize on AI’s promise while positively benefiting society, ensuring technology’s role as a force for good. 7 Ways To Implement Ethical AI The ethical challenges surrounding AI are tremendously difficult and complex, and will not be solved overnight. However, organizations can take several practical steps toward implementing and improving their organization’s AI ethics: Developing Ethical AI Policies: Creating ethical AI policies entails developing guidelines so that AI systems are transparent, fair, accountable, and respectful of user privacy. Governments, industry leaders, and ethicists often work together to design these regulations to handle AI’s complex ethical challenges. Putting Ethical AI into Practice: Implementing ethical AI policies requires converting ethical ideas into actions within an organization, such as educating stakeholders, establishing standards, generating incentives, assembling ethics task teams, and conducting regular monitoring. These practices see that AI systems are successful and adhere to ethical standards while creating trust to protect their users’ rights. Raising Ethical AI Awareness: Most people have either no familiarity with these issues or are only familiar with them. A good first step is to start talking about ethical challenges and sharing articles that bring up important considerations. Setting Goals and KPIs for Improving AI Ethics: Many of these problems will never completely go away, but it is useful to have a standard that AI systems must meet. For example, organizations must decide to what degree AI systems must eliminate bias compared to humans before they are used to make important decisions, and they need clear policies and procedures to ensure AI tools meet those standards before entering production. Creating Incentives for Implementing Ethical AI: Employees need to be commended for bringing up ethical considerations rather than rushing AI into production without checking for bias, privacy, or transparency concerns. Similarly, they need to know that they will be held accountable for any unethical use of AI. Establishing an AI Ethics Task Force: The field of AI is progressing at a rapid pace. An organization needs to have a dedicated team that is keeping up with the changing landscape. This team needs to be cross-functional with representatives from data science, legal, management, and the functional areas where AI is in use. The team can help evaluate the use of AI and make recommendations on policies and procedures. Monitoring and Evaluating AI Systems: Continuous monitoring and evaluation of AI systems are important to promise that they meet ethical standards and perform as expected. This involves evaluating AI systems for bias, transparency, and compliance with established ethical AI guidelines and making any necessary changes based on these evaluations. Bottom Line: Understanding AI and Ethics AI promises significant improvements in productivity and efficiency, but this full potential can only be realized if organizations are committed to ethical principles. Without rigorous monitoring, AI can undermine trust and accountability. Companies need to develop and adhere to ethical frameworks and guidelines to ensure that ethical best practices are followed to protect customer data, privacy, and company reputations. Learn more about generative AI ethics to help you navigate the complexities of ethical AI implementation and use its full potential responsibly. The post AI and Ethics: Guide to Navigating AI’s Ethical Challenges appeared first on eWEEK.
https://www.eweek.com/artificial-intelligence/ai-ethics/
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