How to keep human bias out of AI | Kriti Sharma

TED
12 Apr 201912:11

Summary

TLDRIn a thought-provoking talk, the speaker highlights the pervasive influence of artificial intelligence (AI) on daily decisions, particularly how biases in algorithms can lead to discrimination based on gender, race, and background. While acknowledging the fears surrounding AI, she emphasizes the need for diverse teams in technology to create more equitable systems. The speaker advocates for awareness of biases and the importance of inclusive experiences in AI development, envisioning a future where AI can address pressing social issues, such as healthcare and domestic violence, ultimately urging everyone to participate in shaping a more just technological landscape.

Takeaways

  • 😀 AI influences many decisions about individuals, often based on biases related to gender and race.
  • 🤖 Algorithms can perpetuate discrimination, affecting job opportunities, insurance rates, and credit scores.
  • 👩‍💻 The design of AI, including voice assistants, often reflects traditional gender roles, with female voices being subordinate.
  • ⚖️ Human biases are reinforced in AI decision-making, leading to outcomes that may discriminate against women and minorities.
  • 👀 Personal experiences reveal that women in tech often face skepticism about their qualifications, highlighting industry biases.
  • 🤝 Diverse teams in AI development are crucial to counteract biases and create more equitable algorithms.
  • 🌍 AI holds potential for positive societal change, such as improving healthcare access and assisting vulnerable populations.
  • 💡 There is a need for a shift in how we perceive roles in technology, allowing people from all backgrounds to contribute to AI.
  • 📢 The responsibility lies with all individuals in tech to advocate for ethical AI practices and inclusivity.
  • 🚀 By embracing diversity in AI development, we can unlock the technology's potential for creating a more equal future.

Q & A

  • What is the primary concern regarding AI discussed in the transcript?

    -The primary concern is that AI systems often make biased decisions based on race, gender, and background, which can lead to discrimination in important areas like hiring, insurance, and criminal justice.

  • How does the speaker relate personal experiences to the broader issue of bias in AI?

    -The speaker shares her experiences of facing gender bias in the tech industry, highlighting how she had to conceal her identity to be taken seriously in online forums, illustrating the larger issue of elitism and bias in AI development.

  • What examples does the speaker provide to illustrate AI bias in decision-making?

    -The speaker cites examples such as algorithms that assume a black or Latino person is less likely to pay back a loan, and that a male named 'John' is a better programmer than a female named 'Mary'.

  • What does the speaker suggest as solutions to address bias in AI?

    -The speaker suggests three main solutions: increasing awareness of personal biases, ensuring diverse teams develop AI technologies, and providing diverse experiences for AI to learn from.

  • How does the speaker illustrate the impact of AI on societal views of gender roles?

    -She points out that when children search for 'CEO' they see mostly male images, but when they search for 'personal assistant', they see mostly female images, reinforcing traditional gender roles.

  • What is the significance of having diverse teams in AI development?

    -Diverse teams bring a variety of perspectives and experiences, which can help create more equitable AI systems and prevent the reinforcement of existing biases.

  • What positive applications of AI does the speaker highlight?

    -The speaker mentions potential uses of AI in improving healthcare access for pregnant women in rural areas and providing support for domestic violence victims in South Africa.

  • What does the speaker mean by 'elitism in AI'?

    -Elitism in AI refers to the notion that only certain individuals, often fitting a specific stereotype of a tech leader, are deemed capable or qualified to contribute to AI development, which excludes diverse voices.

  • How does the speaker feel about the future of AI?

    -The speaker expresses optimism about the future of AI, believing it can be a force for positive change if developed responsibly with diverse input and careful consideration of ethics.

  • What is the speaker's call to action at the end of the talk?

    -The speaker calls for individuals to advocate for inclusive AI technologies that represent a broad spectrum of society and to ensure that everyone has the opportunity to participate in AI development.

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Related Tags
AI BiasDiversityGender IssuesTechnology EthicsSocial ChangeInclusive DevelopmentWomen in TechAlgorithmic JusticeTech InnovationEmpowerment