SlideShare una empresa de Scribd logo
1 de 56
Technology for everyone
By Marion Mulder
#ToonTechTalks 27 September 2018
AI Bias and Ethics
Image source: https://www.silvergroup.asia/2012/10/10/new-tech-can-also-challenge-the-40-consumer/
Apparently I’m a sad angry
“world ethic” male…
Marion Mulder
we all want to
make great
products
But sometimes
along the line
things don’t quite
turn out right (yet)
Some examples of where it did not go quite right….
Sales of helmet in
Asia (of US brand)
were low…
Turns out the
average head size
in the database was
not diverse enough
Image source: Che-Wei Wang – mindful algorithms: the new role of the designer in generative design - TNW conference 2018
Some examples of where it did not go quite right….
Automatic translations are gender biased
Some examples of where it did not go quite right….
Google’s image
classifier wrongly
assigned black people
Some examples of where it did not go quite right….
Or they turn our
right (do they?),
but…
Source: Average faces of men and women around the world.
Average faces of the world
(really??)
Source: Virginia Dignum – UMEA University
Criminal face detection AI
Source: Juriaan van Diggelen - TNO
Source: https://ilga.org/maps-sexual-orientation-laws
People blindly trust a robot to lead them out of a building In case of a fire emergency.
[Overtrust of robots in emergency evacuation scenarios, P Robinette, W Li, R Allen, AM Howard, AR Wagner - Human-Robot Interaction, 2016]
Source: Juriaan van Diggelen - TNO
So things go ‘wrong’
because…
So things go ‘wrong’ because…?
• Human bias
• Size of data set
• Source of data
• Completeness
• How well is representative
• Intended use (was data set originally setup for what you are now trying to do with it)
• Is historical data accurate*
• labelling
• Ontology isn’t always binary
• Complexity reduced to binary
• Demographical, geographical, cultural differences on definition, law and
interpretation
• .....
Image Source: Valerie Frissen – Erasmus University /SIDN fonds at Fraiday event (presentation on slideshare)
Lets start with BIAS
Dealing with human BIAS
• Bias: expectations derived from experience
regularities in the world. Knowing what
programmer means, including that most are
male.
• Stereotypes: biases based on regularities we
do not wish to persist. Knowing that (most)
programmes are male.
• Prejudice: action on stereotypes. Hiring only
male programmers.
Source: Joanna Bryson at AI Summit - Caliskan, Bryson &Narayanan 2017
Ada Lovelace
Source: beperktzicht.nl
Source: beperktzicht.nl
Source: google search result for start-up founder
✅ Be aware of confirmation bias
tendency to search for,
interpret, favor, and recall
information in a way that
confirms one's pre-existing
beliefs or hypotheses.
Source: Virginia Dignum – UMEA University
Source: Virginia Dignum – UMEA University
✅ realise: things won’t always binary or clear
Laws, regulation,
Self regulations
✅ Laws, regulation, self regulation
• Values
• Code of conduct
• GDPR
• IEEE Ethically Aligned Design
• UN Human Rights Declaration
• Global sustainability goals
• Product liability laws
• AI on EU level initiatives
• Ethical Guidelines
• Responsible AI frameworks
IEEE Ethically Aligned Design
A Vision for Prioritizing Human Well-being with Autonomous and
Intelligent Systems
• IEEE P7000™ - Model Process for Addressing Ethical Concerns During System
Design
• IEEE P7001™ - Transparency of Autonomous Systems
• IEEE P7002™ - Data Privacy Process
• IEEE P7003™ - Algorithmic Bias Considerations
• IEEE P7004™ - Standard on Child and Student Data Governance
• IEEE P7005™ - Standard for Transparent Employer Data Governance
• IEEE P7006™ - Standard for Personal Data Artificial Intelligence (AI) Agent
• IEEE P7007™ - Ontological Standard for Ethically Driven Robotics and
Automation Systems
• IEEE P7008™ - Standard for Ethically Driven Nudging for Robotic,
Intelligent, and Automation Systems
• IEEE P7009™ - Standard for Fail-Safe Design of Autonomous and Semi-
Autonomous Systems
• IEEE P7010™ - Wellbeing Metrics Standard for Ethical Artificial Intelligence
and Autonomous Systems
• IEEE P7011 - Standard for the Process of Identifying and Rating the
Trustworthiness of News Sources
• IEEE P7012 - Standard for Machine Readable Personal Privacy Terms
• IEEE P7013 - Inclusion and Application Standards for Automated Facial
Analysis Technology
See https://ethicsinaction.ieee.org/
Human rights
✅ product liability laws
• AI is a product,
product liability laws apply
Source: Virginia Dignum – UMEA University
Source: Virginia Dignum – UMEA University
Source: Rumman Chowdhury - Accenture
Source: Rumman Chowdhury - Accenture
Some other initiatives
worth following
Source: Virginia Dignum – UMEA University
Google
Introducing the
Inclusive
Images
Competition
Thursday, September
6, 2018
Posted by Tulsee
Doshi, Product
Manager, Google AI
https://futureproof.community/circle/tech-for-good/challenges/denk-mee-over-humaan-datagebruik-met-behulp-
van-equality-matters
Design, human in the
loop
✅ Design Human in the Loop
systems
• Consult non-technical experts and
resources
• Involve diverse groups in your design,
data gathering, testing
• Transparency (explainable) of your
decision making and algorithms
• Analyze –synthetize –evaluate -repeat
✅ Key questions when developing or deploying an algorithmic system
• Who will be affected?
• What are the decisions/optimisation criteria?
• How are these criteria justified?
• Are these justifications acceptable in the context where the system is
used?
• How are we training our algorithm?
• Does training data resemble the context of use?
IEEE P7003 Algorithmic Bias Considerations by Ansgar Koene
IEEE standard Algorithmic bias https://standards.ieee.org/project/7003.html
✅ Be explicit & transparent
• Question your options and choices
• Motivate your choices
• Document your choices and options
Source: Virginia Dignum – UMEA University
Lets be critical about
our data
✅ Lets check some data!
In summary
We are all biased, so lets be aware lost of laws, regulations and other
sources for guidance
And lets be critical about the data
we use
Lets design, test and implement with
humans in the loop
AI summit 11 oct
full morning about AI ethics topics
Wilder will go into data and code site
next
#Aiethics #databias #responsibleAI #responsibleData
Sources
Reference Resources
• Joanna Bryson
• Virginia Dignum
• Rumman Chowdhury
• Catelijne Muller - EU High Level Expert Group on AI
• IEEE.org
• Ada-AI
• WCAG Accessibility guidelines (https://www.w3.org/TR/WCAG/)
• Incorporating Ethical Considerations in Autonomous & Intelligent Systems
• #Aiethics #databias #responsibleAI #responsibleData
• See my twitter list https://twitter.com/muldimedia/lists/ai-ethics/members
• Of check my pinterest boards https://nl.pinterest.com/muldimedia/artificial-intelligence/ or
https://nl.pinterest.com/muldimedia/artificial-intelligence/ai-ethics-responsible-ai-bias-and-privacy/
• https://futurism-com.cdn.ampproject.org/c/s/futurism.com/artificial-intelligence-benefits-select-few/amp/
• http://leginfo.legislature.ca.gov/faces/billTextClient.xhtml?bill_id=201720180ACR215
• https://ec.europa.eu/jrc/communities/community/humaint/event/humaint-winter-school-ai-ethical-social-legal-and-economic-impact
• https://theintercept.com/2018/09/06/nypd-surveillance-camera-skin-tone-search/

Más contenido relacionado

La actualidad más candente

Bias in Artificial Intelligence
Bias in Artificial IntelligenceBias in Artificial Intelligence
Bias in Artificial IntelligenceNeelima Kumar
 
The Ethics of Artificial Intelligence
The Ethics of Artificial IntelligenceThe Ethics of Artificial Intelligence
The Ethics of Artificial IntelligenceKarl Seiler
 
Ethical issues facing Artificial Intelligence
Ethical issues facing Artificial IntelligenceEthical issues facing Artificial Intelligence
Ethical issues facing Artificial IntelligenceRah Abdelhak
 
How do we train AI to be Ethical and Unbiased?
How do we train AI to be Ethical and Unbiased?How do we train AI to be Ethical and Unbiased?
How do we train AI to be Ethical and Unbiased?Mark Borg
 
Responsible AI in Industry (ICML 2021 Tutorial)
Responsible AI in Industry (ICML 2021 Tutorial)Responsible AI in Industry (ICML 2021 Tutorial)
Responsible AI in Industry (ICML 2021 Tutorial)Krishnaram Kenthapadi
 
Responsible AI in Industry (Tutorials at AAAI 2021, FAccT 2021, and WWW 2021)
Responsible AI in Industry (Tutorials at AAAI 2021, FAccT 2021, and WWW 2021)Responsible AI in Industry (Tutorials at AAAI 2021, FAccT 2021, and WWW 2021)
Responsible AI in Industry (Tutorials at AAAI 2021, FAccT 2021, and WWW 2021)Krishnaram Kenthapadi
 
Algorithmic Bias: Challenges and Opportunities for AI in Healthcare
Algorithmic Bias:  Challenges and Opportunities for AI in HealthcareAlgorithmic Bias:  Challenges and Opportunities for AI in Healthcare
Algorithmic Bias: Challenges and Opportunities for AI in HealthcareGregory Nelson
 
Fairness in Machine Learning and AI
Fairness in Machine Learning and AIFairness in Machine Learning and AI
Fairness in Machine Learning and AISeth Grimes
 
KSIT Tech Form - Introduction to artificial intelligence (AI)
KSIT Tech Form - Introduction to artificial intelligence (AI)KSIT Tech Form - Introduction to artificial intelligence (AI)
KSIT Tech Form - Introduction to artificial intelligence (AI)Santosh Kumar
 
Fairness and Privacy in AI/ML Systems
Fairness and Privacy in AI/ML SystemsFairness and Privacy in AI/ML Systems
Fairness and Privacy in AI/ML SystemsKrishnaram Kenthapadi
 
Fairness in AI (DDSW 2019)
Fairness in AI (DDSW 2019)Fairness in AI (DDSW 2019)
Fairness in AI (DDSW 2019)GoDataDriven
 
Algorithmic Bias : What is it? Why should we care? What can we do about it?
Algorithmic Bias : What is it? Why should we care? What can we do about it?Algorithmic Bias : What is it? Why should we care? What can we do about it?
Algorithmic Bias : What is it? Why should we care? What can we do about it?University of Minnesota, Duluth
 
Artificial intelligence (AI) - Definition, Classification, Development, & Con...
Artificial intelligence (AI) - Definition, Classification, Development, & Con...Artificial intelligence (AI) - Definition, Classification, Development, & Con...
Artificial intelligence (AI) - Definition, Classification, Development, & Con...Andreas Kaplan
 
The 7 Biggest Ethical Challenges of Artificial Intelligence
The 7 Biggest Ethical Challenges of Artificial IntelligenceThe 7 Biggest Ethical Challenges of Artificial Intelligence
The 7 Biggest Ethical Challenges of Artificial IntelligenceBernard Marr
 
Bias in AI-systems: A multi-step approach
Bias in AI-systems: A multi-step approachBias in AI-systems: A multi-step approach
Bias in AI-systems: A multi-step approachEirini Ntoutsi
 

La actualidad más candente (20)

Bias in Artificial Intelligence
Bias in Artificial IntelligenceBias in Artificial Intelligence
Bias in Artificial Intelligence
 
The Ethics of Artificial Intelligence
The Ethics of Artificial IntelligenceThe Ethics of Artificial Intelligence
The Ethics of Artificial Intelligence
 
Bias in AI
Bias in AIBias in AI
Bias in AI
 
Ethical issues facing Artificial Intelligence
Ethical issues facing Artificial IntelligenceEthical issues facing Artificial Intelligence
Ethical issues facing Artificial Intelligence
 
Introduction to AI Ethics
Introduction to AI EthicsIntroduction to AI Ethics
Introduction to AI Ethics
 
How do we train AI to be Ethical and Unbiased?
How do we train AI to be Ethical and Unbiased?How do we train AI to be Ethical and Unbiased?
How do we train AI to be Ethical and Unbiased?
 
Responsible AI in Industry (ICML 2021 Tutorial)
Responsible AI in Industry (ICML 2021 Tutorial)Responsible AI in Industry (ICML 2021 Tutorial)
Responsible AI in Industry (ICML 2021 Tutorial)
 
Responsible AI
Responsible AIResponsible AI
Responsible AI
 
Responsible AI in Industry (Tutorials at AAAI 2021, FAccT 2021, and WWW 2021)
Responsible AI in Industry (Tutorials at AAAI 2021, FAccT 2021, and WWW 2021)Responsible AI in Industry (Tutorials at AAAI 2021, FAccT 2021, and WWW 2021)
Responsible AI in Industry (Tutorials at AAAI 2021, FAccT 2021, and WWW 2021)
 
Artificial Intelligence and Bias
Artificial Intelligence and BiasArtificial Intelligence and Bias
Artificial Intelligence and Bias
 
Algorithmic Bias: Challenges and Opportunities for AI in Healthcare
Algorithmic Bias:  Challenges and Opportunities for AI in HealthcareAlgorithmic Bias:  Challenges and Opportunities for AI in Healthcare
Algorithmic Bias: Challenges and Opportunities for AI in Healthcare
 
Fairness in Machine Learning and AI
Fairness in Machine Learning and AIFairness in Machine Learning and AI
Fairness in Machine Learning and AI
 
KSIT Tech Form - Introduction to artificial intelligence (AI)
KSIT Tech Form - Introduction to artificial intelligence (AI)KSIT Tech Form - Introduction to artificial intelligence (AI)
KSIT Tech Form - Introduction to artificial intelligence (AI)
 
Fairness and Privacy in AI/ML Systems
Fairness and Privacy in AI/ML SystemsFairness and Privacy in AI/ML Systems
Fairness and Privacy in AI/ML Systems
 
Fairness in AI (DDSW 2019)
Fairness in AI (DDSW 2019)Fairness in AI (DDSW 2019)
Fairness in AI (DDSW 2019)
 
Algorithmic Bias : What is it? Why should we care? What can we do about it?
Algorithmic Bias : What is it? Why should we care? What can we do about it?Algorithmic Bias : What is it? Why should we care? What can we do about it?
Algorithmic Bias : What is it? Why should we care? What can we do about it?
 
Artificial intelligence (AI) - Definition, Classification, Development, & Con...
Artificial intelligence (AI) - Definition, Classification, Development, & Con...Artificial intelligence (AI) - Definition, Classification, Development, & Con...
Artificial intelligence (AI) - Definition, Classification, Development, & Con...
 
The 7 Biggest Ethical Challenges of Artificial Intelligence
The 7 Biggest Ethical Challenges of Artificial IntelligenceThe 7 Biggest Ethical Challenges of Artificial Intelligence
The 7 Biggest Ethical Challenges of Artificial Intelligence
 
Bias in AI-systems: A multi-step approach
Bias in AI-systems: A multi-step approachBias in AI-systems: A multi-step approach
Bias in AI-systems: A multi-step approach
 
Ethics of AI
Ethics of AIEthics of AI
Ethics of AI
 

Similar a Technology for everyone - AI ethics and Bias

Virginia Dignum – Responsible artificial intelligence
Virginia Dignum – Responsible artificial intelligenceVirginia Dignum – Responsible artificial intelligence
Virginia Dignum – Responsible artificial intelligenceNEXTConference
 
Ethics for Conversational AI
Ethics for Conversational AIEthics for Conversational AI
Ethics for Conversational AIVerena Rieser
 
Responsible AI in Industry: Practical Challenges and Lessons Learned
Responsible AI in Industry: Practical Challenges and Lessons LearnedResponsible AI in Industry: Practical Challenges and Lessons Learned
Responsible AI in Industry: Practical Challenges and Lessons LearnedKrishnaram Kenthapadi
 
AI Governance – The Responsible Use of AI
AI Governance – The Responsible Use of AIAI Governance – The Responsible Use of AI
AI Governance – The Responsible Use of AINUS-ISS
 
“Responsible AI: Tools and Frameworks for Developing AI Solutions,” a Present...
“Responsible AI: Tools and Frameworks for Developing AI Solutions,” a Present...“Responsible AI: Tools and Frameworks for Developing AI Solutions,” a Present...
“Responsible AI: Tools and Frameworks for Developing AI Solutions,” a Present...Edge AI and Vision Alliance
 
Data science and ethics in fundraising
Data science and ethics in fundraisingData science and ethics in fundraising
Data science and ethics in fundraisingJames Orton
 
CIS 2015 The Ethics of Personal Data - Robin Wilton
CIS 2015 The Ethics of Personal Data - Robin WiltonCIS 2015 The Ethics of Personal Data - Robin Wilton
CIS 2015 The Ethics of Personal Data - Robin WiltonCloudIDSummit
 
How to Enhance Your Career with AI
How to Enhance Your Career with AIHow to Enhance Your Career with AI
How to Enhance Your Career with AIKeita Broadwater
 
Creating A Diverse CyberSecurity Program
Creating A Diverse CyberSecurity ProgramCreating A Diverse CyberSecurity Program
Creating A Diverse CyberSecurity ProgramTyrone Grandison
 
IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018
IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018
IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018Carol Smith
 
IEEE P7003 at ICSE Fairware 2018
IEEE P7003 at ICSE Fairware 2018IEEE P7003 at ICSE Fairware 2018
IEEE P7003 at ICSE Fairware 2018Ansgar Koene
 
UX in the Age of AI: Leading with Design
UX in the Age of AI: Leading with DesignUX in the Age of AI: Leading with Design
UX in the Age of AI: Leading with DesignUXPA International
 
UX in the Age of AI: Leading with Design UXPA2018
UX in the Age of AI: Leading with Design UXPA2018UX in the Age of AI: Leading with Design UXPA2018
UX in the Age of AI: Leading with Design UXPA2018Carol Smith
 
ERN-Data-Ethics.pptx
ERN-Data-Ethics.pptxERN-Data-Ethics.pptx
ERN-Data-Ethics.pptxChirsMitty
 
Hacking hired [Forecasting 2021] Jan 2021
Hacking hired [Forecasting 2021] Jan 2021Hacking hired [Forecasting 2021] Jan 2021
Hacking hired [Forecasting 2021] Jan 2021Rachel Harpley
 
Generative AI - Responsible Path Forward.pdf
Generative AI - Responsible Path Forward.pdfGenerative AI - Responsible Path Forward.pdf
Generative AI - Responsible Path Forward.pdfSaeed Al Dhaheri
 
Ai demystified for HR and TA leaders
Ai demystified for HR and TA leadersAi demystified for HR and TA leaders
Ai demystified for HR and TA leadersAntonia Macrides
 
The State of AI in Insights and Research 2024: Results and Findings
The State of AI in Insights and Research 2024: Results and FindingsThe State of AI in Insights and Research 2024: Results and Findings
The State of AI in Insights and Research 2024: Results and FindingsRay Poynter
 

Similar a Technology for everyone - AI ethics and Bias (20)

Virginia Dignum – Responsible artificial intelligence
Virginia Dignum – Responsible artificial intelligenceVirginia Dignum – Responsible artificial intelligence
Virginia Dignum – Responsible artificial intelligence
 
Ethics for Conversational AI
Ethics for Conversational AIEthics for Conversational AI
Ethics for Conversational AI
 
Responsible AI in Industry: Practical Challenges and Lessons Learned
Responsible AI in Industry: Practical Challenges and Lessons LearnedResponsible AI in Industry: Practical Challenges and Lessons Learned
Responsible AI in Industry: Practical Challenges and Lessons Learned
 
RAPIDE
RAPIDERAPIDE
RAPIDE
 
The Ethics of AI
The Ethics of AIThe Ethics of AI
The Ethics of AI
 
AI Governance – The Responsible Use of AI
AI Governance – The Responsible Use of AIAI Governance – The Responsible Use of AI
AI Governance – The Responsible Use of AI
 
“Responsible AI: Tools and Frameworks for Developing AI Solutions,” a Present...
“Responsible AI: Tools and Frameworks for Developing AI Solutions,” a Present...“Responsible AI: Tools and Frameworks for Developing AI Solutions,” a Present...
“Responsible AI: Tools and Frameworks for Developing AI Solutions,” a Present...
 
Data science and ethics in fundraising
Data science and ethics in fundraisingData science and ethics in fundraising
Data science and ethics in fundraising
 
CIS 2015 The Ethics of Personal Data - Robin Wilton
CIS 2015 The Ethics of Personal Data - Robin WiltonCIS 2015 The Ethics of Personal Data - Robin Wilton
CIS 2015 The Ethics of Personal Data - Robin Wilton
 
How to Enhance Your Career with AI
How to Enhance Your Career with AIHow to Enhance Your Career with AI
How to Enhance Your Career with AI
 
Creating A Diverse CyberSecurity Program
Creating A Diverse CyberSecurity ProgramCreating A Diverse CyberSecurity Program
Creating A Diverse CyberSecurity Program
 
IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018
IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018
IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018
 
IEEE P7003 at ICSE Fairware 2018
IEEE P7003 at ICSE Fairware 2018IEEE P7003 at ICSE Fairware 2018
IEEE P7003 at ICSE Fairware 2018
 
UX in the Age of AI: Leading with Design
UX in the Age of AI: Leading with DesignUX in the Age of AI: Leading with Design
UX in the Age of AI: Leading with Design
 
UX in the Age of AI: Leading with Design UXPA2018
UX in the Age of AI: Leading with Design UXPA2018UX in the Age of AI: Leading with Design UXPA2018
UX in the Age of AI: Leading with Design UXPA2018
 
ERN-Data-Ethics.pptx
ERN-Data-Ethics.pptxERN-Data-Ethics.pptx
ERN-Data-Ethics.pptx
 
Hacking hired [Forecasting 2021] Jan 2021
Hacking hired [Forecasting 2021] Jan 2021Hacking hired [Forecasting 2021] Jan 2021
Hacking hired [Forecasting 2021] Jan 2021
 
Generative AI - Responsible Path Forward.pdf
Generative AI - Responsible Path Forward.pdfGenerative AI - Responsible Path Forward.pdf
Generative AI - Responsible Path Forward.pdf
 
Ai demystified for HR and TA leaders
Ai demystified for HR and TA leadersAi demystified for HR and TA leaders
Ai demystified for HR and TA leaders
 
The State of AI in Insights and Research 2024: Results and Findings
The State of AI in Insights and Research 2024: Results and FindingsThe State of AI in Insights and Research 2024: Results and Findings
The State of AI in Insights and Research 2024: Results and Findings
 

Más de Marion Mulder

Gender free tech momentum to mitigate biases in ai
Gender free tech   momentum to mitigate biases in aiGender free tech   momentum to mitigate biases in ai
Gender free tech momentum to mitigate biases in aiMarion Mulder
 
Inclusive tech, (how) is that possible?
Inclusive tech, (how) is that possible?Inclusive tech, (how) is that possible?
Inclusive tech, (how) is that possible?Marion Mulder
 
A feminist view on chatbots, voice assistants & AI
A feminist view on chatbots, voice assistants & AIA feminist view on chatbots, voice assistants & AI
A feminist view on chatbots, voice assistants & AIMarion Mulder
 
The (non)sense of gender-free in conversational AI - Women in voice Netherlan...
The (non)sense of gender-free in conversational AI - Women in voice Netherlan...The (non)sense of gender-free in conversational AI - Women in voice Netherlan...
The (non)sense of gender-free in conversational AI - Women in voice Netherlan...Marion Mulder
 
About Workplace Pride - Tech at Workplace Pride Event Eindhoven
About Workplace Pride - Tech at Workplace Pride Event EindhovenAbout Workplace Pride - Tech at Workplace Pride Event Eindhoven
About Workplace Pride - Tech at Workplace Pride Event EindhovenMarion Mulder
 
Conversation UIs & Chatbots an introduction
Conversation UIs & Chatbots an introductionConversation UIs & Chatbots an introduction
Conversation UIs & Chatbots an introductionMarion Mulder
 
Chatbots and Conversational UIs for your workplace
Chatbots and Conversational UIs for your workplaceChatbots and Conversational UIs for your workplace
Chatbots and Conversational UIs for your workplaceMarion Mulder
 
Conversational UIs for internal comms
Conversational UIs for internal commsConversational UIs for internal comms
Conversational UIs for internal commsMarion Mulder
 
Workplace Pride conference 2014 - Using Social Media for your LGBT Network
Workplace Pride conference 2014 - Using Social Media for your LGBT NetworkWorkplace Pride conference 2014 - Using Social Media for your LGBT Network
Workplace Pride conference 2014 - Using Social Media for your LGBT NetworkMarion Mulder
 
Cnn social media_for_your_div_network
Cnn social media_for_your_div_networkCnn social media_for_your_div_network
Cnn social media_for_your_div_networkMarion Mulder
 
HNW 3.0 - Leergang Duurzame Arbeid
HNW 3.0 - Leergang Duurzame ArbeidHNW 3.0 - Leergang Duurzame Arbeid
HNW 3.0 - Leergang Duurzame ArbeidMarion Mulder
 
Social Media Workshop CPP Conference
Social Media Workshop CPP ConferenceSocial Media Workshop CPP Conference
Social Media Workshop CPP ConferenceMarion Mulder
 
The Value of LGBT Networks within Organisations
The Value of LGBT Networks within OrganisationsThe Value of LGBT Networks within Organisations
The Value of LGBT Networks within OrganisationsMarion Mulder
 

Más de Marion Mulder (13)

Gender free tech momentum to mitigate biases in ai
Gender free tech   momentum to mitigate biases in aiGender free tech   momentum to mitigate biases in ai
Gender free tech momentum to mitigate biases in ai
 
Inclusive tech, (how) is that possible?
Inclusive tech, (how) is that possible?Inclusive tech, (how) is that possible?
Inclusive tech, (how) is that possible?
 
A feminist view on chatbots, voice assistants & AI
A feminist view on chatbots, voice assistants & AIA feminist view on chatbots, voice assistants & AI
A feminist view on chatbots, voice assistants & AI
 
The (non)sense of gender-free in conversational AI - Women in voice Netherlan...
The (non)sense of gender-free in conversational AI - Women in voice Netherlan...The (non)sense of gender-free in conversational AI - Women in voice Netherlan...
The (non)sense of gender-free in conversational AI - Women in voice Netherlan...
 
About Workplace Pride - Tech at Workplace Pride Event Eindhoven
About Workplace Pride - Tech at Workplace Pride Event EindhovenAbout Workplace Pride - Tech at Workplace Pride Event Eindhoven
About Workplace Pride - Tech at Workplace Pride Event Eindhoven
 
Conversation UIs & Chatbots an introduction
Conversation UIs & Chatbots an introductionConversation UIs & Chatbots an introduction
Conversation UIs & Chatbots an introduction
 
Chatbots and Conversational UIs for your workplace
Chatbots and Conversational UIs for your workplaceChatbots and Conversational UIs for your workplace
Chatbots and Conversational UIs for your workplace
 
Conversational UIs for internal comms
Conversational UIs for internal commsConversational UIs for internal comms
Conversational UIs for internal comms
 
Workplace Pride conference 2014 - Using Social Media for your LGBT Network
Workplace Pride conference 2014 - Using Social Media for your LGBT NetworkWorkplace Pride conference 2014 - Using Social Media for your LGBT Network
Workplace Pride conference 2014 - Using Social Media for your LGBT Network
 
Cnn social media_for_your_div_network
Cnn social media_for_your_div_networkCnn social media_for_your_div_network
Cnn social media_for_your_div_network
 
HNW 3.0 - Leergang Duurzame Arbeid
HNW 3.0 - Leergang Duurzame ArbeidHNW 3.0 - Leergang Duurzame Arbeid
HNW 3.0 - Leergang Duurzame Arbeid
 
Social Media Workshop CPP Conference
Social Media Workshop CPP ConferenceSocial Media Workshop CPP Conference
Social Media Workshop CPP Conference
 
The Value of LGBT Networks within Organisations
The Value of LGBT Networks within OrganisationsThe Value of LGBT Networks within Organisations
The Value of LGBT Networks within Organisations
 

Último

Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clashcharlottematthew16
 
Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!Manik S Magar
 
Vertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering TipsVertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering TipsMiki Katsuragi
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsRizwan Syed
 
Streamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupStreamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupFlorian Wilhelm
 
DSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine TuningDSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine TuningLars Bell
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsMark Billinghurst
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...Fwdays
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsSergiu Bodiu
 
Advanced Computer Architecture – An Introduction
Advanced Computer Architecture – An IntroductionAdvanced Computer Architecture – An Introduction
Advanced Computer Architecture – An IntroductionDilum Bandara
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubKalema Edgar
 
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024BookNet Canada
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebUiPathCommunity
 
From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .Alan Dix
 
Take control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteTake control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteDianaGray10
 
TrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data PrivacyTrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data PrivacyTrustArc
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationSlibray Presentation
 
CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):comworks
 
What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024Stephanie Beckett
 

Último (20)

Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clash
 
Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!
 
Vertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering TipsVertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering Tips
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL Certs
 
Streamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupStreamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project Setup
 
DSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine TuningDSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine Tuning
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR Systems
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platforms
 
Advanced Computer Architecture – An Introduction
Advanced Computer Architecture – An IntroductionAdvanced Computer Architecture – An Introduction
Advanced Computer Architecture – An Introduction
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding Club
 
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio Web
 
From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .
 
Take control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteTake control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test Suite
 
DMCC Future of Trade Web3 - Special Edition
DMCC Future of Trade Web3 - Special EditionDMCC Future of Trade Web3 - Special Edition
DMCC Future of Trade Web3 - Special Edition
 
TrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data PrivacyTrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data Privacy
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck Presentation
 
CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):
 
What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024
 

Technology for everyone - AI ethics and Bias

  • 1. Technology for everyone By Marion Mulder #ToonTechTalks 27 September 2018 AI Bias and Ethics Image source: https://www.silvergroup.asia/2012/10/10/new-tech-can-also-challenge-the-40-consumer/
  • 2. Apparently I’m a sad angry “world ethic” male… Marion Mulder
  • 3. we all want to make great products
  • 4. But sometimes along the line things don’t quite turn out right (yet)
  • 5. Some examples of where it did not go quite right…. Sales of helmet in Asia (of US brand) were low… Turns out the average head size in the database was not diverse enough Image source: Che-Wei Wang – mindful algorithms: the new role of the designer in generative design - TNW conference 2018
  • 6. Some examples of where it did not go quite right…. Automatic translations are gender biased
  • 7. Some examples of where it did not go quite right…. Google’s image classifier wrongly assigned black people
  • 8. Some examples of where it did not go quite right….
  • 9. Or they turn our right (do they?), but…
  • 10. Source: Average faces of men and women around the world. Average faces of the world (really??)
  • 11.
  • 12.
  • 13.
  • 14. Source: Virginia Dignum – UMEA University
  • 15. Criminal face detection AI Source: Juriaan van Diggelen - TNO
  • 16.
  • 18.
  • 19.
  • 20. People blindly trust a robot to lead them out of a building In case of a fire emergency. [Overtrust of robots in emergency evacuation scenarios, P Robinette, W Li, R Allen, AM Howard, AR Wagner - Human-Robot Interaction, 2016] Source: Juriaan van Diggelen - TNO
  • 21. So things go ‘wrong’ because…
  • 22. So things go ‘wrong’ because…? • Human bias • Size of data set • Source of data • Completeness • How well is representative • Intended use (was data set originally setup for what you are now trying to do with it) • Is historical data accurate* • labelling • Ontology isn’t always binary • Complexity reduced to binary • Demographical, geographical, cultural differences on definition, law and interpretation • .....
  • 23. Image Source: Valerie Frissen – Erasmus University /SIDN fonds at Fraiday event (presentation on slideshare)
  • 25. Dealing with human BIAS • Bias: expectations derived from experience regularities in the world. Knowing what programmer means, including that most are male. • Stereotypes: biases based on regularities we do not wish to persist. Knowing that (most) programmes are male. • Prejudice: action on stereotypes. Hiring only male programmers. Source: Joanna Bryson at AI Summit - Caliskan, Bryson &Narayanan 2017 Ada Lovelace
  • 28. Source: google search result for start-up founder
  • 29. ✅ Be aware of confirmation bias tendency to search for, interpret, favor, and recall information in a way that confirms one's pre-existing beliefs or hypotheses. Source: Virginia Dignum – UMEA University
  • 30. Source: Virginia Dignum – UMEA University ✅ realise: things won’t always binary or clear
  • 32. ✅ Laws, regulation, self regulation • Values • Code of conduct • GDPR • IEEE Ethically Aligned Design • UN Human Rights Declaration • Global sustainability goals • Product liability laws • AI on EU level initiatives • Ethical Guidelines • Responsible AI frameworks
  • 33. IEEE Ethically Aligned Design A Vision for Prioritizing Human Well-being with Autonomous and Intelligent Systems • IEEE P7000™ - Model Process for Addressing Ethical Concerns During System Design • IEEE P7001™ - Transparency of Autonomous Systems • IEEE P7002™ - Data Privacy Process • IEEE P7003™ - Algorithmic Bias Considerations • IEEE P7004™ - Standard on Child and Student Data Governance • IEEE P7005™ - Standard for Transparent Employer Data Governance • IEEE P7006™ - Standard for Personal Data Artificial Intelligence (AI) Agent • IEEE P7007™ - Ontological Standard for Ethically Driven Robotics and Automation Systems • IEEE P7008™ - Standard for Ethically Driven Nudging for Robotic, Intelligent, and Automation Systems • IEEE P7009™ - Standard for Fail-Safe Design of Autonomous and Semi- Autonomous Systems • IEEE P7010™ - Wellbeing Metrics Standard for Ethical Artificial Intelligence and Autonomous Systems • IEEE P7011 - Standard for the Process of Identifying and Rating the Trustworthiness of News Sources • IEEE P7012 - Standard for Machine Readable Personal Privacy Terms • IEEE P7013 - Inclusion and Application Standards for Automated Facial Analysis Technology See https://ethicsinaction.ieee.org/
  • 35.
  • 36. ✅ product liability laws • AI is a product, product liability laws apply
  • 37. Source: Virginia Dignum – UMEA University
  • 38. Source: Virginia Dignum – UMEA University
  • 41.
  • 43. Source: Virginia Dignum – UMEA University
  • 44. Google Introducing the Inclusive Images Competition Thursday, September 6, 2018 Posted by Tulsee Doshi, Product Manager, Google AI
  • 46.
  • 47. Design, human in the loop
  • 48. ✅ Design Human in the Loop systems • Consult non-technical experts and resources • Involve diverse groups in your design, data gathering, testing • Transparency (explainable) of your decision making and algorithms • Analyze –synthetize –evaluate -repeat
  • 49. ✅ Key questions when developing or deploying an algorithmic system • Who will be affected? • What are the decisions/optimisation criteria? • How are these criteria justified? • Are these justifications acceptable in the context where the system is used? • How are we training our algorithm? • Does training data resemble the context of use? IEEE P7003 Algorithmic Bias Considerations by Ansgar Koene IEEE standard Algorithmic bias https://standards.ieee.org/project/7003.html
  • 50. ✅ Be explicit & transparent • Question your options and choices • Motivate your choices • Document your choices and options Source: Virginia Dignum – UMEA University
  • 51. Lets be critical about our data
  • 52. ✅ Lets check some data!
  • 53. In summary We are all biased, so lets be aware lost of laws, regulations and other sources for guidance And lets be critical about the data we use Lets design, test and implement with humans in the loop
  • 54. AI summit 11 oct full morning about AI ethics topics Wilder will go into data and code site next #Aiethics #databias #responsibleAI #responsibleData
  • 56. Reference Resources • Joanna Bryson • Virginia Dignum • Rumman Chowdhury • Catelijne Muller - EU High Level Expert Group on AI • IEEE.org • Ada-AI • WCAG Accessibility guidelines (https://www.w3.org/TR/WCAG/) • Incorporating Ethical Considerations in Autonomous & Intelligent Systems • #Aiethics #databias #responsibleAI #responsibleData • See my twitter list https://twitter.com/muldimedia/lists/ai-ethics/members • Of check my pinterest boards https://nl.pinterest.com/muldimedia/artificial-intelligence/ or https://nl.pinterest.com/muldimedia/artificial-intelligence/ai-ethics-responsible-ai-bias-and-privacy/ • https://futurism-com.cdn.ampproject.org/c/s/futurism.com/artificial-intelligence-benefits-select-few/amp/ • http://leginfo.legislature.ca.gov/faces/billTextClient.xhtml?bill_id=201720180ACR215 • https://ec.europa.eu/jrc/communities/community/humaint/event/humaint-winter-school-ai-ethical-social-legal-and-economic-impact • https://theintercept.com/2018/09/06/nypd-surveillance-camera-skin-tone-search/

Notas del editor

  1. In my day job I steer between needs and wants (business, users) and those who make it (happen) For over 10 years co-founder and board member of WPP - a foundation dedicated to improving the lives of LGBTI people in workplaces all over the world. 
  2. Racial profiling? Predictive Policing?
  3. AI programs can distinguish criminal from non-criminal faces with nearly 90% accuracy. [Wu and Zhang, “Automated Inference on Criminality using Face Images”, arXiv] http://callingbullshit.org/case_studies/case_study_criminal_machine_learning.html 1800 photos: 1100 of these were photos of non-criminals scraped from a variety on sources on the World Wide Web using a web spider. (e.g. Linkedin) 700 of the photos were pictures of criminals, provided by police departments. Bias in Clothing (did we build a tie classifier?) Facial expression Micro Macro Convicted criminals (i.e. the judge’s bias is copied)
  4. Source: Valerie Frissen – Erasmus University /SIDN fonds
  5. Ada Lovelace Ze wordt nu gezien als de ontwerpster van het eerste computerprogramma, omdat ze "programma's" schreef om symbolen volgens vaste regels te manipuleren met een machine die Babbage op dat moment nog moest maken.
  6. Advancing technology for humanity – or just get rich?
  7. https://goo.gl/ca9YQV