Artwork

Treść dostarczona przez Stanford GSB. Cała zawartość podcastów, w tym odcinki, grafika i opisy podcastów, jest przesyłana i udostępniana bezpośrednio przez Stanford GSB lub jego partnera na platformie podcastów. Jeśli uważasz, że ktoś wykorzystuje Twoje dzieło chronione prawem autorskim bez Twojej zgody, możesz postępować zgodnie z procedurą opisaną tutaj https://pl.player.fm/legal.
Player FM - aplikacja do podcastów
Przejdź do trybu offline z Player FM !

Invisible Matchmakers: How Algorithms Pair People with Opportunities, with Daniela Saban

23:32
 
Udostępnij
 

Manage episode 423120408 series 3550256
Treść dostarczona przez Stanford GSB. Cała zawartość podcastów, w tym odcinki, grafika i opisy podcastów, jest przesyłana i udostępniana bezpośrednio przez Stanford GSB lub jego partnera na platformie podcastów. Jeśli uważasz, że ktoś wykorzystuje Twoje dzieło chronione prawem autorskim bez Twojej zgody, możesz postępować zgodnie z procedurą opisaną tutaj https://pl.player.fm/legal.

If we want to get fair outcomes, then we need to build fairness into algorithms.

Whether you’re looking for a job, a house, or a romantic partner, there’s an app for that. But as people increasingly turn to digital platforms in search of opportunity, Daniela Saban says it’s time we took a critical look at the role of algorithms, the invisible matchmakers operating behind our screens.

Saban is an Associate Professor of Operations, Information & Technology at Stanford Graduate School of Business whose research interests lie at the intersection of operations, economics, and computer science. With algorithms significantly influencing who gets matched with opportunities, she advocates for building “equity into the algorithm.”

In this episode of If/Then: Business, Leadership, Society, Saban explores how properly designed algorithms can improve the fairness and effectiveness of matching processes. If we want algorithms to work for good, then we need to make conscious choices about how we design them.

Key Takeaways:

  • Algorithms shape online experiences and real-world outcomes: On dating apps, volunteer matching services, and job websites, algorithms play a crucial role in matching people with opportunities. While these matchups are facilitated in the digital domain, they impact real people in the real world.

  • Algorithms are not neutral: Algorithms reflect the values and priorities of their designers and have the power to either perpetuate or mitigate inequities.

  • Thoughtful algorithm design can improve outcomes for all: Saban's research demonstrates that algorithms can be optimized to create more balanced and successful matching experiences. By consciously choosing to prioritize fairness and equity in algorithm design, we can create systems that work for the good of all users.

More Resources:

If/Then is a podcast from Stanford Graduate School of Business that examines research findings that can help us navigate the complex issues we face in business, leadership, and society. Each episode features an interview with a Stanford GSB faculty member.

See Privacy Policy at https://art19.com/privacy and California Privacy Notice at https://art19.com/privacy#do-not-sell-my-info.

  continue reading

22 odcinków

Artwork
iconUdostępnij
 
Manage episode 423120408 series 3550256
Treść dostarczona przez Stanford GSB. Cała zawartość podcastów, w tym odcinki, grafika i opisy podcastów, jest przesyłana i udostępniana bezpośrednio przez Stanford GSB lub jego partnera na platformie podcastów. Jeśli uważasz, że ktoś wykorzystuje Twoje dzieło chronione prawem autorskim bez Twojej zgody, możesz postępować zgodnie z procedurą opisaną tutaj https://pl.player.fm/legal.

If we want to get fair outcomes, then we need to build fairness into algorithms.

Whether you’re looking for a job, a house, or a romantic partner, there’s an app for that. But as people increasingly turn to digital platforms in search of opportunity, Daniela Saban says it’s time we took a critical look at the role of algorithms, the invisible matchmakers operating behind our screens.

Saban is an Associate Professor of Operations, Information & Technology at Stanford Graduate School of Business whose research interests lie at the intersection of operations, economics, and computer science. With algorithms significantly influencing who gets matched with opportunities, she advocates for building “equity into the algorithm.”

In this episode of If/Then: Business, Leadership, Society, Saban explores how properly designed algorithms can improve the fairness and effectiveness of matching processes. If we want algorithms to work for good, then we need to make conscious choices about how we design them.

Key Takeaways:

  • Algorithms shape online experiences and real-world outcomes: On dating apps, volunteer matching services, and job websites, algorithms play a crucial role in matching people with opportunities. While these matchups are facilitated in the digital domain, they impact real people in the real world.

  • Algorithms are not neutral: Algorithms reflect the values and priorities of their designers and have the power to either perpetuate or mitigate inequities.

  • Thoughtful algorithm design can improve outcomes for all: Saban's research demonstrates that algorithms can be optimized to create more balanced and successful matching experiences. By consciously choosing to prioritize fairness and equity in algorithm design, we can create systems that work for the good of all users.

More Resources:

If/Then is a podcast from Stanford Graduate School of Business that examines research findings that can help us navigate the complex issues we face in business, leadership, and society. Each episode features an interview with a Stanford GSB faculty member.

See Privacy Policy at https://art19.com/privacy and California Privacy Notice at https://art19.com/privacy#do-not-sell-my-info.

  continue reading

22 odcinków

Semua episod

×
 
Loading …

Zapraszamy w Player FM

Odtwarzacz FM skanuje sieć w poszukiwaniu wysokiej jakości podcastów, abyś mógł się nią cieszyć już teraz. To najlepsza aplikacja do podcastów, działająca na Androidzie, iPhonie i Internecie. Zarejestruj się, aby zsynchronizować subskrypcje na różnych urządzeniach.

 

Skrócona instrukcja obsługi