What is Differential Privacy? - DTNS Explainer

What is Differential Privacy? - DTNS Explainer

Data privacy. There's a lot of misinformation and overreaction when it comes to data privacy but that's in large part to the fact that there's a lot of lack of data privacy. People are rightly concerned. In this episode Tom describes very simply and generally what differential privacy is, and what you need to know about how it's used.


On DTNS we try to balance the idea that companies do definitely need to improve data protection with the idea that sharing data at all isn't a bad thing in fact when done right can be a very good thing.


Not just for companies but academic research and nonprofits benefit from research on datasets. However just taking data, even when names are stripped off, can lead to trouble. As far back as 2000, researchers were showing that the right analysis of raw data sets could deduce who people were even when the data was anonymized. In 2000, Latanya Sweeney showed that 87% of people in the US could be identified from ZIP code, birthdate and sex.


https://arstechnica.com/tech-policy/2009/09/your-secrets-live-online-in-databases-of-ruin/


One attempt to make data workable is called differential privacy. Apple mentioned the use of differential privacy in its 2016 WWDC keynote.


https://www.theverge.com/2016/6/17/11957782/apple-differential-privacy-ios-10-wwdc-2016


What is differential privacy?


An algorithm is differentially private if you can't tell who anybody is by looking at the output.


Here's a simple example. Let's say you want to publish the aggregate sales data of businesses by category. Stores want to keep sales data private. So you agree that only the total sales for a category will be published. That way you can't tell how much came from which businesses. Which is great until you come to the category of Shark repellent sales. There's only one shark repellent business in your region. If you publish that category you won't be saying the name of the business but it will be easy to tell who it is.


So, you have an algorithm that looks for categories where that's a problem and maybe it deletes them or maybe it folds them into another category.


This can get trickier if, say, there's a total sales number for the region and only one category was deleted. You just add all the published categories and subtract it from the published total and the difference is the missing business.


And remember there's other data out there to use. Some attacks on data use data from elsewhere to deduce identities. Let's say you study how people walk through a park and you discover that of 100 people observed 40 walk on the path and 60 cut through the grass. Seems private enough right. There's no leakage of data in the published results.


But an adversary discovers the names of the people who participated in the study. And they want to find out of Bob walks on the grass so they can embarrass him. They also found out that of the 99 people in the study who weren't Bob, 40 walked the path and 59 walked on the grass. BINGO! Bob is a grass walker. Now I know it sounds unrealistic that the adversary got that much info without just getting all of it. But differential privacy would protect Bob's identity even if the adversary had all that info.


So what do we do? How do we do this differential privacy thing?


In 2003 Kobbi Nissim and Irit Dinur demonstrated that, mathematically speaking, you can't publish arbitrary queries of a database without revealing some amount of private info. Thus the Fundamental Law of Information Recovery, which says that privacy cannot be protected without injecting noise. In 2006 Cynthia Dwork, Frank McSherry, Kobbi Nissim and Adam D. Smith published an article formalizing the amount of noise that needed to be added and how to do it. That work used the term differential privacy.


A little bit on what that...

Hosted on Acast. See acast.com/privacy for more information.

Denne episoden er hentet fra en åpen RSS-feed og er ikke publisert av Podme. Den kan derfor inneholde annonser.

Episoder(2267)

Demis Hassabis Has a Watchdog Framework - DTNS 5309

Demis Hassabis Has a Watchdog Framework - DTNS 5309

Microsoft announced its finally removing promotional noise from the Windows 11 Search Box, and New York has become the first US state to place a moratorium on new hyperscale data centers.Starring Jaso...

14 Jul 28min

Apple Sues OpenAI For Alleged Trade Secret Theft - DTNS 5308

Apple Sues OpenAI For Alleged Trade Secret Theft - DTNS 5308

More than 200 economists and tech leaders signed a “We Must Act Now” letter encouraging policymakers to understand and address the AI moment, and the European Union is planning a ban of children under...

13 Jul 31min

JRPG: Gateway Games - DTNS 5308 Experiment Week

JRPG: Gateway Games - DTNS 5308 Experiment Week

What games made them lifelong gamers? Jenn Cutter and Roger Chang revisit the six titles that started it all, from Roger's 8-bit classics King's Quest and Star Trek to Jenn's Mario adventures on the N...

10 Jul 49min

Producing Podcast Problems - DTNS 5307 Experiment Week

Producing Podcast Problems - DTNS 5307 Experiment Week

Hammond and Amos walk through some of the common problems they face producing daily news podcasts, relate tales of woe, and share some advice for those wanting to create their own content.Starring Ant...

9 Jul 59min

TechTV Scrapbook: Scott Herriott – DTNS 5306 Experiment Week

TechTV Scrapbook: Scott Herriott – DTNS 5306 Experiment Week

Roger catches up with Scott Herriott, former host of ZDTV/TechTV’s Internet Tonight, for a nostalgic trip behind the scenes of early days at the cable network. Scott talks about how the show was built...

8 Jul 48min

Ctrl-Alt-Upcycle - DTNS 5305 Experiment Week

Ctrl-Alt-Upcycle - DTNS 5305 Experiment Week

Welcome to Ctrl-Alt-Upcycle, your weekly survival guide for the modern tech economy. Patrick and Roger show you how to beat rising prices by squeezing every drop of value from the gear you already own...

7 Jul 23min

Technical Tea - DTNS 5304 Experiment Week

Technical Tea - DTNS 5304 Experiment Week

Huyen and Niki talk tech and science. Discussing their favorite news this month and interrogate AI's place in learning.Starring Dr. Niki Ackermans, Huyen Tue Dao Hosted on Acast. See acast.com/privac...

6 Jul 31min

AI at a Nuclear Power Plant - DTNS Weekend

AI at a Nuclear Power Plant - DTNS Weekend

Tanner Goodman returns to update us on why, even though he’s still skeptical about general-purpose LLMs, a nuclear power plant may be one of the best places to use them.Featuring Tom Merritt and Tanne...

4 Jul 19min

Populært innen Politikk og nyheter

giver-og-gjengen-vg
aftenpodden-usa
aftenpodden
fotballpodden-2
forklart
popradet
stopp-verden
det-store-bildet
rss-gukild-johaug
hanna-de-heldige
rss-ness
nokon-ma-ga
dine-penger-pengeradet
aftenbla-bla
rss-utenrikskomiteen-med-bogen-og-grasvik
lydartikler-fra-aftenposten
e24-podden
rss-penger-polser-og-politikk
rss-hor-na-krim-2
rss-espen-lee-usensurert