@lawrennd
inverseprobability.com
This process has already revolutionised biology
Shift in dynamic from the direct pathway between human and data to indirect pathway between human and data via the computer
This change of dynamics gives us the modern and emerging domain of data science
Paradoxes of the Data Society
Quantifying the Value of Data
Privacy, loss of control, marginalization
Able to quantify to a greater and greater degree the actions of individuals
But less able to characterize society
As we measure more, we understand less
Perhaps greater preponderance of data is making society itself more complex
Therefore traditional approaches to measurement are failing
Curate’s egg of a society: it is only ‘measured in parts’
2015 UK election polls
Clinical trial and personalized medicine
Social media memes
Filter bubbles and echo chambers
More classical statistics!
A better characterization of human needs and flaws
There’s a sea of data, but most of it is undrinkable
We require data-desalination before it can be consumed!
Direct work on data generates an enormous amount of ‘value’ in the data economy but this is unaccounted in the economy
Hard because data is difficult to ‘embody’
Encourage greater interaction between application domains and data scientists
Encourage visualization of data
Adoption of ‘data readiness levels’
Implications for incentivization schemes
Society is becoming harder to monitor
Individual is becoming easier to monitor
Potential for explicit and implicit discrimination on the basis of race, religion, sexuality, health status
All prohibited under European law, but can pass unawares, or be implicit