This is a summary of
the book “How to stay smart in a smart world – why human intelligence still
beats algorithms” written by Gerd Gigerenzer and published by MIT Press
2022. He is a psychologist known for his
work on bounded rationality and directs the Harding Center for Risk Literacy at
the University of Potsdam. He is also a partner at Simply Rational – The
Decision Institute.
Recent advances in artificial intelligence have juxtaposed a
different form of intelligence to ours and poses a question about the role of
either intelligence. With the spectrum of reactions ranging from embracing it
openly to being apprehensive about its prevalence or dominance, the author
picks out a cautious approach playing on the strengths and avoiding the
weaknesses. With several examples and case studies, he argues that one form of
intelligence works well in stable environments with well-defined rules while
the other will never lose its relevance outside that world.
The salient points from this book include assertions that AI
excels in stable environments and follows rules dictated by humans, AI systems
don’t perform well in dynamic environments, filled with uncertainty. Humans
must try out AI to get best results. In unexplored territory, simple and
transparent algorithms perform better than complex ones. Among the negative
impacts, ad-based model from social media platforms can be cited. It’s possible
to separate human interaction with machine supervision with clear demarcation.
For example, self-driving cars could be given their own dedicated lanes where
possible. Market hype and profit incentives can lead companies to
overcompromise and underdeliver on digital technologies.
AI wins hands down in many games such as chess, Go etc
because it learns the game rules that are fixed, it is tuned by human experts
and uses brute calculation to determine the best possible move. The better
defined and more stable the premise, the better the performance. The flip side
is self-evident with facial recognition for instance that works 99.6% of the
time. In dynamic environments, the number drops significantly. When UK police
scanned the faces of 170000 soccer fans in a stadium for matches with criminal
database, 93% of the matches were false.
AI is good at making correlations with huge amounts of data,
even some that would have escaped humans, but it cannot recognize scenarios and
deal with ambiguity. For example, Maine’s divorce rate and the United States’
per capita consumption of margarine have a significant correlation but it makes
no sense. Its these false findings by AI that makes them even harder to
replicate leading to a lot of waste and error in areas such as health science
and biotechnology and to the tune of hundreds of billions of dollars.
Assertions made today such as eat blueberries to prevent memory loss, eat
bananas to get higher verbal SAT score,
eat kiwis late at night to sleep better etc may just be the opposite in
due time.
Whenever the effectiveness of AI decreases, human
intervention can significantly boost their performance. The human brain has a
remarkable ability to adapt to constantly changing cues, contexts and
situations in what is termed as vicarious functioning. Staying smart means
leveraging singularity capabilities but staying in charge. AI lacks four
components of common sense – a capacity to think casually, an awareness of
others’ intentions and feelings, a basic understanding of space, time and
objects, and a longing to join in group norms. Some tasks like recommending the
nearest restaurant do not need common sense but the detection of a person
crossing the road in a war zone as a threat requires it.
Complex problems do not justify complex solutions. Google
Flu trends tried to predict the spread of flu with approximately 160 search
terms but they still overpredicted doctors’ visits. In comparison, an algorithm
from Max Planck Institute for human development simply used one data point:
recent visits to the doctor from the CDC website and performed much better in
predicting the flu’s spread.
Information when served subliminally or unknowingly have
potential to alter our behavior. This is why ad-based model for social media
can be harmful by creating distractions. With attention control technology, the
user is held captive by these algorithms. Texting while driving has caused 3000
deaths per year in the United States between 2010 and 2020. In areas other than
driving, smartphones have proven to be very distracting.
Finally, the business aspect of artificial intelligence must
be realized in the context of historical trends with killer technologies and
the commerce behind it. The author says we should be able to profit from AI but
not be easily misled with expectations and predictions.
Earlier book summaries: BookSummary10.docx
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