It’s Rare to Have Competing, Viable, Scientific Theories | Summary and Q&A

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May 11, 2021
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It’s Rare to Have Competing, Viable, Scientific Theories

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Summary

This video discusses the concept of bayesianism and its limitations in generating new knowledge and explanations. While bayesianism is effective in updating predictions based on new information and is widely used in fields like medicine, it falls short in the realm of creativity and generating new explanations. The video highlights the importance of creativity in scientific discoveries and emphasizes the need for experimental refutation and critical analysis in evaluating competing explanations.

Questions & Answers

Q: What is the similarity between bayesianism and the edition that's similar to it?

Both bayesianism and the mentioned edition assume that it is possible to enumerate all the possible theories or explanations. However, this assumption is not feasible in reality due to the creative aspect of generating theories.

Q: How often do competing theories exist in science?

Competing theories are quite rare in science. In physics, for example, there was the Newtonian theory of gravity which later competed with the theory of general relativity. It is even rarer to have three competing theories.

Q: Why do induction and bayesianism work well in known and constrained spaces?

Induction and bayesianism are effective in finite and constrained spaces that are already known. In such cases, they can be used to weigh the previous probability predictions and update them based on new data. However, they are not suitable for generating new explanations.

Q: Can you provide an example illustrating the difference between knife probability and bayesianism?

Yes, the Monty Hall show example can help illustrate the difference. In the show, there are three doors, one hiding a treasure and the other two empty. After you pick a door, Monty Hall opens one of the remaining doors to show that it is empty. Now, bayesianism suggests that you should revise your initial guess and switch to the other door, as you have received new information. This is contrary to the understanding of knife probability, which says the probability should not have changed.

Q: How does the Monty Hall example demonstrate the effectiveness of bayesianism?

If we extend the scenario to 100 doors and randomly pick one, then Monty Hall opens 98 of the remaining 99 doors to show they are empty, it becomes clear that switching doors would be advantageous. The odds that you initially picked the winning door out of 100 are extremely low, while the odds for the other unopened door become much higher. This illustrates the power of bayesianism in updating probabilities based on new information.

Q: Is being able to update priors based on new information the only use of bayesianism?

No, updating priors is just one application of bayesianism. It is commonly used in areas like medicine to determine the comparative effectiveness of different medications. Bayesian methods have proven to be very useful in these contexts and are widely accepted without controversy.

Q: How does the video distinguish between the uncontroversial and controversial uses of bayesianism?

The video suggests that bayesianism can be applied in certain areas of science without controversy, such as medicine. However, it becomes controversial when used as a means to generate new explanations or to judge one explanation against another. The creative aspect of generating new knowledge and the experimental refutation or critical analysis of explanations are crucial components that cannot be adequately addressed by bayesianism alone.

Q: What is the role of creativity in generating new explanations?

Creativity plays a fundamental role in generating new explanations. It is the process by which novel ideas and theories are introduced. Bayesianism, while useful in updating probabilities based on new information, does not possess the capacity for creativity and cannot generate new knowledge or explanations on its own.

Q: How do scientists evaluate and judge competing explanations?

Scientists evaluate competing explanations through experimental refutation and critical analysis. They conduct experiments to test the validity of different explanations and subject them to rigorous scrutiny and criticism. This process allows scientists to identify and discard bad explanations, leading to the advancement of knowledge.

Q: What are the limitations of bayesianism in relation to generating new knowledge and evaluating explanations?

The main limitation of bayesianism is its inability to generate new knowledge or explanations. While it excels in updating probabilities based on new information, it lacks the creative capacity required to generate entirely new theories. To evaluate explanations, bayesianism is not sufficient either, as it cannot provide the necessary experimental refutation or critical analysis to distinguish between good and bad explanations.

Takeaways

The video emphasizes that bayesianism is a powerful tool for updating probabilities based on new information and finds extensive use in fields like medicine. However, it is important to recognize that bayesianism is not a substitute for creativity in generating new knowledge and explanations. The process of evaluating competing explanations requires experimental refutation and critical analysis to identify and eliminate bad explanations. Ultimately, to advance scientific understanding, it is essential to incorporate both creative thinking and rigorous evaluation methodologies.

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