I LOVE MWBD’s but I sooo… wish you had a Spanish version! My wife is a Math teacher and she is Panamaña. I would love to share this with her, she is not proficient in English. She would love it, though 👍Please find a way to create another version. Maybe an algorithm 🤣
Which real-world factors like emotions, personal growth, or changing circumstances would an algorithm struggle to account for in the kinds of situations described here?
I am! It’s a really fun result (“train” yourself on the first 1/e of the talent pool, then select the first candidate who is better than all your training data). But I’ve always been somewhat troubled by the choice of optimization criterion.
It seems strange to maximize the probability of the single best candidate, as opposed to (say) expected quality of candidate. As such, the “optimal” algorithm has the peculiar feature that, 1/e of the time (when the best candidate happens to appear during your training period), you’ll wind up failing your search and selecting whichever candidate happens by random chance to be the final one interviewed.
In practice, a better approach seems to be relaxing your choosiness as you approach the end of the talent pool. E.g., you should accept a 2nd-to-last candidate if they’re merely better than the median candidate seen thus far (and accept a 3rd-to-last candidate if they’re in the top tercile of candidates seen thus far).
The rhythm-based arcade game Space Waves combines futuristic graphics, music, and reflexes into one thrilling experience. Although the game Space Waves appears straightforward at first, you soon discover how difficult and captivating it can be once you start playing.
I LOVE MWBD’s but I sooo… wish you had a Spanish version! My wife is a Math teacher and she is Panamaña. I would love to share this with her, she is not proficient in English. She would love it, though 👍Please find a way to create another version. Maybe an algorithm 🤣
math + science + technology = climate apocalypse
Which real-world factors like emotions, personal growth, or changing circumstances would an algorithm struggle to account for in the kinds of situations described here?
Ben, are you familiar with “The Secretary Problem” on the sample size to interview candidates, where I believe the optimal decision occurs after N/e ?
Jerry Tuttle
I am! It’s a really fun result (“train” yourself on the first 1/e of the talent pool, then select the first candidate who is better than all your training data). But I’ve always been somewhat troubled by the choice of optimization criterion.
It seems strange to maximize the probability of the single best candidate, as opposed to (say) expected quality of candidate. As such, the “optimal” algorithm has the peculiar feature that, 1/e of the time (when the best candidate happens to appear during your training period), you’ll wind up failing your search and selecting whichever candidate happens by random chance to be the final one interviewed.
In practice, a better approach seems to be relaxing your choosiness as you approach the end of the talent pool. E.g., you should accept a 2nd-to-last candidate if they’re merely better than the median candidate seen thus far (and accept a 3rd-to-last candidate if they’re in the top tercile of candidates seen thus far).
For real though, data indicates the secretary problem does not apply to marriage. https://juliawise.net/marrying-young-went-well-for-me-part-1/#is-lack-of-experience-bad
The rhythm-based arcade game Space Waves combines futuristic graphics, music, and reflexes into one thrilling experience. Although the game Space Waves appears straightforward at first, you soon discover how difficult and captivating it can be once you start playing.