Tade Souaiaia: the edge of statistical genetics, race and sports
Razib Khan's Unsupervised Learning
Release Date: 02/20/2025
Razib Khan's Unsupervised Learning
On this episode of Unsupervised Learning, Razib talks to Bo Winegard and Noah Carl, the editors behind the online publication , founded in 2022. Winegard and Carl are both former academics. Winegard has a social psychology Ph.D. from Florida State University, and was an assistant professor at Marietta College. He was an editor at before moving to Aporia. Carl earned his Ph.D. in sociology from Oxford University. He was a research fellow at St. Edmund’s College, Cambridge, before becoming a contributor to The Daily Skeptic and UnHerd, and a managing...
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Today Razib talks to , a on Unsupervised Learning. Lee hosts . Lee covered tech more generally for a decade for , , and . He has a master's degree in computer science from Princeton. Lee writes extensively about general AI issues, from to the state of . But one of the major areas he has focused on is . With expansion of Waymo to , and this June’s debut of Tesla’s robotaxis, Razib wanted to talk to Lee about the state of the industry. They discuss the controversies relating to safety and self-driving cars. Is it...
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This podcast accompanies my post . The two preprints at the heart of this post are, and .
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Today Razib talks to Laura Spinney, Paris-based British author of the forthcoming . A science journalist, translator and author of both fiction and non-fiction, she has written for,,,, and. Spinney is the author of two novels, and , and a collection of oral history in French from Lausanne entitled Rue Centrale. In 2017, she published , an account of the. She also translated Swiss writer Charles-Ferdinand Ramuz's novel into English. Spinney graduated with a Bachelor of Science degree in Natural Sciences from Durham University and did a journalism...
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Today, Razib talks about a new paper, : Understanding the history of admixture events and population size changes leading to modern humans is central to human evolutionary genetics. Here we introduce a coalescence-based hidden Markov model, cobraa, that explicitly represents an ancestral population split and rejoin, and demonstrate its application on simulated and real data across multiple species. Using cobraa, we present evidence for an extended period of structure in the history of all modern humans, in which two ancestral populations that diverged ~1.5 million years ago came...
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On this episode of the podcast Razib talks to John Sailer. Sailer is currently the director of higher education policy and a senior fellow at the Manhattan Institute. He covers issues of academic freedom, free speech, and ideological capture in higher education. Sailer has written for the Wall Street Journal, the Free Press and Tablet Magazine. Sailer holds a master’s degree in philosophy and education from Columbia University, and a bachelor’s degree in politics, philosophy, and economics from The King’s College. Prior to joining the Manhattan Institute, he was a senior fellow at the...
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On this episode of Unsupervised Learning Razib talks to . Shell is a professor of geography at Temple University and author of , and the . Educated at Columbia and Syracuse universities, Shell is active on social media, where he comments extensively on the politicization of the academy. The conversation begins with Shell’s piece in Compact Magazine, . The more than 3,000-word essay argues that academia must diversify ideologically to save itself, but also engage in a wider range of scholarship. Shell points out that US academia has become an ideological...
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On this episode of Unsupervised Learning Razib talks to . He co-founded the Prague-based newspaper Prognosis in the early 1990’s and later worked as an opinion section editor for the Los Angeles Times. From 2008-2016, Welch served as editor-in-chief of Reason magazine, where he currently holds the position of editor-at-large. He co-authored and wrote . Today, Welch co-hosts podcast with Kmele Foster and Michael Moynihan. Razib and Welch first go back to his days in Eastern Europe, and how they shaped his views on foreign...
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On this episode of Unsupervised Learning Razib comments on a new paper in Nature,. Here is the abstract: Although it is one of the most arid regions today, the Sahara Desert was a green savannah during the African Humid Period (AHP) between 14,500 and 5,000 years before present, with water bodies promoting human occupation and the spread of pastoralism in the middle Holocene epoch1. DNA rarely preserves well in this region, limiting knowledge of the Sahara’s genetic history and demographic past. Here we report ancient genomic data from the Central Sahara, obtained from...
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On this episode of Unsupervised Learning, Razib talks to , co-founder of . An NYU graduate with a degree in economics, Song was a member of the class of winter 2016. Before becoming a founder, Song worked at firms involved in data analytics and artificial intelligence. A repeat attendee at the Founders Fund “Hereticon” conference, Song’s company has been profiled , and . Razib and Song first talk about the current state of climate, or more precisely, climate change and anthropogenic global warming. Song argues that the...
info_outlineOn this episode of Unsupervised Learning Razib talks to Tade Souaiaia, a statistical geneticist at SUNY Downstate about his new preprint, Striking Departures from Polygenic Architecture in the Tails of Complex Traits. Souaiaia trained as a computational biologist at USC, but also has a background as a division I track and field athlete.
Razib and Souaiaia discuss what “genetic architecture” means, and consider what we're finding when we look at extreme trait values in characteristics along a normal distribution. Though traits like height or risk for type II diabetes can be thought of as represented by an idealized Gaussian distribution, real molecular and cellular processes still underlie their phenotypic expression. Souaiaia talks about how genomics has resulted in an influx of data and allowed statistical geneticists with a theoretical bent to actually test some of the models that underpin our understanding of traits and examine how models like mutation-selection balance might differ from what we’ve long expected. After wading through the depths of genetic abstraction and how it intersects with the new age of big data, Razib and Souaiaia talk about race and sports, and whether there might be differences between groups in athletic ability. Souaiaia argues that the underlying historical track record is too variable to draw firm conclusions, while Razib argues that there are theoretical reasons that one should expect differences between groups at the tails and even around the memes.