[Network Seminar] Sasha (Alexander) Belikov - Quantifying Scientific Discovery to Improve the Knowledge of Facts

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chakresh.singh

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2022年12月5日 清晨6:19:422022/12/5
收件者:Network seminar in Paris

Dear all,

We are excited to invite you to the next Network Seminar on 15th December 5pm-6pm CET with Sasha (Alexander) Belikov

The seminar will be hybrid. It will be held at LPI, room 2.05. For online participation please registration here to get the zoom link for the talk. 

More information on the event page: https://events.cri-paris.org/e/195

Title: Quantifying Scientific Discovery to Improve the Knowledge of Facts

Abstract: The ever-increasing amount of published academic results poses a challenge in interpretation and validation of these publications and rendering them to scientific facts. Despite the apparent lack of alignment between published claims and established facts, accounting for network structure enables predictive models that can assess the validity of published claims. Using pre-trained models on simulated alternative attention and local clustering distributions (which translates to modifications of funding policies) of academic publication we show that the overall knowledge of facts may be dramatically improved. We conclude by a discussion of applications of our methodology to other domains.

Bio: Sasha (Alexander) Belikov started his career as a physicist with contributions in condensed matter and dark matter physics. After switching gears to become a quantitative researcher in finance for 2 years, he then did a postdoc in computational sociology at the Knowledge Lab at the University of Chicago. In the past 3 years, while leading the data science team at a Parisian start-up Hello Watt, he has remained involved in modeling scientific processes and the development of tools thereof.

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Best regards,

Chakresh, Liubov, Marc

More information on the network seminar: https://interactiondatalab.com/network-seminar/


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