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Anjie chats with Dr. Johannes Eichstaedt, an Assistant Professor in Psychology, and the Shriram Faculty Fellow at the Institute for Human-Centered Artificial Intelligence at Stanford University. Johannes directs the Computational Psychology and Well-Being lab. His research focuses on using social media (Facebook, Twitter, Reddit, …) to measure the psychological states of large populations and individuals to determine the thoughts, emotions, and behaviors that drive physical illness (like heart disease), depression, or support psychological well-being. In this episode, Anjie and Johannes chat about how social media could be a lens to understand mental illnesses such as depression. Johannes also shares his thoughts on the emerging trends in social media, and how some powerful technocrats in Silicon Valley might have some huge blind spots in understanding human nature.
If you found this episode interesting at all, subscribe on our Substackand consider leaving us a good rating! It just takes a second but will allow us to reach more people and make them excited about psychology.
Links:
Johannes’s paper: Eichstaedt, J. C., Smith, R. J., Merchant, R. M., Ungar, L. H., Crutchley, P., Preoţiuc-Pietro, D., ... & Schwartz, H. A. (2018). Facebook language predicts depression in medical records. Proceedings of the National Academy of Sciences, 115(44), 11203-11208.
Johannes’s Twitter: @JEichstaedt
Johannes’s lab website: https://cpwb.stanford.edu/
Anjie’s: website: anjiecao.github.io
Anjie’s Twitter @anjie_cao
Podcast Twitter @StanfordPsyPod
Podcast Substack https://stanfordpsypod.substack.com/
Let us know what you thought of this episode, or of the podcast! :) [email protected]
5
44 ratings
Anjie chats with Dr. Johannes Eichstaedt, an Assistant Professor in Psychology, and the Shriram Faculty Fellow at the Institute for Human-Centered Artificial Intelligence at Stanford University. Johannes directs the Computational Psychology and Well-Being lab. His research focuses on using social media (Facebook, Twitter, Reddit, …) to measure the psychological states of large populations and individuals to determine the thoughts, emotions, and behaviors that drive physical illness (like heart disease), depression, or support psychological well-being. In this episode, Anjie and Johannes chat about how social media could be a lens to understand mental illnesses such as depression. Johannes also shares his thoughts on the emerging trends in social media, and how some powerful technocrats in Silicon Valley might have some huge blind spots in understanding human nature.
If you found this episode interesting at all, subscribe on our Substackand consider leaving us a good rating! It just takes a second but will allow us to reach more people and make them excited about psychology.
Links:
Johannes’s paper: Eichstaedt, J. C., Smith, R. J., Merchant, R. M., Ungar, L. H., Crutchley, P., Preoţiuc-Pietro, D., ... & Schwartz, H. A. (2018). Facebook language predicts depression in medical records. Proceedings of the National Academy of Sciences, 115(44), 11203-11208.
Johannes’s Twitter: @JEichstaedt
Johannes’s lab website: https://cpwb.stanford.edu/
Anjie’s: website: anjiecao.github.io
Anjie’s Twitter @anjie_cao
Podcast Twitter @StanfordPsyPod
Podcast Substack https://stanfordpsypod.substack.com/
Let us know what you thought of this episode, or of the podcast! :) [email protected]
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