One from MIT - machine learning / neural network + math
https://www.medrxiv.org/content/10.1101/2020.04.03.20052084v1.full.pdf
Second up - the tsips:
https://covid-19.tacc.utexas.edu/media/filer_public/d8/c1/d8c133e3-8814-4b30-9d3f-f0992ca66886/ut_covid-19_mortality_forecasting_model.pdf
Do read the "same same, but different" section comparing and contrasting it to the IHME.
And here's their competing with IHME website
https://covid-19.tacc.utexas.edu/projections/
https://www.medrxiv.org/content/10.1101/2020.04.03.20052084v1.full.pdf
I for one welcome our new robot overlords.Quote:
In this paper, we attempt to interpret and extrapolate from publicly available data using a mixed first-principles epidemiological equations and data-driven neural network model. Leveraging our neural network augmented model, we focus our analysis on four locales: Wuhan, Italy, South Korea and the United States of America, and compare the role played by the quarantine and isolation measures in each of these countries in controlling the effective reproduction number Rt of the virus. Our results unequivocally indicate that the countries in which rapid government interventions and strict public health measures for quarantine and isolation were implemented were successful in halting the spread of infection and prevent it from exploding exponentially
Second up - the tsips:
https://covid-19.tacc.utexas.edu/media/filer_public/d8/c1/d8c133e3-8814-4b30-9d3f-f0992ca66886/ut_covid-19_mortality_forecasting_model.pdf
Quote:
we have developed an alternative curve-fitting method for forecasting COVID-19 mortality throughout the U.S. Our model is similar in spirit to the IHME model, but different in two important details.
1. For each U.S. state, we use local data from mobile-phone GPS traces made available by SafeGraph to quantify the changing impact of socialdistancing measures on "flattening the curve."
2. We reformulated the approach in a generalized linear model framework to correct a statistical flaw that leads to the underestimation of uncertainty in the IHME forecasts.
The incorporation of real-time geolocation data and several key modifications yields projections that differ noticeably from the IHME model, especially regarding uncertainty when projecting COVID-19 deaths several weeks into the future.
Do read the "same same, but different" section comparing and contrasting it to the IHME.
And here's their competing with IHME website
https://covid-19.tacc.utexas.edu/projections/