Timezone: »
This paper provides the first sample complexity lower bounds for the estimation of simple diffusion models, including the Bass model (used in modeling consumer adoption) and the SIR model (used in modeling epidemics). We show that one cannot hope to learn such models until quite late in the diffusion. Specifically, we show that the time required to collect a number of observations that exceeds our sample complexity lower bounds is large. For Bass models with low innovation rates, our results imply that one cannot hope to predict the eventual number of adopting customers until one is at least two-thirds of the way to the time at which the rate of new adopters is at its peak. In a similar vein, our results imply that in the case of an SIR model, one cannot hope to predict the eventual number of infections until one is approximately two-thirds of the way to the time at which the infection rate has peaked. These limits are borne out in both product adoption data (Amazon), as well as epidemic data (COVID-19).
Author Information
Jackie Baek (Massachusetts Institute of Technology)
Vivek Farias (Massachusetts Institute of Technology)
ANDREEA GEORGESCU (mit)
Retsef Levi (MIT)
Tianyi Peng (Massachusetts Institute of Technology)
Joshua Wilde (MIT)
Andrew Zheng (MIT)
Related Events (a corresponding poster, oral, or spotlight)
-
2021 : The Limits to Learning a Diffusion Model »
Dates n/a. Room
More from the Same Authors
-
2021 Spotlight: Fair Exploration via Axiomatic Bargaining »
Jackie Baek · Vivek Farias -
2021 : Learning Treatment Effects in Panels with General Intervention Patterns »
Vivek Farias · Andrew Li · Tianyi Peng -
2022 Poster: Markovian Interference in Experiments »
Vivek Farias · Andrew Li · Tianyi Peng · Andrew Zheng -
2021 : The Limits to Learning a Diffusion Model (Andy Zheng) »
Andrew Zheng -
2021 Oral: Learning Treatment Effects in Panels with General Intervention Patterns »
Vivek Farias · Andrew Li · Tianyi Peng -
2021 Poster: Fair Exploration via Axiomatic Bargaining »
Jackie Baek · Vivek Farias -
2021 Poster: Learning Treatment Effects in Panels with General Intervention Patterns »
Vivek Farias · Andrew Li · Tianyi Peng -
2016 Poster: Optimistic Gittins Indices »
Eli Gutin · Vivek Farias -
2012 Poster: Non-parametric Approximate Dynamic Programming via the Kernel Method »
Nikhil Bhat · Ciamac C Moallemi · Vivek Farias -
2009 Poster: A Data-Driven Approach to Modeling Choice »
Vivek Farias · Srikanth Jagabathula · Devavrat Shah -
2009 Spotlight: A Data-Driven Approach to Modeling Choice »
Vivek Farias · Srikanth Jagabathula · Devavrat Shah -
2009 Poster: A Smoothed Approximate Linear Program »
Vijay Desai · Vivek Farias · Ciamac C Moallemi -
2009 Spotlight: A Smoothed Approximate Linear Program »
Vijay Desai · Vivek Farias · Ciamac C Moallemi