8 research outputs found
Near-Optimal Methods for Minimizing Star-Convex Functions and Beyond
In this paper, we provide near-optimal accelerated first-order methods for
minimizing a broad class of smooth nonconvex functions that are strictly
unimodal on all lines through a minimizer. This function class, which we call
the class of smooth quasar-convex functions, is parameterized by a constant
, where encompasses the classes of smooth convex
and star-convex functions, and smaller values of indicate that the
function can be "more nonconvex." We develop a variant of accelerated gradient
descent that computes an -approximate minimizer of a smooth
-quasar-convex function with at most total function and gradient evaluations. We
also derive a lower bound of on the
number of gradient evaluations required by any deterministic first-order method
in the worst case, showing that, up to a logarithmic factor, no deterministic
first-order algorithm can improve upon ours.Comment: 37 page
DeepHeart: Semi-Supervised Sequence Learning for Cardiovascular Risk Prediction
We train and validate a semi-supervised, multi-task LSTM on 57,675
person-weeks of data from off-the-shelf wearable heart rate sensors, showing
high accuracy at detecting multiple medical conditions, including diabetes
(0.8451), high cholesterol (0.7441), high blood pressure (0.8086), and sleep
apnea (0.8298). We compare two semi-supervised train- ing methods,
semi-supervised sequence learning and heuristic pretraining, and show they
outperform hand-engineered biomarkers from the medical literature. We believe
our work suggests a new approach to patient risk stratification based on
cardiovascular risk scores derived from popular wearables such as Fitbit, Apple
Watch, or Android Wear.Comment: Presented at AAAI 201
Recommended from our members
DeepHeart: Semi-Supervised Sequence Learning for Cardiovascular Risk Prediction
We train and validate a semi-supervised, multi-task LSTM on 57,675
person-weeks of data from off-the-shelf wearable heart rate sensors, showing
high accuracy at detecting multiple medical conditions, including diabetes
(0.8451), high cholesterol (0.7441), high blood pressure (0.8086), and sleep
apnea (0.8298). We compare two semi-supervised train- ing methods,
semi-supervised sequence learning and heuristic pretraining, and show they
outperform hand-engineered biomarkers from the medical literature. We believe
our work suggests a new approach to patient risk stratification based on
cardiovascular risk scores derived from popular wearables such as Fitbit, Apple
Watch, or Android Wear