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Dive into the research topics where Alp Kucukelbir is active.

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Featured researches published by Alp Kucukelbir.


Nature Methods | 2014

Quantifying the local resolution of cryo-EM density maps

Alp Kucukelbir; Fred J. Sigworth; Hemant D. Tagare

We propose a definition of local resolution for three-dimensional electron cryo-microscopy (cryo-EM) density maps that uses local sinusoidal features. Our algorithm has no free parameters and is applicable to other imaging modalities, including tomography. By evaluating the local resolution of single-particle reconstructions and subtomogram averages for four example data sets, we report variable resolution across a 4- to 40-Å range.


Journal of the American Statistical Association | 2017

Variational Inference: A Review for Statisticians

David M. Blei; Alp Kucukelbir; Jon McAuliffe

ABSTRACT One of the core problems of modern statistics is to approximate difficult-to-compute probability densities. This problem is especially important in Bayesian statistics, which frames all inference about unknown quantities as a calculation involving the posterior density. In this article, we review variational inference (VI), a method from machine learning that approximates probability densities through optimization. VI has been used in many applications and tends to be faster than classical methods, such as Markov chain Monte Carlo sampling. The idea behind VI is to first posit a family of densities and then to find a member of that family which is close to the target density. Closeness is measured by Kullback–Leibler divergence. We review the ideas behind mean-field variational inference, discuss the special case of VI applied to exponential family models, present a full example with a Bayesian mixture of Gaussians, and derive a variant that uses stochastic optimization to scale up to massive data. We discuss modern research in VI and highlight important open problems. VI is powerful, but it is not yet well understood. Our hope in writing this article is to catalyze statistical research on this class of algorithms. Supplementary materials for this article are available online.


Journal of Structural Biology | 2015

Directly reconstructing principal components of heterogeneous particles from cryo-EM images.

Hemant D. Tagare; Alp Kucukelbir; Fred J. Sigworth; Hong-Wei Wang; Murali Rao

Structural heterogeneity of particles can be investigated by their three-dimensional principal components. This paper addresses the question of whether, and with what algorithm, the three-dimensional principal components can be directly recovered from cryo-EM images. The first part of the paper extends the Fourier slice theorem to covariance functions showing that the three-dimensional covariance, and hence the principal components, of a heterogeneous particle can indeed be recovered from two-dimensional cryo-EM images. The second part of the paper proposes a practical algorithm for reconstructing the principal components directly from cryo-EM images without the intermediate step of calculating covariances. This algorithm is based on maximizing the posterior likelihood using the Expectation-Maximization algorithm. The last part of the paper applies this algorithm to simulated data and to two real cryo-EM data sets: a data set of the 70S ribosome with and without Elongation Factor-G (EF-G), and a data set of the influenza virus RNA dependent RNA Polymerase (RdRP). The first principal component of the 70S ribosome data set reveals the expected conformational changes of the ribosome as the EF-G binds and unbinds. The first principal component of the RdRP data set reveals a conformational change in the two dimers of the RdRP.


Journal of Structural Biology | 2012

A Bayesian Adaptive Basis Algorithm for Single Particle Reconstruction

Alp Kucukelbir; Fred J. Sigworth; Hemant D. Tagare

Traditional single particle reconstruction methods use either the Fourier or the delta function basis to represent the particle density map. This paper proposes a more flexible algorithm that adaptively chooses the basis based on the data. Because the basis adapts to the data, the reconstruction resolution and signal-to-noise ratio (SNR) is improved compared to a reconstruction with a fixed basis. Moreover, the algorithm automatically masks the particle, thereby separating it from the background. This eliminates the need for ad hoc filtering or masking in the refinement loop. The algorithm is formulated in a Bayesian maximum-a-posteriori framework and uses an efficient optimization algorithm for the maximization. Evaluations using simulated and actual cryogenic electron microscopy data show resolution and SNR improvements as well as the effective masking of particle from background.


neural information processing systems | 2015

Automatic variational inference in Stan

Alp Kucukelbir; Rajesh Ranganath; Andrew Gelman; David M. Blei


Journal of Machine Learning Research | 2017

Automatic differentiation variational inference

Alp Kucukelbir; Dustin Tran; Rajesh Ranganath; Andrew Gelman; David M. Blei


arXiv: Computation | 2016

Edward: A library for probabilistic modeling, inference, and criticism.

Dustin Tran; Alp Kucukelbir; Adji B. Dieng; Maja R. Rudolph; Dawen Liang; David M. Blei


uncertainty in artificial intelligence | 2015

Population empirical Bayes

Alp Kucukelbir; David M. Blei


arXiv: Machine Learning | 2016

Reweighted Data for Robust Probabilistic Models.

Yixin Wang; Alp Kucukelbir; David M. Blei


international conference on machine learning | 2017

Robust Probabilistic Modeling with Bayesian Data Reweighting

Yixin Wang; Alp Kucukelbir; David M. Blei

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Daniel Lee

Massachusetts Institute of Technology

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