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Dive into the research topics where Eric M. Metodiev is active.

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Featured researches published by Eric M. Metodiev.


Journal of High Energy Physics | 2017

Deep learning in color: towards automated quark/gluon jet discrimination

Patrick T. Komiske; Eric M. Metodiev; Matthew D. Schwartz

A bstractArtificial intelligence offers the potential to automate challenging data-processing tasks in collider physics. To establish its prospects, we explore to what extent deep learning with convolutional neural networks can discriminate quark and gluon jets better than observables designed by physicists. Our approach builds upon the paradigm that a jet can be treated as an image, with intensity given by the local calorimeter deposits. We supplement this construction by adding color to the images, with red, green and blue intensities given by the transverse momentum in charged particles, transverse momentum in neutral particles, and pixel-level charged particle counts. Overall, the deep networks match or outperform traditional jet variables. We also find that, while various simulations produce different quark and gluon jets, the neural networks are surprisingly insensitive to these differences, similar to traditional observables. This suggests that the networks can extract robust physical information from imperfect simulations.


Journal of High Energy Physics | 2017

Classification without labels: Learning from mixed samples in high energy physics

Eric M. Metodiev; Benjamin Philip Nachman; Jesse Thaler

A bstractModern machine learning techniques can be used to construct powerful models for difficult collider physics problems. In many applications, however, these models are trained on imperfect simulations due to a lack of truth-level information in the data, which risks the model learning artifacts of the simulation. In this paper, we introduce the paradigm of classification without labels (CWoLa) in which a classifier is trained to distinguish statistical mixtures of classes, which are common in collider physics. Crucially, neither individual labels nor class proportions are required, yet we prove that the optimal classifier in the CWoLa paradigm is also the optimal classifier in the traditional fully-supervised case where all label information is available. After demonstrating the power of this method in an analytical toy example, we consider a realistic benchmark for collider physics: distinguishing quark- versus gluon-initiated jets using mixed quark/gluon training samples. More generally, CWoLa can be applied to any classification problem where labels or class proportions are unknown or simulations are unreliable, but statistical mixtures of the classes are available.


Journal of High Energy Physics | 2017

Pileup Mitigation with Machine Learning (PUMML)

Patrick T. Komiske; Eric M. Metodiev; Benjamin Philip Nachman; Matthew D. Schwartz

A bstractPileup involves the contamination of the energy distribution arising from the primary collision of interest (leading vertex) by radiation from soft collisions (pileup). We develop a new technique for removing this contamination using machine learning and convolutional neural networks. The network takes as input the energy distribution of charged leading vertex particles, charged pileup particles, and all neutral particles and outputs the energy distribution of particles coming from leading vertex alone. The PUMML algorithm performs remarkably well at eliminating pileup distortion on a wide range of simple and complex jet observables. We test the robustness of the algorithm in a number of ways and discuss how the network can be trained directly on data.


Journal of High Energy Physics | 2018

Energy flow polynomials: a complete linear basis for jet substructure

Patrick T. Komiske; Eric M. Metodiev; Jesse Thaler

A bstractWe introduce the energy flow polynomials: a complete set of jet substructure observables which form a discrete linear basis for all infrared- and collinear-safe observables. Energy flow polynomials are multiparticle energy correlators with specific angular structures that are a direct consequence of infrared and collinear safety. We establish a powerful graph-theoretic representation of the energy flow polynomials which allows us to design efficient algorithms for their computation. Many common jet observables are exact linear combinations of energy flow polynomials, and we demonstrate the linear spanning nature of the energy flow basis by performing regression for several common jet observables. Using linear classification with energy flow polynomials, we achieve excellent performance on three representative jet tagging problems: quark/gluon discrimination, boosted W tagging, and boosted top tagging. The energy flow basis provides a systematic framework for complete investigations of jet substructure using linear methods.


Journal of Physics: Conference Series | 2018

Learning to Remove Pileup at the LHC with Jet Images

Patrick T. Komiske; Eric M. Metodiev; Benjamin Philip Nachman; Matthew D. Schwartz

We present the Pileup Mitgation with Machine Learning (PUMML) algorithm for pileup removal at the Large Hadron Collider (LHC) based on the jet images framework using state-of-the-art machine learning techniques. We demonstrate that our algorithm outperforms existing methods on a wide range of jet observables up to pileup levels of 140 collisions per bunch crossing. We also investigate what aspects of the event our algorithms are utilizing by understanding the learned parameters of a simplified version of the model.


arXiv: High Energy Physics - Phenomenology | 2018

Learning to Classify from Impure Samples

Patrick T. Komiske; Eric M. Metodiev; Matthew D. Schwartz; Benjamin Philip Nachman


Physical Review D | 2018

Learning to classify from impure samples with high-dimensional data

Patrick T. Komiske; Eric M. Metodiev; Benjamin Philip Nachman; Matthew D. Schwartz


arXiv: High Energy Physics - Phenomenology | 2018

On the Topic of Jets

Eric M. Metodiev; Jesse Thaler


arXiv: High Energy Physics - Phenomenology | 2018

An operational definition of quark and gluon jets

Patrick T. Komiske; Eric M. Metodiev; Jesse Thaler


arXiv: High Energy Physics - Phenomenology | 2018

Energy Flow Networks: Deep Sets for Particle Jets

Patrick T. Komiske; Eric M. Metodiev; Jesse Thaler

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Patrick T. Komiske

Massachusetts Institute of Technology

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Jesse Thaler

Massachusetts Institute of Technology

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Benjamin Philip Nachman

Lawrence Berkeley National Laboratory

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