Tilman Plehn

About Tilman Plehn

Tilman Plehn, With an exceptional h-index of 88 and a recent h-index of 51 (since 2020), a distinguished researcher at Ruprecht-Karls-Universität Heidelberg, specializes in the field of LHC Physics, Higgs Physics, Dark Matter, Machine Learning.

His recent articles reflect a diverse array of research interests and contributions to the field:

How to understand limitations of generative networks

The Landscape of Unfolding with Machine Learning

Optimal, fast, and robust inference of reionization-era cosmology with the 21cmPIE-INN

PINNferring the Hubble Function with Uncertainties

New Theory Paradigms at the LHC

A Global View of the EDM Landscape

To profile or to marginalize-A SMEFT case study

Back to the formula-LHC edition

Tilman Plehn Information

University

Ruprecht-Karls-Universität Heidelberg

Position

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Citations(all)

32102

Citations(since 2020)

11562

Cited By

25610

hIndex(all)

88

hIndex(since 2020)

51

i10Index(all)

205

i10Index(since 2020)

144

Email

University Profile Page

Ruprecht-Karls-Universität Heidelberg

Tilman Plehn Skills & Research Interests

LHC Physics

Higgs Physics

Dark Matter

Machine Learning

Top articles of Tilman Plehn

Title

Journal

Author(s)

Publication Date

How to understand limitations of generative networks

SciPost Physics

Ranit Das

Luigi Favaro

Theo Heimel

Claudius Krause

Tilman Plehn

...

2024/1/25

The Landscape of Unfolding with Machine Learning

arXiv preprint arXiv:2404.18807

Nathan Huetsch

Javier Mariño Villadamigo

Alexander Shmakov

Sascha Diefenbacher

Vinicius Mikuni

...

2024/4/29

Optimal, fast, and robust inference of reionization-era cosmology with the 21cmPIE-INN

arXiv preprint arXiv:2401.04174

Benedikt Schosser

Caroline Heneka

Tilman Plehn

2024/1/8

PINNferring the Hubble Function with Uncertainties

arXiv preprint arXiv:2403.13899

Lennart Röver

Björn Malte Schäfer

Tilman Plehn

2024/3/20

New Theory Paradigms at the LHC

Margarete Mühlleitner

Tilman Plehn

2024

A Global View of the EDM Landscape

arXiv preprint arXiv:2403.02052

Skyler Degenkolb

Nina Elmer

Tanmoy Modak

Margarete Mühlleitner

Tilman Plehn

2024/3/4

To profile or to marginalize-A SMEFT case study

SciPost Physics

Ilaria Brivio

Sebastian Bruggisser

Nina Elmer

Emma Geoffray

Michel Luchmann

...

2024/1/29

Back to the formula-LHC edition

SciPost Physics

Anja Butter

Tilman Plehn

Nathalie Soybelman

Johann Brehmer

2024/1/29

What's anomalous in LHC jets?

SciPost Physics

Thorsten Buss

Barry M Dillon

Thorben Finke

Michael Krämer

Alessandro Morandini

...

2023/10/17

Performance versus resilience in modern quark-gluon tagging

SciPost Physics Core

Anja Butter

Barry M Dillon

Tilman Plehn

Lorenz Vogel

2023/12/12

Returning CP-Observables to The Frames They Belong

arXiv preprint arXiv:2308.00027

Jona Ackerschott

Rahool Kumar Barman

Dorival Gonçalves

Theo Heimel

Tilman Plehn

2023/7/31

Generative networks for precision enthusiasts

SciPost Physics

Anja Butter

Theo Heimel

Sander Hummerich

Tobias Krebs

Tilman Plehn

...

2023/4/20

Semi-visible jets, energy-based models, and self-supervision

arXiv e-prints

Luigi Favaro

Michael Krämer

Tanmoy Modak

Tilman Plehn

Jan Rüschkamp

2023/12

Precision-Machine Learning for the Matrix Element Method

arXiv preprint arXiv:2310.07752

Theo Heimel

Nathan Huetsch

Ramon Winterhalder

Tilman Plehn

Anja Butter

2023/10/11

Statistical patterns of theory uncertainties

SciPost Physics Core

Aishik Ghosh

Benjamin Nachman

Tilman Plehn

Lily Shire

Tim MP Tait

...

2023/6/20

The forward physics facility at the high-luminosity LHC

Journal of Physics G: Nuclear and Particle Physics

Jonathan L Feng

Felix Kling

Mary Hall Reno

Juan Rojo

Dennis Soldin

...

2023/1/20

Kicking it Off (-shell) with Direct Diffusion

arXiv preprint arXiv:2311.17175

Anja Butter

Tomas Jezo

Michael Klasen

Mathias Kuschick

Sofia Palacios Schweitzer

...

2023/11/28

MadNIS-Neural multi-channel importance sampling

SciPost Physics

Theo Heimel

Ramon Winterhalder

Anja Butter

Joshua Isaacson

Claudius Krause

...

2023/10/6

Jet Diffusion versus JetGPT--Modern Networks for the LHC

arXiv preprint arXiv:2305.10475

Anja Butter

Nathan Huetsch

Sofia Palacios Schweitzer

Tilman Plehn

Peter Sorrenson

...

2023/5/17

Anomalies, Representations, and Self-Supervision

arXiv preprint arXiv:2301.04660

Barry M Dillon

Luigi Favaro

Friedrich Feiden

Tanmoy Modak

Tilman Plehn

2023/1/11

See List of Professors in Tilman Plehn University(Ruprecht-Karls-Universität Heidelberg)

Tilman Plehn FAQs

What is Tilman Plehn's h-index at Ruprecht-Karls-Universität Heidelberg?

The h-index of Tilman Plehn has been 51 since 2020 and 88 in total.

What are Tilman Plehn's top articles?

The articles with the titles of

How to understand limitations of generative networks

The Landscape of Unfolding with Machine Learning

Optimal, fast, and robust inference of reionization-era cosmology with the 21cmPIE-INN

PINNferring the Hubble Function with Uncertainties

New Theory Paradigms at the LHC

A Global View of the EDM Landscape

To profile or to marginalize-A SMEFT case study

Back to the formula-LHC edition

...

are the top articles of Tilman Plehn at Ruprecht-Karls-Universität Heidelberg.

What are Tilman Plehn's research interests?

The research interests of Tilman Plehn are: LHC Physics, Higgs Physics, Dark Matter, Machine Learning

What is Tilman Plehn's total number of citations?

Tilman Plehn has 32,102 citations in total.

What are the co-authors of Tilman Plehn?

The co-authors of Tilman Plehn are Kyle Cranmer, Vernon Barger, Tim M.P. Tait, Michael Spannowsky, Graham Kribs, Christoph Englert.

Co-Authors

H-index: 207
Kyle Cranmer

Kyle Cranmer

New York University

H-index: 115
Vernon Barger

Vernon Barger

University of Wisconsin-Madison

H-index: 76
Tim M.P. Tait

Tim M.P. Tait

University of California, Irvine

H-index: 73
Michael Spannowsky

Michael Spannowsky

Durham University

H-index: 55
Graham Kribs

Graham Kribs

University of Oregon

H-index: 52
Christoph Englert

Christoph Englert

University of Glasgow

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