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Automated Evolutionary Approach for the Design of Composite Machine
  Learning Pipelines

Automated Evolutionary Approach for the Design of Composite Machine Learning Pipelines

26 June 2021
Nikolay O. Nikitin
Pavel Vychuzhanin
M. Sarafanov
Iana S. Polonskaia
I. Revin
Irina V. Barabanova
G. Maximov
Anna V. Kaluzhnaya
A. Boukhanovsky
ArXivPDFHTML

Papers citing "Automated Evolutionary Approach for the Design of Composite Machine Learning Pipelines"

16 / 16 papers shown
Title
SPIO: Ensemble and Selective Strategies via LLM-Based Multi-Agent Planning in Automated Data Science
SPIO: Ensemble and Selective Strategies via LLM-Based Multi-Agent Planning in Automated Data Science
Wonduk Seo
Juhyeon Lee
Yi Bu
48
0
0
30 Mar 2025
Online Meta-learning for AutoML in Real-time (OnMAR)
Online Meta-learning for AutoML in Real-time (OnMAR)
Mia Gerber
Anna Sergeevna Bosman
J. D. Villiers
OffRL
38
0
0
27 Feb 2025
Large Language Models for Constructing and Optimizing Machine Learning
  Workflows: A Survey
Large Language Models for Constructing and Optimizing Machine Learning Workflows: A Survey
Yang Gu
Hengyu You
Jian Cao
Muran Yu
Haoran Fan
Shiyou Qian
LM&MA
AI4CE
46
3
0
11 Nov 2024
Automated data processing and feature engineering for deep learning and
  big data applications: a survey
Automated data processing and feature engineering for deep learning and big data applications: a survey
A. Mumuni
F. Mumuni
TPM
40
48
0
18 Mar 2024
Data augmentation with automated machine learning: approaches and performance comparison with classical data augmentation methods
Data augmentation with automated machine learning: approaches and performance comparison with classical data augmentation methods
A. Mumuni
F. Mumuni
65
5
0
13 Mar 2024
Forecasting Imports in OECD Member Countries and Iran by Using Neural
  Network Algorithms of LSTM
Forecasting Imports in OECD Member Countries and Iran by Using Neural Network Algorithms of LSTM
S. Khajoui
Saeid Dehyadegari
S. A. Jalaee
9
0
0
06 Jan 2024
Integration Of Evolutionary Automated Machine Learning With Structural
  Sensitivity Analysis For Composite Pipelines
Integration Of Evolutionary Automated Machine Learning With Structural Sensitivity Analysis For Composite Pipelines
Nikolay O. Nikitin
Maiia Pinchuk
Valerii Pokrovskii
Peter Shevchenko
Andrey Getmanov
Yaroslav Aksenkin
I. Revin
Andrey Stebenkov
Ekaterina Poslavskaya
Anna V. Kaluzhnaya
26
0
0
22 Dec 2023
A knowledge-driven AutoML architecture
A knowledge-driven AutoML architecture
C. Cofaru
Johan Loeckx
23
0
0
28 Nov 2023
Tracing and Visualizing Human-ML/AI Collaborative Processes through
  Artifacts of Data Work
Tracing and Visualizing Human-ML/AI Collaborative Processes through Artifacts of Data Work
Jennifer Rogers
Anamaria Crisan
16
7
0
05 Apr 2023
Challenges and Practices of Deep Learning Model Reengineering: A Case
  Study on Computer Vision
Challenges and Practices of Deep Learning Model Reengineering: A Case Study on Computer Vision
Wenxin Jiang
Vishnu Banna
Naveen Vivek
Abhinav Goel
Nicholas Synovic
George K. Thiruvathukal
James C. Davis
VLM
37
18
0
13 Mar 2023
Improvement of Computational Performance of Evolutionary AutoML in a
  Heterogeneous Environment
Improvement of Computational Performance of Evolutionary AutoML in a Heterogeneous Environment
Nikolay O. Nikitin
Sergey Teryoshkin
Valerii Pokrovskii
Sergey Pakulin
D. Nasonov
26
1
0
12 Jan 2023
On the balance between the training time and interpretability of neural
  ODE for time series modelling
On the balance between the training time and interpretability of neural ODE for time series modelling
Yakov Golovanev
A. Hvatov
AI4TS
17
1
0
07 Jun 2022
Hybrid and Automated Machine Learning Approaches for Oil Fields
  Development: the Case Study of Volve Field, North Sea
Hybrid and Automated Machine Learning Approaches for Oil Fields Development: the Case Study of Volve Field, North Sea
Nikolay O. Nikitin
I. Revin
A. Hvatov
Pavel Vychuzhanin
Anna V. Kaluzhnaya
11
19
0
03 Mar 2021
Automated data-driven approach for gap filling in the time series using
  evolutionary learning
Automated data-driven approach for gap filling in the time series using evolutionary learning
M. Sarafanov
Nikolay O. Nikitin
Anna V. Kaluzhnaya
AI4TS
11
3
0
01 Mar 2021
Whither AutoML? Understanding the Role of Automation in Machine Learning
  Workflows
Whither AutoML? Understanding the Role of Automation in Machine Learning Workflows
Doris Xin
Eva Yiwei Wu
D. Lee
Niloufar Salehi
Aditya G. Parameswaran
50
91
0
13 Jan 2021
AutoGluon-Tabular: Robust and Accurate AutoML for Structured Data
AutoGluon-Tabular: Robust and Accurate AutoML for Structured Data
Nick Erickson
Jonas W. Mueller
Alexander Shirkov
Hang Zhang
Pedro Larroy
Mu Li
Alex Smola
LMTD
97
607
0
13 Mar 2020
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