ResearchTrend.AI
  • Papers
  • Communities
  • Events
  • Blog
  • Pricing
Papers
Communities
Social Events
Terms and Conditions
Pricing
Parameter LabParameter LabTwitterGitHubLinkedInBlueskyYoutube

© 2025 ResearchTrend.AI, All rights reserved.

  1. Home
  2. Papers
  3. 2004.07049
  4. Cited By
Boosting algorithms in energy research: A systematic review
v1v2 (latest)

Boosting algorithms in energy research: A systematic review

1 April 2020
Hristos Tyralis
Georgia Papacharalampous
ArXiv (abs)PDFHTML

Papers citing "Boosting algorithms in energy research: A systematic review"

13 / 13 papers shown
Title
Ensemble learning for blending gridded satellite and gauge-measured
  precipitation data
Ensemble learning for blending gridded satellite and gauge-measured precipitation data
Georgia Papacharalampous
Hristos Tyralis
N. Doulamis
Anastasios Doulamis
91
8
0
09 Jul 2023
Deep Huber quantile regression networks
Deep Huber quantile regression networks
Hristos Tyralis
Georgia Papacharalampous
N. Dogulu
Kwok-Pan Chun
UQCV
141
2
0
17 Jun 2023
Merging satellite and gauge-measured precipitation using LightGBM with
  an emphasis on extreme quantiles
Merging satellite and gauge-measured precipitation using LightGBM with an emphasis on extreme quantiles
Hristos Tyralis
Georgia Papacharalampous
N. Doulamis
Anastasios Doulamis
70
8
0
02 Feb 2023
A Dynamic Feedforward Control Strategy for Energy-efficient Building
  System Operation
A Dynamic Feedforward Control Strategy for Energy-efficient Building System Operation
Xia Chen
Xiaoye Cai
A. Kümpel
D. Müller
Philipp Geyer
AI4CE
39
0
0
23 Jan 2023
Comparison of tree-based ensemble algorithms for merging satellite and
  earth-observed precipitation data at the daily time scale
Comparison of tree-based ensemble algorithms for merging satellite and earth-observed precipitation data at the daily time scale
Georgia Papacharalampous
Hristos Tyralis
Anastasios Doulamis
N. Doulamis
104
11
0
31 Dec 2022
Comparison of machine learning algorithms for merging gridded satellite
  and earth-observed precipitation data
Comparison of machine learning algorithms for merging gridded satellite and earth-observed precipitation data
Georgia Papacharalampous
Hristos Tyralis
Anastasios Doulamis
N. Doulamis
68
15
0
17 Dec 2022
A review of predictive uncertainty estimation with machine learning
A review of predictive uncertainty estimation with machine learning
Hristos Tyralis
Georgia Papacharalampous
UDUQCV
222
47
0
17 Sep 2022
A review of machine learning concepts and methods for addressing
  challenges in probabilistic hydrological post-processing and forecasting
A review of machine learning concepts and methods for addressing challenges in probabilistic hydrological post-processing and forecasting
Georgia Papacharalampous
Hristos Tyralis
AI4CE
84
28
0
17 Jun 2022
Time series features for supporting hydrometeorological explorations and
  predictions in ungauged locations using large datasets
Time series features for supporting hydrometeorological explorations and predictions in ungauged locations using large datasets
Georgia Papacharalampous
Hristos Tyralis
AI4TS
51
10
0
13 Apr 2022
Hydroclimatic time series features at multiple time scales
Hydroclimatic time series features at multiple time scales
Georgia Papacharalampous
Hristos Tyralis
Y. Markonis
M. Hanel
AI4TS
64
3
0
02 Dec 2021
Massive feature extraction for explaining and foretelling hydroclimatic
  time series forecastability at the global scale
Massive feature extraction for explaining and foretelling hydroclimatic time series forecastability at the global scale
Georgia Papacharalampous
Hristos Tyralis
I. Pechlivanidis
S. Grimaldi
E. Volpi
AI4TS
46
12
0
25 Jul 2021
Probabilistic water demand forecasting using quantile regression
  algorithms
Probabilistic water demand forecasting using quantile regression algorithms
Georgia Papacharalampous
A. Langousis
42
7
0
16 Apr 2021
Proximal boosting: aggregating weak learners to minimize
  non-differentiable losses
Proximal boosting: aggregating weak learners to minimize non-differentiable losses
Erwan Fouillen
C. Boyer
Maxime Sangnier
FedML
70
2
0
29 Aug 2018
1