SOTAVerified

AutoML

Automated Machine Learning (AutoML) is a general concept which covers diverse techniques for automated model learning including automatic data preprocessing, architecture search, and model selection. Source: Evaluating recommender systems for AI-driven data science (1905.09205)

Source: CHOPT : Automated Hyperparameter Optimization Framework for Cloud-Based Machine Learning Platforms

Papers

Showing 551600 of 641 papers

TitleStatusHype
Trust in AutoML: Exploring Information Needs for Establishing Trust in Automated Machine Learning Systems0
Stepwise Model Selection for Sequence Prediction via Deep Kernel Learning0
Searching to Exploit Memorization Effect in Learning with Noisy Labels0
Evolving Machine Learning Algorithms From Scratch0
AutoML: Exploration v.s. ExploitationCode0
AutoAIViz: Opening the Blackbox of Automated Artificial Intelligence with Conditional Parallel Coordinates0
Fair DARTS: Eliminating Unfair Advantages in Differentiable Architecture SearchCode0
Graph Pruning for Model Compression0
Towards Human Centered AutoML0
Searching to Exploit Memorization Effect in Learning from Corrupted LabelsCode0
DeepLine: AutoML Tool for Pipelines Generation using Deep Reinforcement Learning and Hierarchical Actions Filtering0
AutoML using Metadata Language EmbeddingsCode0
Analysis of an Automated Machine Learning Approach in Brain Predictive Modelling: A data-driven approach to Predict Brain Age from Cortical Anatomical Measures0
Improved Training Speed, Accuracy, and Data Utilization via Loss Function Optimization0
Neural Architecture Search for Class-incremental Learning0
AutoML for Contextual Bandits0
Human-AI Collaboration in Data Science: Exploring Data Scientists' Perceptions of Automated AI0
Neuraxle - A Python Framework for Neat Machine Learning PipelinesCode0
Multi-Objective Automatic Machine Learning with AutoxgboostMC0
A CNN toolbox for skin cancer classification0
SCARLET-NAS: Bridging the Gap between Stability and Scalability in Weight-sharing Neural Architecture SearchCode0
Towards Automated Machine Learning: Evaluation and Comparison of AutoML Approaches and Tools0
MoGA: Searching Beyond MobileNetV3Code0
Towards AutoML in the presence of Drift: first results0
Techniques for Automated Machine Learning0
Automated Machine Learning in Practice: State of the Art and Recent Results0
ShrinkML: End-to-End ASR Model Compression Using Reinforcement Learning0
Visus: An Interactive System for Automatic Machine Learning Model Building and Curation0
Transfer Learning for Risk Classification of Social Media Posts: Model Evaluation StudyCode0
Encoding high-cardinality string categorical variablesCode0
Single-Path Mobile AutoML: Efficient ConvNet Design and NAS Hyperparameter OptimizationCode0
An Open Source AutoML Benchmark0
AutoML Strategy Based on Grammatical Evolution: A Case Study about Knowledge Discovery from Text0
Two-stage Optimization for Machine Learning WorkflowCode0
Efficient Neural Interaction Function Search for Collaborative FilteringCode0
Meta-learning of textual representationsCode0
Automated Machine Learning: State-of-The-Art and Open ChallengesCode0
Approximation capability of neural networks on spaces of probability measures and tree-structured domains0
Transferable AutoML by Model Sharing Over Grouped Datasets0
Automated Machine Learning with Monte-Carlo Tree SearchCode0
Cascaded Algorithm-Selection and Hyper-Parameter Optimization with Extreme-Region Upper Confidence Bound Bandit0
DDPNAS: Efficient Neural Architecture Search via Dynamic Distribution PruningCode0
Improved Training Speed, Accuracy, and Data Utilization Through Loss Function OptimizationCode0
Automatic Machine Learning by Pipeline Synthesis using Model-Based Reinforcement Learning and a Grammar0
The Machine Learning Bazaar: Harnessing the ML Ecosystem for Effective System DevelopmentCode0
Analysis of the AutoML Challenge Series 2015–20180
AM-LFS: AutoML for Loss Function SearchCode0
AutoDispNet: Improving Disparity Estimation With AutoMLCode0
An ADMM Based Framework for AutoML Pipeline Configuration0
Approximation capability of neural networks on sets of probability measures and tree-structured data0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1marc.boulleRank (AutoML5)6.4Unverified
2reference_mbRank (AutoML5)5.2Unverified
3postech.mlg_exbrainRank (AutoML5)5.2Unverified
4abhishek4Rank (AutoML5)4.6Unverified
5referenceRank (AutoML5)4.4Unverified
6reference_lsRank (AutoML5)4Unverified
7djajeticRank (AutoML5)3Unverified
8aad_freiburgRank (AutoML5)1.6Unverified
#ModelMetricClaimedVerifiedStatus
1Logistic RegressionAccuracy97.02Unverified
#ModelMetricClaimedVerifiedStatus
1Zero-shot-BERT-SORT1:1 Accuracy55Unverified
#ModelMetricClaimedVerifiedStatus
1Logistic Regressionaccuracy98.33Unverified