SOTAVerified

Feature Engineering

Feature engineering is the process of taking a dataset and constructing explanatory variables — features — that can be used to train a machine learning model for a prediction problem. Often, data is spread across multiple tables and must be gathered into a single table with rows containing the observations and features in the columns.

The traditional approach to feature engineering is to build features one at a time using domain knowledge, a tedious, time-consuming, and error-prone process known as manual feature engineering. The code for manual feature engineering is problem-dependent and must be re-written for each new dataset.

Papers

Showing 15711580 of 1706 papers

TitleStatusHype
Neural Sentiment Classification with User and Product AttentionCode0
Explainable Representation Learning of Small Quantum StatesCode0
Knowledge-aware Graph Neural Networks with Label Smoothness Regularization for Recommender SystemsCode0
CAAT-EHR: Cross-Attentional Autoregressive Transformer for Multimodal Electronic Health Record EmbeddingsCode0
LAC : LSTM AUTOENCODER with Community for Insider Threat DetectionCode0
RELand: Risk Estimation of Landmines via Interpretable Invariant Risk MinimizationCode0
Neural Symbolic Machines: Learning Semantic Parsers on Freebase with Weak SupervisionCode0
Neural Vector Spaces for Unsupervised Information RetrievalCode0
Large Language Models Engineer Too Many Simple Features For Tabular DataCode0
Boosting Relational Deep Learning with Pretrained Tabular ModelsCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1CNN14 gestures accuracy0.98Unverified