Feature acquisition in predictive modeling is an important task in many practical applications. For example, in patient health prediction, we do not fully observe their personal features and need to dynamically select features to acquire. Our goal is to acquire a small subset of features that maximize prediction performance. Recently, some works reformulated feature acquisition as a Markov decision process and applied reinforcement learning (RL) algorithms, where the reward reflects both prediction performance and feature acquisition cost. However, RL algorithms only use zeroth-order information on the reward, which leads to slow empirical convergence, especially when there are many actions (number of features) to consider. For predictive m...
The selection of features that are relevant for a prediction or classification problem is an importa...
Abstract To date, attribute discretization is typically performed by replacing the original set of c...
In most real-world information processing problems, data is not a free resource. Its acquisition is ...
In many classification tasks training data have missing feature values that can be acquired at a cos...
Most induction algorithms for building predictive models take as input training data in the form of ...
In many applications, like function approximation, pattern recognition, time series prediction, and ...
Feature engineering is a crucial step in the process of predictive modeling. It involves the transfo...
Most induction algorithms for building predictive models take as input training data in the form of ...
Abstract. In most real-world information processing problems, data is not a free resource; its acqui...
Feature selection is an important challenge in machine learning. Unfortunately, most methods for aut...
Unlike unsupervised approaches such as autoencoders that learn to reconstruct their inputs, this pap...
Abstract. The target of machine learning is a predictive model that performs well on unseen data. Of...
Unlike unsupervised approaches such as autoencoders that learn to reconstruct their inputs, this pap...
Selecting a set of features to include in a clinical prediction model is not always a simple task. T...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
The selection of features that are relevant for a prediction or classification problem is an importa...
Abstract To date, attribute discretization is typically performed by replacing the original set of c...
In most real-world information processing problems, data is not a free resource. Its acquisition is ...
In many classification tasks training data have missing feature values that can be acquired at a cos...
Most induction algorithms for building predictive models take as input training data in the form of ...
In many applications, like function approximation, pattern recognition, time series prediction, and ...
Feature engineering is a crucial step in the process of predictive modeling. It involves the transfo...
Most induction algorithms for building predictive models take as input training data in the form of ...
Abstract. In most real-world information processing problems, data is not a free resource; its acqui...
Feature selection is an important challenge in machine learning. Unfortunately, most methods for aut...
Unlike unsupervised approaches such as autoencoders that learn to reconstruct their inputs, this pap...
Abstract. The target of machine learning is a predictive model that performs well on unseen data. Of...
Unlike unsupervised approaches such as autoencoders that learn to reconstruct their inputs, this pap...
Selecting a set of features to include in a clinical prediction model is not always a simple task. T...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
The selection of features that are relevant for a prediction or classification problem is an importa...
Abstract To date, attribute discretization is typically performed by replacing the original set of c...
In most real-world information processing problems, data is not a free resource. Its acquisition is ...