Consensus-Based Modelling using Distributed Feature Construction
Haimonti Dutta, Ashwin Srinivasan

TL;DR
This paper introduces a distributed feature construction approach using ILP and a consensus algorithm, enabling scalable relational feature discovery for improved predictive modeling.
Contribution
It proposes a novel distributed framework with consensus-based learning for scalable ILP-driven feature construction in relational models.
Findings
Distributed ILP feature construction converges to a consensus model.
The best node achieves accuracy comparable to centralized methods.
The approach scales better for large feature spaces.
Abstract
A particularly successful role for Inductive Logic Programming (ILP) is as a tool for discovering useful relational features for subsequent use in a predictive model. Conceptually, the case for using ILP to construct relational features rests on treating these features as functions, the automated discovery of which necessarily requires some form of first-order learning. Practically, there are now several reports in the literature that suggest that augmenting any existing features with ILP-discovered relational features can substantially improve the predictive power of a model. While the approach is straightforward enough, much still needs to be done to scale it up to explore more fully the space of possible features that can be constructed by an ILP system. This is in principle, infinite and in practice, extremely large. Applications have been confined to heuristic or random selections…
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Taxonomy
TopicsData Mining Algorithms and Applications · Bayesian Modeling and Causal Inference · Logic, Reasoning, and Knowledge
