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XBNet: An extremely boosted neural network

Tushar K. Sarkar

2022Intelligent Systems with Applications19 citationsDOIOpen Access PDF

Abstract

Neural networks have proved to be very robust at processing unstructured data like images, text, videos, and audio. However, it has been observed that their performance is not up to the mark in tabular data; hence tree-based models are preferred in such scenarios. A popular model for tabular data is boosted trees, a highly efficacious and extensively used machine learning method, and it also provides good interpretability compared to neural networks. In this paper, we describe a novel architecture XBNet (Extremely Boosted Neural Network), which tries to combine tree-based models with neural networks to create a robust architecture trained by using a novel optimization technique, Boosted Gradient Descent for Tabular Data which increases its interpretability and performance.

Topics & Concepts

InterpretabilityComputer scienceArtificial neural networkArtificial intelligenceGradient descentMachine learningTree (set theory)Deep neural networksArchitectureDecision treeNetwork architectureData miningVisual artsMathematical analysisArtComputer securityMathematicsNeural Networks and ApplicationsImage and Signal Denoising MethodsAdvanced Neural Network Applications