Please use this identifier to cite or link to this item: https://research.matf.bg.ac.rs/handle/123456789/1535
Title: Incorporating LLM Priors into Tabular Learners
Authors: Zhu, Max
Stanivuk, Siniša
Petrović, Andrija
Nikolić, Mladen 
Lib, Pietro
Affiliations: Informatics and Computer Science 
Keywords: Large Language Models;Few-shot tabular lerners
Issue Date: 2023
Rank: M33
Related Publication(s): 2nd Table Representation Learning Workshop at NeurlPS
Conference: Table Representation Learning Workshop(2 ; 2023 ; New Orleans)
Abstract: 
We present a method to integrate Large Language Models (LLMs) and traditional tabular data classification techniques, addressing LLMs’ challenges like data serialization sensitivity and biases. We introduce two strategies utilizing LLMs for ranking categorical variables and generating priors on correlations between continuous variables and targets, enhancing performance in few-shot scenarios. We focus on Logistic Regression, introducing MonotonicLR that employs a non-linear monotonic function for mapping ordinals to cardinals while preserving LLM-determined orders. Validation against baseline models reveals the superior performance of our approach, especially in low-data scenarios, while remaining interpretable.
URI: https://research.matf.bg.ac.rs/handle/123456789/1535
Appears in Collections:Research outputs

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