Tabular data is the foundation of the information age and has been extensively studied. Recent studies show that neural-based models are effective in learning contextual representation for tabular data. The learning of an effective contextual representation requires meaningful features and a large amount of data. However, current methods often fail to properly learn a contextual representation from the features without semantic information. In addition, it's intractable to enlarge the training set through mixed tabular datasets due to the difference between datasets. To address these problems, we propose a novel framework PTab, using the Pre-trained language model to model Tabular data. PTab learns a contextual representation of tabular dat...
International audienceWhile deep learning has enabled tremendous progress on text and image datasets...
Recent deep learning models for tabular data currently compete with the traditional ML models based ...
This study evaluates the robustness of two state-of-the-art deep contextual language representations...
Tabular data -- also known as structured data -- is one of the most common data forms in existence, ...
Given the ubiquitous use of tabular data in industries and the growing concerns in data privacy and ...
Heterogeneous tabular data are the most commonly used form of data and are essential for numerous cr...
Supervised deep learning is most commonly applied to difficult problems defined on large and often e...
We propose a novel high-performance and interpretable canonical deep tabular data learning architect...
Most recently, there has been significant interest in learning contextual representations for variou...
The usefulness of tabular data such as web tables critically depends on understanding their semantic...
Creating challenging tabular inference data is essential for learning complex reasoning. Prior work ...
Tabular data are ubiquitous in real world applications. Although many commonly-used neural component...
While deep learning has enabled tremendous progress on text and image datasets, its superiority on t...
Despite recent advancements in tabular language model research, real-world applications are still ch...
Over the last decade, deep neural networks have enabled remarkable technological advancements, poten...
International audienceWhile deep learning has enabled tremendous progress on text and image datasets...
Recent deep learning models for tabular data currently compete with the traditional ML models based ...
This study evaluates the robustness of two state-of-the-art deep contextual language representations...
Tabular data -- also known as structured data -- is one of the most common data forms in existence, ...
Given the ubiquitous use of tabular data in industries and the growing concerns in data privacy and ...
Heterogeneous tabular data are the most commonly used form of data and are essential for numerous cr...
Supervised deep learning is most commonly applied to difficult problems defined on large and often e...
We propose a novel high-performance and interpretable canonical deep tabular data learning architect...
Most recently, there has been significant interest in learning contextual representations for variou...
The usefulness of tabular data such as web tables critically depends on understanding their semantic...
Creating challenging tabular inference data is essential for learning complex reasoning. Prior work ...
Tabular data are ubiquitous in real world applications. Although many commonly-used neural component...
While deep learning has enabled tremendous progress on text and image datasets, its superiority on t...
Despite recent advancements in tabular language model research, real-world applications are still ch...
Over the last decade, deep neural networks have enabled remarkable technological advancements, poten...
International audienceWhile deep learning has enabled tremendous progress on text and image datasets...
Recent deep learning models for tabular data currently compete with the traditional ML models based ...
This study evaluates the robustness of two state-of-the-art deep contextual language representations...