The entity typing task aims at predicting one or more words or phrases that describe the type(s) of a specific mention in a sentence. Due to shortcuts from surface patterns to annotated entity labels and biased training, existing entity typing models are subject to the problem of spurious correlations. To comprehensively investigate the faithfulness and reliability of entity typing methods, we first systematically define distinct kinds of model biases that are reflected mainly from spurious correlations. Particularly, we identify six types of existing model biases, including mention-context bias, lexical overlapping bias, named entity bias, pronoun bias, dependency bias, and overgeneralization bias. To mitigate these model biases, we then i...
Linking entities with knowledge base (entity linking) is a key issue in bridging the textual data wi...
Terminologies and other knowledge resources are widely used to aid entity recognition in specialist ...
The reliance of text classifiers on spurious correlations can lead to poor generalization at deploym...
Extracting information about entities remains an important research area. This paper addresses the p...
Across multiple domains from computer vision to speech recognition, machine learning models have bee...
Fine-grained Entity Recognition (FgER) is the task of detecting and classifying entity mentions into...
These are the datasets used in the Entity Type Prediction task for Knowledge Graph Completion. DB...
Neural entity linking models are very powerful, but run the risk of overfitting to the domain they a...
Fine-grained entity typing aims to identify the semantic type of an entity in a particular plain tex...
We investigate a largely unsupervised approach to learning interpretable, domain-specific entity typ...
In this paper, we cast the problem of task underspecification in causal terms, and develop a method ...
Spurious correlations threaten the validity of statistical classifiers. While model accuracy may app...
Named Entity Recognition (NER) is a key NLP task, which is all the more challenging on Web and user-...
In low resource settings, data augmentation strategies are commonly leveraged to improve performance...
State-of-the-art approaches model Entity Matching (EM) as a binary classification problem, where Mac...
Linking entities with knowledge base (entity linking) is a key issue in bridging the textual data wi...
Terminologies and other knowledge resources are widely used to aid entity recognition in specialist ...
The reliance of text classifiers on spurious correlations can lead to poor generalization at deploym...
Extracting information about entities remains an important research area. This paper addresses the p...
Across multiple domains from computer vision to speech recognition, machine learning models have bee...
Fine-grained Entity Recognition (FgER) is the task of detecting and classifying entity mentions into...
These are the datasets used in the Entity Type Prediction task for Knowledge Graph Completion. DB...
Neural entity linking models are very powerful, but run the risk of overfitting to the domain they a...
Fine-grained entity typing aims to identify the semantic type of an entity in a particular plain tex...
We investigate a largely unsupervised approach to learning interpretable, domain-specific entity typ...
In this paper, we cast the problem of task underspecification in causal terms, and develop a method ...
Spurious correlations threaten the validity of statistical classifiers. While model accuracy may app...
Named Entity Recognition (NER) is a key NLP task, which is all the more challenging on Web and user-...
In low resource settings, data augmentation strategies are commonly leveraged to improve performance...
State-of-the-art approaches model Entity Matching (EM) as a binary classification problem, where Mac...
Linking entities with knowledge base (entity linking) is a key issue in bridging the textual data wi...
Terminologies and other knowledge resources are widely used to aid entity recognition in specialist ...
The reliance of text classifiers on spurious correlations can lead to poor generalization at deploym...