Sentence-level relation extraction (RE) has a highly imbalanced data distribution that about 80% of data are labeled as negative, i.e., no relation; and there exist minority classes (MC) among positive labels; furthermore, some of MC instances have an incorrect label. Due to those challenges, i.e., label noise and low source availability, most of the models fail to learn MC and get zero or very low F1 scores on MCs. Previous studies, however, have rather focused on micro F1 scores and MCs have not been addressed adequately. To tackle high mis-classification errors for MCs, we introduce (1) a minority class attention module (MCAM), and (2) effective augmentation methods specialized in RE. MCAM calculates the confidence scores on MC instances...
Feature selection for supervised learning concerns the problem of selecting a number of important fe...
Distant supervision (DS) has been widely used for relation extraction (RE), which automatically gene...
Abstract. Many real world data mining applications involve learning from imbalanced data sets, where...
TACRED is one of the largest and most widely used sentence-level relation extraction datasets. Propo...
Sentence-level relation extraction (RE) aims at identifying the relationship between two entities in...
Document-level relation extraction (RE) aims at extracting relations among entities expressed across...
[EN] We address class imbalance problems. These are classification problems where the target variabl...
Previous work for relation extraction from free text is mainly based on intra-sentence information. ...
Distant supervision is a scheme to generate noisy training data for relation extraction by aligning ...
Distant supervision for relation extraction (DSRE) automatically acquires large-scale annotated data...
This paper addresses the problem of handling skewed class distributions within the case-based learni...
International audienceUnsupervised relation extraction aims at extracting relations between entities...
Slot Filling, a subtask of Relation Extraction, represents a key aspect for building structured know...
Neural models for distantly supervised relation extraction (DS-RE) encode each sentence in an entity...
Distant supervision (DS) automatically annotates free text with relation mentions from existing know...
Feature selection for supervised learning concerns the problem of selecting a number of important fe...
Distant supervision (DS) has been widely used for relation extraction (RE), which automatically gene...
Abstract. Many real world data mining applications involve learning from imbalanced data sets, where...
TACRED is one of the largest and most widely used sentence-level relation extraction datasets. Propo...
Sentence-level relation extraction (RE) aims at identifying the relationship between two entities in...
Document-level relation extraction (RE) aims at extracting relations among entities expressed across...
[EN] We address class imbalance problems. These are classification problems where the target variabl...
Previous work for relation extraction from free text is mainly based on intra-sentence information. ...
Distant supervision is a scheme to generate noisy training data for relation extraction by aligning ...
Distant supervision for relation extraction (DSRE) automatically acquires large-scale annotated data...
This paper addresses the problem of handling skewed class distributions within the case-based learni...
International audienceUnsupervised relation extraction aims at extracting relations between entities...
Slot Filling, a subtask of Relation Extraction, represents a key aspect for building structured know...
Neural models for distantly supervised relation extraction (DS-RE) encode each sentence in an entity...
Distant supervision (DS) automatically annotates free text with relation mentions from existing know...
Feature selection for supervised learning concerns the problem of selecting a number of important fe...
Distant supervision (DS) has been widely used for relation extraction (RE), which automatically gene...
Abstract. Many real world data mining applications involve learning from imbalanced data sets, where...