When an NLP model is trained on text data from one time period and tested or deployed on data from another, the resulting temporal misalignment can degrade end-task performance. In this work, we establish a suite of eight diverse tasks across different domains (social media, science papers, news, and reviews) and periods of time (spanning five years or more) to quantify the effects of temporal misalignment. Our study is focused on the ubiquitous setting where a pretrained model is optionally adapted through continued domain-specific pretraining, followed by task-specific finetuning. We establish a suite of tasks across multiple domains to study temporal misalignment in modern NLP systems. We find stronger effects of temporal misalignment on...
In the past few decades, with the explosion of information, a large number of computer scientists h...
We seek to improve the robustness and portability of temporal information extraction systems by inco...
Temporal information extraction is and has been a crucial aspect of automatic language understanding...
Keeping the performance of language technologies optimal as time passes is of great practical intere...
Code produced for this paper is available at: https://github.com/Garrafao/TemporalReferencingState-o...
Language use changes over time, and this impacts the effectiveness of NLP systems. This phenomenon i...
Language evolves over time in many ways relevant to natural language processing tasks. For example, ...
Time is an important aspect of text documents, which has been widely exploited in natural language p...
Pretrained language models based on the transformer architecture have shown great success in NLP. Te...
Machine learning (ML) is increasingly useful as data grow in volume and accessibility. ML can perfor...
textThis thesis explores the temporal analysis of text using the implicit temporal cues present in d...
This paper presents a comprehensive set of probing experiments using a multilingual language model, ...
Language evolves over time in many ways relevant to natural language processing tasks. For example, ...
Understanding time is essential to understanding events in the world. Knowing what has happened, wha...
Language evolves over time, and word meaning changes accordingly. This is especially true in social ...
In the past few decades, with the explosion of information, a large number of computer scientists h...
We seek to improve the robustness and portability of temporal information extraction systems by inco...
Temporal information extraction is and has been a crucial aspect of automatic language understanding...
Keeping the performance of language technologies optimal as time passes is of great practical intere...
Code produced for this paper is available at: https://github.com/Garrafao/TemporalReferencingState-o...
Language use changes over time, and this impacts the effectiveness of NLP systems. This phenomenon i...
Language evolves over time in many ways relevant to natural language processing tasks. For example, ...
Time is an important aspect of text documents, which has been widely exploited in natural language p...
Pretrained language models based on the transformer architecture have shown great success in NLP. Te...
Machine learning (ML) is increasingly useful as data grow in volume and accessibility. ML can perfor...
textThis thesis explores the temporal analysis of text using the implicit temporal cues present in d...
This paper presents a comprehensive set of probing experiments using a multilingual language model, ...
Language evolves over time in many ways relevant to natural language processing tasks. For example, ...
Understanding time is essential to understanding events in the world. Knowing what has happened, wha...
Language evolves over time, and word meaning changes accordingly. This is especially true in social ...
In the past few decades, with the explosion of information, a large number of computer scientists h...
We seek to improve the robustness and portability of temporal information extraction systems by inco...
Temporal information extraction is and has been a crucial aspect of automatic language understanding...