Keeping the performance of language technologies optimal as time passes is of great practical interest. We study temporal effects on model performance on downstream language tasks, establishing a nuanced terminology for such discussion and identifying factors essential to conduct a robust study. We present experiments for several tasks in English where the label correctness is not dependent on time and demonstrate the importance of distinguishing between temporal model deterioration and temporal domain adaptation for systems using pre-trained representations. We find that depending on the task, temporal model deterioration is not necessarily a concern. Temporal domain adaptation however is beneficial in all cases, with better performance fo...
When a neural language model (LM) is adapted to perform a new task, what aspects of the task predict...
Language evolves over time in many ways relevant to natural language processing tasks. For example, ...
In recent years, language models (LMs) have made remarkable progress in advancing the field of natu...
When an NLP model is trained on text data from one time period and tested or deployed on data from a...
Pretrained language models (PTLMs) are typically learned over a large, static corpus and further fin...
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, ...
Pretrained language models based on the transformer architecture have shown great success in NLP. Te...
Language usage can change across periods of time, but document classifiers models are usually traine...
We present a targeted, scaled-up comparison of incremental processing in humans and neural language ...
Time is an important aspect of text documents, which has been widely exploited in natural language p...
As large language models such as BERT are becoming increasingly popular in Digital Humanities (DH), ...
Recent emphasis on language knowledge as an emergent dynamic system has drawn considerable attention...
The use of abusive language online has become an increasingly pervasive problem that damages both in...
Recent advances in NLP are brought by a range of large-scale pretrained language models (PLMs). Thes...
When a neural language model (LM) is adapted to perform a new task, what aspects of the task predict...
Language evolves over time in many ways relevant to natural language processing tasks. For example, ...
In recent years, language models (LMs) have made remarkable progress in advancing the field of natu...
When an NLP model is trained on text data from one time period and tested or deployed on data from a...
Pretrained language models (PTLMs) are typically learned over a large, static corpus and further fin...
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, ...
Pretrained language models based on the transformer architecture have shown great success in NLP. Te...
Language usage can change across periods of time, but document classifiers models are usually traine...
We present a targeted, scaled-up comparison of incremental processing in humans and neural language ...
Time is an important aspect of text documents, which has been widely exploited in natural language p...
As large language models such as BERT are becoming increasingly popular in Digital Humanities (DH), ...
Recent emphasis on language knowledge as an emergent dynamic system has drawn considerable attention...
The use of abusive language online has become an increasingly pervasive problem that damages both in...
Recent advances in NLP are brought by a range of large-scale pretrained language models (PLMs). Thes...
When a neural language model (LM) is adapted to perform a new task, what aspects of the task predict...
Language evolves over time in many ways relevant to natural language processing tasks. For example, ...
In recent years, language models (LMs) have made remarkable progress in advancing the field of natu...