arXiv Open Access 2023

Simple is Better and Large is Not Enough: Towards Ensembling of Foundational Language Models

Nancy Tyagi Aidin Shiri Surjodeep Sarkar Abhishek Kumar Umrawal Manas Gaur
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Abstrak

Foundational Language Models (FLMs) have advanced natural language processing (NLP) research. Current researchers are developing larger FLMs (e.g., XLNet, T5) to enable contextualized language representation, classification, and generation. While developing larger FLMs has been of significant advantage, it is also a liability concerning hallucination and predictive uncertainty. Fundamentally, larger FLMs are built on the same foundations as smaller FLMs (e.g., BERT); hence, one must recognize the potential of smaller FLMs which can be realized through an ensemble. In the current research, we perform a reality check on FLMs and their ensemble on benchmark and real-world datasets. We hypothesize that the ensembling of FLMs can influence the individualistic attention of FLMs and unravel the strength of coordination and cooperation of different FLMs. We utilize BERT and define three other ensemble techniques: {Shallow, Semi, and Deep}, wherein the Deep-Ensemble introduces a knowledge-guided reinforcement learning approach. We discovered that the suggested Deep-Ensemble BERT outperforms its large variation i.e. BERTlarge, by a factor of many times using datasets that show the usefulness of NLP in sensitive fields, such as mental health.

Topik & Kata Kunci

Penulis (5)

N

Nancy Tyagi

A

Aidin Shiri

S

Surjodeep Sarkar

A

Abhishek Kumar Umrawal

M

Manas Gaur

Format Sitasi

Tyagi, N., Shiri, A., Sarkar, S., Umrawal, A.K., Gaur, M. (2023). Simple is Better and Large is Not Enough: Towards Ensembling of Foundational Language Models. https://arxiv.org/abs/2308.12272

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Informasi Jurnal
Tahun Terbit
2023
Bahasa
en
Sumber Database
arXiv
Akses
Open Access ✓