Efficient Aspect-Based Summarization of Climate Change Reports with Small Language Models
Proceedings of the Third Workshop on NLP for Positive Impact (2024) 123-139 The use of Natural Language Processing (NLP) for helping decision-makers with Climate Change action has recently been highlighted as a use case aligning with a broader drive towards NLP technologies for social good. In this...
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Zusammenfassung: | Proceedings of the Third Workshop on NLP for Positive Impact
(2024) 123-139 The use of Natural Language Processing (NLP) for helping decision-makers with
Climate Change action has recently been highlighted as a use case aligning with
a broader drive towards NLP technologies for social good. In this context,
Aspect-Based Summarization (ABS) systems that extract and summarize relevant
information are particularly useful as they provide stakeholders with a
convenient way of finding relevant information in expert-curated reports. In
this work, we release a new dataset for ABS of Climate Change reports and we
employ different Large Language Models (LLMs) and so-called Small Language
Models (SLMs) to tackle this problem in an unsupervised way. Considering the
problem at hand, we also show how SLMs are not significantly worse for the
problem while leading to reduced carbon footprint; we do so by applying for the
first time an existing framework considering both energy efficiency and task
performance to the evaluation of zero-shot generative models for ABS. Overall,
our results show that modern language models, both big and small, can
effectively tackle ABS for Climate Change reports but more research is needed
when we frame the problem as a Retrieval Augmented Generation (RAG) problem and
our work and dataset will help foster efforts in this direction. |
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DOI: | 10.48550/arxiv.2411.14272 |