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Published:2026/1/4 23:19:53

SDGs記事の極性検出、IT企業にビッグチャンス到来💖✨

超要約: SDGs記事のポジ・ネガをAIで判別!IT企業がSDGsビジネスで儲けちゃお💰

✨ ギャル的キラキラポイント ✨ ● SDGs(エスディージーズ)達成を応援する記事が、AIで可視化されちゃうって、未来すぎ💖 ● IT企業がSDGs関連ビジネスで、社会貢献しながらガッポリ稼げるチャンス到来💰✨ ● 企業のSDGsへの本気度を、客観的に評価するツールが生まれるって、すごくない?😳

詳細解説いくよ~!

背景 SDGsって、世界の課題を解決するための目標のこと🌏。それを達成するために、ニュース記事がどんな影響を与えてるか、AIで調べられるようになったんだって!IT企業は、この技術を使って、SDGsビジネスで活躍できるチャンスなの✨

続きは「らくらく論文」アプリで

Polarity Detection of Sustainable Development Goals in News Text

Andrea Cadeddu / Alessandro Chessa / Vincenzo De Leo / Gianni Fenu / Francesco Osborne / Diego Reforgiato Recupero / Angelo Salatino / Luca Secchi

The United Nations' Sustainable Development Goals (SDGs) provide a globally recognised framework for addressing critical societal, environmental, and economic challenges. Recent developments in natural language processing (NLP) and large language models (LLMs) have facilitated the automatic classification of textual data according to their relevance to specific SDGs. Nevertheless, in many applications, it is equally important to determine the directionality of this relevance; that is, to assess whether the described impact is positive, neutral, or negative. To tackle this challenge, we propose the novel task of SDG polarity detection, which assesses whether a text segment indicates progress toward a specific SDG or conveys an intention to achieve such progress. To support research in this area, we introduce SDG-POD, a benchmark dataset designed specifically for this task, combining original and synthetically generated data. We perform a comprehensive evaluation using six state-of-the-art large LLMs, considering both zero-shot and fine-tuned configurations. Our results suggest that the task remains challenging for the current generation of LLMs. Nevertheless, some fine-tuned models, particularly QWQ-32B, achieve good performance, especially on specific Sustainable Development Goals such as SDG-9 (Industry, Innovation and Infrastructure), SDG-12 (Responsible Consumption and Production), and SDG-15 (Life on Land). Furthermore, we demonstrate that augmenting the fine-tuning dataset with synthetically generated examples yields improved model performance on this task. This result highlights the effectiveness of data enrichment techniques in addressing the challenges of this resource-constrained domain. This work advances the methodological toolkit for sustainability monitoring and provides actionable insights into the development of efficient, high-performing polarity detection systems.

cs / cs.CL / cs.AI / cs.DL