A network PageRank analysis of the environmental effects of foreign direct investment under renewable energy transition
再生可能エネルギー移行下における外国直接投資の環境効果に関するネットワークPageRank分析 (AI 翻訳)
Sakine Owjimehr, Ali AbediGhahi, Hamideh Yazdanpanah
🤖 gxceed AI 要約
日本語
本研究は、外国直接投資(FDI)の環境効果を、FDIネットワーク上のPageRank指標と再生可能エネルギー移行の閾値効果に着目して分析した。126カ国の2009-2022年のデータを用いた動的パネル閾値モデルの結果、再生可能エネルギーシェアが高い場合、FDIネットワークでの影響力が高い国では汚染ハロー仮説が支持される一方、従来のFDI流入量に基づくモデルでは汚染ハイブン仮説が支持された。政策立案者はFDIの量的管理に加え、再生可能エネルギー拡大を推進すべきである。
English
This study analyzes the environmental effects of FDI using a network PageRank indicator and renewable energy transition as a threshold. Using a dynamic panel threshold model for 126 countries (2009-2022), it finds that at high renewable energy shares, countries with high FDI network influence support the pollution halo hypothesis, while conventional FDI inflow models support the pollution haven hypothesis. Policymakers should promote renewable energy expansion to mitigate negative FDI impacts.
Unofficial AI-generated summary based on the public title and abstract. Not an official translation.
📝 gxceed 編集解説 — Why this matters
日本のGX文脈において
日本は再生可能エネルギー導入を拡大中であり、FDIの環境効果を評価する際にネットワーク上のポジションと再生可能エネルギー比率を考慮する本分析の視点は、日本の国際投資戦略やエネルギー政策に示唆を与える。特に、日本企業の海外直接投資における環境パフォーマンス評価に活用できる。
In the global GX context
This paper adds to the global debate on FDI and environment by introducing network centrality (PageRank) alongside renewable energy thresholds. For countries advancing renewable energy transition, the pollution halo effect from influential FDI positions offers a new angle for policy design. It is relevant to global climate policy discussions on investment and energy.
👥 読者別の含意
🔬研究者:The novel use of network PageRank and threshold modeling provides a methodological contribution for studying FDI-environment linkages.
🏢実務担当者:Corporations with FDI operations can assess how their investment positions and host country renewable energy levels affect environmental outcomes.
🏛政策担当者:Policymakers should consider both FDI network position and renewable energy share when designing environmental regulations.
📄 Abstract(原文)
The growing importance of environmental sustainability highlights the need to identify factors that exacerbate pollution and ecological degradation. Among these, the environmental impact of foreign direct investment (FDI) remains debated. While the pollution halo hypothesis suggests that FDI can reduce carbon emissions through technology transfer, the pollution haven hypothesis emphasizes its adverse environmental effects. This study advances the debate in three ways. First, the analysis focuses on the FDI network indicator PageRank alongside overall FDI inflows. Second, renewable energy is incorporated as a threshold variable shaping the environmental effects of FDI. Third, the analysis is extended to climate risk as a long-term consequence of carbon emissions. Using a dynamic panel threshold model for 126 countries over the period 2009–2022, the results reveal that when countries occupy more influential positions in the global FDI network (high PageRank), the pollution halo hypothesis is confirmed for both environmental indicators at higher levels of renewable energy transition. In contrast, in the model based on FDI inflows, the pollution haven hypothesis is supported across both regimes, although the magnitude of the adverse environmental effect is smaller in the regime with a higher share of renewable energy. Overall, the findings suggest that strengthening renewable energy transition can mitigate the negative environmental effects of FDI, even when pollution-intensive dynamics dominate under conventional FDI measures. Policymakers are therefore advised to not only manage the volume of FDI inflows and consider the structural position of countries within the global investment network, but also to promote the expansion of renewable energy in the energy mix as a key instrument for improving environmental outcomes.
🔗 Provenance — このレコードを発見したソース
- openalex https://doi.org/10.1007/s43621-026-03945-9first seen 2026-07-17 04:55:16
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