Environmental complaint insights through text mining based on the driver, pressure, state, impact, and response (DPSIR) framework: Evidence from an Italian environmental agency

Q1 Social Sciences Regional Sustainability Pub Date : 2023-09-01 DOI:10.1016/j.regsus.2023.08.002
Fabiana Manservisi , Michele Banzi , Tomaso Tonelli , Paolo Veronesi , Susanna Ricci , Damiano Distante , Stefano Faralli , Giuseppe Bortone
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引用次数: 0

Abstract

Individuals, local communities, environmental associations, private organizations, and public representatives and bodies may all be aggrieved by environmental problems concerning poor air quality, illegal waste disposal, water contamination, and general pollution. Environmental complaints represent the expressions of dissatisfaction with these issues. As the time-consuming of managing a large number of complaints, text mining may be useful for automatically extracting information on stakeholder priorities and concerns. The paper used text mining and semantic network analysis to crawl relevant keywords about environmental complaints from two online complaint submission systems: online claim submission system of Regional Agency for Prevention, Environment and Energy (Arpae) (“Contact Arpae”); and Arpae's internal platform for environmental pollution (“Environmental incident reporting portal”) in the Emilia-Romagna Region, Italy. We evaluated the total of 2477 records and classified this information based on the claim topic (air pollution, water pollution, noise pollution, waste, odor, soil, weather-climate, sea-coast, and electromagnetic radiation) and geographical distribution. Then, this paper used natural language processing to extract keywords from the dataset, and classified keywords ranking higher in Term Frequency-Inverse Document Frequency (TF-IDF) based on the driver, pressure, state, impact, and response (DPSIR) framework. This study provided a systemic approach to understanding the interaction between people and environment in different geographical contexts and builds sustainable and healthy communities. The results showed that most complaints are from the public and associated with air pollution and odor. Factories (particularly foundries and ceramic industries) and farms are identified as the drivers of environmental issues. Citizen believed that environmental issues mainly affect human well-being. Moreover, the keywords of “odor”, “report”, “request”, “presence”, “municipality”, and “hours” were the most influential and meaningful concepts, as demonstrated by their high degree and betweenness centrality values. Keywords connecting odor (classified as impacts) and air pollution (classified as state) were the most important (such as “odor-burnt plastic” and “odor-acrid”). Complainants perceived odor annoyance as a primary environmental concern, possibly related to two main drivers: “odor-factory” and “odors-farms”. The proposed approach has several theoretical and practical implications: text mining may quickly and efficiently address citizen needs, providing the basis toward automating (even partially) the complaint process; and the DPSIR framework might support the planning and organization of information and the identification of stakeholder concerns and priorities, as well as metrics and indicators for their assessment. Therefore, integration of the DPSIR framework with the text mining of environmental complaints might generate a comprehensive environmental knowledge base as a prerequisite for a wider exploitation of analysis to support decision-making processes and environmental management activities.

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基于驱动、压力、状态、影响和响应(DPSIR)框架的文本挖掘环境投诉洞察:来自意大利环境机构的证据
个人、当地社区、环境协会、私人组织、公共代表和机构都可能对空气质量差、非法废物处理、水污染和普遍污染等环境问题感到不满。环境投诉代表对这些问题的不满。由于管理大量投诉非常耗时,文本挖掘可能有助于自动提取有关利益相关者优先事项和关注点的信息。本文利用文本挖掘和语义网络分析,从两个在线投诉提交系统中抓取了环境投诉的相关关键词:区域预防、环境和能源署(Arpae)的在线索赔提交系统(“联系Arpae”);以及Arpae在意大利艾米利亚-罗马涅大区的环境污染内部平台(“环境事件报告门户网站”)。我们评估了总共2477份记录,并根据索赔主题(空气污染、水污染、噪音污染、废物、气味、土壤、天气气候、海岸线和电磁辐射)和地理分布对这些信息进行了分类。然后,本文使用自然语言处理从数据集中提取关键词,并基于驱动因素、压力、状态、影响和响应(DPSIR)框架,在术语频率逆文档频率(TF-IDF)中对排名较高的关键词进行分类。这项研究提供了一种系统的方法来理解不同地理背景下人与环境之间的互动,并建立可持续和健康的社区。结果显示,大多数投诉来自公众,与空气污染和气味有关。工厂(尤其是铸造厂和陶瓷工业)和农场被认为是环境问题的驱动因素。公民认为,环境问题主要影响人类福祉。此外,“气味”、“报告”、“请求”、“在场”、“市政当局”和“小时”等关键词是最具影响力和意义的概念,其高度和介数中心值证明了这一点。连接气味(按影响分类)和空气污染(按状态分类)的关键词最为重要(如“气味烧焦的塑料”和“气味刺鼻”)。投诉人认为气味困扰是主要的环境问题,可能与两个主要驱动因素有关:“气味工厂”和“气味农场”。所提出的方法具有几个理论和实践意义:文本挖掘可以快速有效地满足公民的需求,为自动化(甚至部分)投诉过程提供基础;DPSIR框架可以支持信息的规划和组织,以及确定利益攸关方关注的问题和优先事项,以及评估这些问题的指标和指标。因此,将DPSIR框架与环境投诉的文本挖掘相结合,可能会产生一个全面的环境知识库,作为更广泛地利用分析来支持决策过程和环境管理活动的先决条件。
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来源期刊
Regional Sustainability
Regional Sustainability Social Sciences-Urban Studies
CiteScore
3.70
自引率
0.00%
发文量
20
审稿时长
21 weeks
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