19 results on '"Ristea, Alina"'
Search Results
2. Exposure to infection when accessing groceries reveals racial and socioeconomic inequities in navigating the pandemic
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O’Brien, Daniel T., Ristea, Alina, and Dass, Sarina
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- 2023
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3. A multisource database tracking the impact of the COVID-19 pandemic on the communities of Boston, MA, USA
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Ristea, Alina, Tucker, Riley, You, Shunan, Amiri, Mehrnaz, Beauchamp, Nicholas, Castro, Edgar, Chen, Qiliang, Ciomek, Alexandra, Das, Bidisha, de Benedictis-Kessner, Justin, Gibbons, Sage, Hangen, Forrest, Montgomery, Barrett, Papadopoulos, Petros, Robinson, Cordula, Sheini, Saina, Shields, Michael, Shu, Xin, Wood, Michael, Heydari, Babak, and O’Brien, Dan
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- 2022
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4. Different places, different problems: profiles of crime and disorder at residential parcels
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O’Brien, Daniel T., Ristea, Alina, Hangen, Forrest, and Tucker, Riley
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- 2022
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5. Vaccination intentions generate racial disparities in the societal persistence of COVID-19
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Wang, Yanchao, Ristea, Alina, Amiri, Mehrnaz, Dooley, Dan, Gibbons, Sage, Grabowski, Hannah, Hargraves, J. Lee, Kovacevic, Nikola, Roman, Anthony, Schutt, Russell K., Gao, Jianxi, Wang, Qi, and O’Brien, Daniel T.
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- 2021
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6. Study on the influence of ground and satellite observations on the numerical air-quality for PM10 over Romanian territory
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Dumitrache, Rodica Claudia, Iriza, Amalia, Maco, Bogdan Alexandru, Barbu, Cosmin Danut, Hirtl, Marcus, Mantovani, Simone, Nicola, Oana, Irimescu, Anisoara, Craciunescu, Vasile, Ristea, Alina, and Diamandi, Andrei
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- 2016
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7. The Emergence and Evolution of Problematic Properties: Onset, Persistence, Aggravation, and Desistance.
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O'Brien, Daniel T., Ristea, Alina, Tucker, Riley, and Hangen, Forrest
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CRIME , *LIFE course approach , *K-means clustering , *MARKOV processes , *OFFENSES against property , *WAGE increases - Abstract
Objectives: Scholars and practitioners have paid increasing attention to problematic properties, but little is known about how they emerge and evolve. We examine four phenomena suggested by life-course theory that reflect stability and change in crime and disorder at properties: onset of issues; persistence of issues; aggravation to more serious types of issues; and desistance of issues. We sought to identify the frequency and dynamics of each. Methods: We analyze how residential parcels (similar to properties) in Boston, MA shifted between profiles of crime and disorder from 2011 to 2018. 911 dispatches and 311 requests provided six measures of physical disorder, social disorder, and violence for all parcels. K-means clustering placed each parcel into one of six profiles of crime and disorder for each year. Markov chains quantified how properties moved between profiles year-to-year. Results: Onset was relatively infrequent and more often manifested as disorder than violence. Pathways of aggravation led from less serious profiles to a mixture of violence and disorder. Desistance was more likely to occur as de-escalations along these pathways then complete cessation of issues. In neighborhoods with above-average crime, persistence was more prevalent whereas desistance less often culminated in cessation, even relative to local expectations. Conclusions: The results offer insights for further research and practice attentive to trends of crime and disorder at problematic properties. It especially speaks to the understanding of stability and change; the role of different types of disorder; and the toolkit needed for problem properties interventions. [ABSTRACT FROM AUTHOR]
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- 2023
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8. Exposure to infection when accessing groceries reveals racial and socioeconomic inequities in navigating the pandemic.
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O'Brien, Daniel T., Ristea, Alina, and Dass, Sarina
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RACIAL inequality , *LOCAL delivery services , *COMMUNITIES , *FOOD chains , *DEMOGRAPHIC characteristics , *PANDEMICS , *GROCERIES - Abstract
Disasters often create inequitable consequences along racial and socioeconomic lines, but a pandemic is distinctive in that communities must navigate the ongoing hazards of infection exposure. We examine this for accessing essential needs, specifically groceries. We propose three strategies for mitigating risk when accessing groceries: visit grocery stores less often; prioritize generalist grocery stores; seek out stores whose clientele have lower infection rates. The study uses a unique combination of data to examine racial and socioeconomic inequities in the ability to employ these strategies in the census block groups of greater Boston, MA in April 2020, including cellphone-generated GPS records to observe store visits, a resident survey, localized infection rates, and demographic and infrastructural characteristics. We also present an original quantification of the amount of infection risk exposure when visiting grocery stores using visits, volume of visitors at each store, and infection rates of those visitors' communities. Each of the three strategies for mitigating exposure were employed in Boston, though differentially by community. Communities with more Black and Latinx residents and lower income made relatively more grocery store visits. This was best explained by differential use of grocery delivery services. Exposure and exposure per visit were higher in communities with more Black and Latinx residents and higher infection rates even when accounting for strategies that diminish exposure. The findings highlight two forms of inequities: using wealth to transfer risk to others through grocery deliveries; and behavioral segregation by race that makes it difficult for marginalized communities to avoid hazards. [ABSTRACT FROM AUTHOR]
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- 2023
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9. Different places, different problems: profiles of crime and disorder at residential parcels.
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O'Brien, Daniel T., Ristea, Alina, Hangen, Forrest, and Tucker, Riley
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VIOLENT crimes ,CRIME ,K-means clustering ,CLUSTER analysis (Statistics) ,NEIGHBORHOODS - Abstract
Certain places generate inordinate amounts of crime and disorder. We examine how places differ in their nature of crime and disorder, with three objectives: (1) identifying a typology of profiles of crime and disorder; (2) assessing whether different forms of crime and disorder co-locate at parcels; and (3) determining whether problematic parcels explain crime and disorder across neighborhoods. The study uses 911 and 311 records to quantify physical and social disorder and violent crime at residential parcels in Boston, MA (n = 81,673). K-means cluster analyses identified the typology of problematic parcels and how those types were distributed across census block groups. Cluster analysis identified five types of problematic parcels, four specializing in one form of crime or disorder and one that combined all issues. The second cluster analysis found that the distribution of problematic parcels described the spectrum from low- to high-crime neighborhoods, plus commercial districts with many parcels with public physical disorder. Problematic parcels modestly explained levels of crime across neighborhoods. The results suggest a need for diverse intervention strategies to support different types of problematic parcels; and that neighborhood dynamics pertaining to crime are greater than problematic properties alone. [ABSTRACT FROM AUTHOR]
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- 2022
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10. Spatial crime distribution and prediction for sporting events using social media.
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Ristea, Alina, Al Boni, Mohammad, Resch, Bernd, Gerber, Matthew S., and Leitner, Michael
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SPORTS events , *SPORTS forecasting , *VIOLENCE , *CRIME , *HOCKEY competitions , *GEOLOGICAL statistics - Abstract
Sporting events attract high volumes of people, which in turn leads to increased use of social media. In addition, research shows that sporting events may trigger violent behavior that can lead to crime. This study analyses the spatial relationships between crime occurrences, demographic, socio-economic and environmental variables, together with geo-located Twitter messages and their 'violent' subsets. The analysis compares basketball and hockey game days and non-game days. Moreover, this research aims to analyze crime prediction models using historical crime data as a basis and then introducing tweets and additional variables in their role as covariates of crime. First, this study investigates the spatial distribution of and correlation between crime and tweets during the same temporal periods. Feature selection models are applied in order to identify the best explanatory variables. Then, we apply localized kernel density estimation model for crime prediction during basketball and hockey games, and on non-game days. Findings from this study show that Twitter data, and a subset of violent tweets, are useful in building prediction models for the seven investigated crime types for home and away sporting events, and non-game days, with different levels of improvement. [ABSTRACT FROM AUTHOR]
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- 2020
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11. A systematic review on spatial crime forecasting.
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Kounadi, Ourania, Ristea, Alina, Araujo, Adelson, and Leitner, Michael
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META-analysis ,CRIME ,FORECASTING ,PREDICTIVE policing ,SPATIAL ability ,POLICE-community relations - Abstract
Background: Predictive policing and crime analytics with a spatiotemporal focus get increasing attention among a variety of scientific communities and are already being implemented as effective policing tools. The goal of this paper is to provide an overview and evaluation of the state of the art in spatial crime forecasting focusing on study design and technical aspects. Methods: We follow the PRISMA guidelines for reporting this systematic literature review and we analyse 32 papers from 2000 to 2018 that were selected from 786 papers that entered the screening phase and a total of 193 papers that went through the eligibility phase. The eligibility phase included several criteria that were grouped into: (a) the publication type, (b) relevance to research scope, and (c) study characteristics. Results: The most predominant type of forecasting inference is the hotspots (i.e. binary classification) method. Traditional machine learning methods were mostly used, but also kernel density estimation based approaches, and less frequently point process and deep learning approaches. The top measures of evaluation performance are the Prediction Accuracy, followed by the Prediction Accuracy Index, and the F1-Score. Finally, the most common validation approach was the train-test split while other approaches include the cross-validation, the leave one out, and the rolling horizon. Limitations: Current studies often lack a clear reporting of study experiments, feature engineering procedures, and are using inconsistent terminology to address similar problems. Conclusions: There is a remarkable growth in spatial crime forecasting studies as a result of interdisciplinary technical work done by scholars of various backgrounds. These studies address the societal need to understand and combat crime as well as the law enforcement interest in almost real-time prediction. Implications: Although we identified several opportunities and strengths there are also some weaknesses and threats for which we provide suggestions. Future studies should not neglect the juxtaposition of (existing) algorithms, of which the number is constantly increasing (we enlisted 66). To allow comparison and reproducibility of studies we outline the need for a protocol or standardization of spatial forecasting approaches and suggest the reporting of a study's key data items. [ABSTRACT FROM AUTHOR]
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- 2020
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12. Using tweets to understand changes in the spatial crime distribution for hockey events in Vancouver.
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Ristea, Alina, Andresen, Martin A., and Leitner, Michael
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MICROBLOGS , *CRIME , *HOCKEY , *SOCIAL media , *CRIMINAL methods , *REGRESSION analysis - Abstract
Abstract: The use of social media data for the spatial analysis of crime patterns during social events has proven to be instructive. This study analyzes the geography of crime considering hockey game days, criminal behaviour, and Twitter activity. Specifically, we consider the relationship between geolocated crime‐related Twitter activity and crime. We analyze six property crime types that are aggregated to the dissemination area base unit in Vancouver, for two hockey seasons through a game and non‐game temporal resolution. Using the same method, geolocated Twitter messages and environmental variables are aggregated to dissemination areas. We employ spatial clustering, dictionary‐based mining for tweets, spatial autocorrelation, and global and local regression models (spatial lag and geographically weighted regression). Findings show an important influence of Twitter data for theft‐from‐vehicle and mischief, mostly on hockey game days. Relationships from the geographically weighted regression models indicate that tweets are a valuable independent variable that can be used in explaining and understanding crime patterns. [ABSTRACT FROM AUTHOR]
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- 2018
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13. Population at risk: using areal interpolation and Twitter messages to create population models for burglaries and robberies.
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Kounadi, Ourania, Ristea, Alina, Leitner, Michael, and Langford, Chad
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INTERPOLATION , *ROBBERY , *BURGLARY , *CRIME - Abstract
Population at risk of crime varies due to the characteristics of a population as well as the crime generator and attractor places where crime is located. This establishes different crime opportunities for different crimes. However, there are very few efforts of modeling structures that derive spatiotemporal population models to allow accurate assessment of population exposure to crime. This study develops population models to depict the spatial distribution of people who have a heightened crime risk for burglaries and robberies. The data used in the study include: Census data as source data for the existing population, Twitter geo-located data, and locations of schools as ancillary data to redistribute the source data more accurately in the space, and finally gridded population and crime data to evaluate the derived population models. To create the models, a density-weighted areal interpolation technique was used that disaggregates the source data in smaller spatial units considering the spatial distribution of the ancillary data. The models were evaluated with validation data that assess the interpolation error and spatial statistics that examine their relationship with the crime types. Our approach derived population models of a finer resolution that can assist in more precise spatial crime analyses and also provide accurate information about crime rates to the public. [ABSTRACT FROM AUTHOR]
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- 2018
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14. Estimating the Spatial Distribution of Crime Events around a Football Stadium from Georeferenced Tweets.
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Ristea, Alina, Kurland, Justin, Resch, Bernd, Leitner, Michael, and Langford, Chad
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SPATIAL analysis (Statistics) , *FOOTBALL stadiums , *CRIME - Abstract
Crowd-based events, such as football matches, are considered generators of crime. Criminological research on the influence of football matches has consistently uncovered differences in spatial crime patterns, particularly in the areas around stadia. At the same time, social media data mining research on football matches shows a high volume of data created during football events. This study seeks to build on these two research streams by exploring the spatial relationship between crime events and nearby Twitter activity around a football stadium, and estimating the possible influence of tweets for explaining the presence or absence of crime in the area around a football stadium on match days. Aggregated hourly crime data and geotagged tweets for the same area around the stadium are analysed using exploratory and inferential methods. Spatial clustering, spatial statistics, text mining as well as a hurdle negative binomial logistic regression for spatiotemporal explanations are utilized in our analysis. Findings indicate a statistically significant spatial relationship between three crime types (criminal damage, theft and handling, and violence against the person) and tweet patterns, and that such a relationship can be used to explain future incidents of crime. [ABSTRACT FROM AUTHOR]
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- 2018
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15. Explainable artificial intelligence in the spatial domain (X‐GeoAI).
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Papadakis, Emmanuel, Adams, Ben, Gao, Song, Martins, Bruno, Baryannis, George, and Ristea, Alina
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ARTIFICIAL intelligence ,KNOWLEDGE representation (Information theory) ,KNOWLEDGE graphs ,COMPUTER vision ,URBAN planning - Abstract
In the context of GIScience, GeoAI aims to employ AI methods to analyze complex geographic phenomena. Recent advances in artificial intelligence (AI) research, the significant increase in computational power, and the large-scale availability of data have ushered in a new era of data-intensive science. The majority of GeoAI applications rely on machine learning (ML) algorithms to extract generalizable predictive patterns in the form of mathematical models that provide useful insights about the phenomenon in question. [Extracted from the article]
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- 2022
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16. CrimeVec—Exploring Spatial-Temporal Based Vector Representations of Urban Crime Types and Crime-Related Urban Regions.
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Crivellari, Alessandro and Ristea, Alina
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CRIME , *URBAN growth , *CRIME statistics , *VECTOR spaces , *CRIME analysis , *URBAN planning - Abstract
The traditional categorization of crime types relies on a hierarchical structure, from high-level categories to lower-level subtypes. This tree-based classification treats crime types as mutually independent when they do not branch from the same higher-level category, therefore lacking inter-category semantic relations. The issue then extends over crime distribution analysis of urban regions, often reporting statistics based on crime type counts, but neglecting implicit relations between different crime categories. Our study aims to fill this information gap, providing a more complete understanding of urban crime in both qualitative and quantitative terms. Specifically, we propose a vector-based crime type representation, constructed via unsupervised machine learning on temporal and geographic factors. The general idea is to define crime types as "related" if they often occur in the same area at the same time span, regardless of any initial hierarchical categorization. This opens to a new metric of comparison that goes beyond pre-defined structures, revealing hidden relationships between crime types by generating a vector space in a completely data-driven manner. Crime types are represented as points in this space, and their relative distances disclose stronger or weaker semantic relations. A direct application on urban crime distribution analysis stands out in the form of visualization tools for intuitive data investigations and convenient comparison measures on composite vectors of urban regions. Meaningful insights on crime type distributions and a better understanding of urban crime characteristics determine a valuable asset to urban management and development. [ABSTRACT FROM AUTHOR]
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- 2021
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17. Applying Spatial Video Geonarratives and Physiological Measurements to Explore Perceived Safety in Baton Rouge, Louisiana.
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Ristea, Alina, Leitner, Michael, Resch, Bernd, Stratmann, Judith, and Weijs-Perrée, Minou
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- 2021
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18. Opportunities and Challenges of Geospatial Analysis for Promoting Urban Livability in the Era of Big Data and Machine Learning.
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Kovacs-Györi, Anna, Ristea, Alina, Havas, Clemens, Mehaffy, Michael, Hochmair, Hartwig H., Resch, Bernd, Juhasz, Levente, Lehner, Arthur, Ramasubramanian, Laxmi, and Blaschke, Thomas
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MACHINE learning , *CITIES & towns , *URBAN planning , *BIG data , *DATA science , *HUMAN behavior , *GEOSPATIAL data , *INTERDISCIPLINARY approach to knowledge - Abstract
Urban systems involve a multitude of closely intertwined components, which are more measurable than before due to new sensors, data collection, and spatio-temporal analysis methods. Turning these data into knowledge to facilitate planning efforts in addressing current challenges of urban complex systems requires advanced interdisciplinary analysis methods, such as urban informatics or urban data science. Yet, by applying a purely data-driven approach, it is too easy to get lost in the 'forest' of data, and to miss the 'trees' of successful, livable cities that are the ultimate aim of urban planning. This paper assesses how geospatial data, and urban analysis, using a mixed methods approach, can help to better understand urban dynamics and human behavior, and how it can assist planning efforts to improve livability. Based on reviewing state-of-the-art research the paper goes one step further and also addresses the potential as well as limitations of new data sources in urban analytics to get a better overview of the whole 'forest' of these new data sources and analysis methods. The main discussion revolves around the reliability of using big data from social media platforms or sensors, and how information can be extracted from massive amounts of data through novel analysis methods, such as machine learning, for better-informed decision making aiming at urban livability improvement. [ABSTRACT FROM AUTHOR]
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- 2020
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19. Beyond Spatial Proximity—Classifying Parks and Their Visitors in London Based on Spatiotemporal and Sentiment Analysis of Twitter Data.
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Kovacs-Györi, Anna, Ristea, Alina, Kolcsar, Ronald, Resch, Bernd, Crivellari, Alessandro, and Blaschke, Thomas
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PARKS , *URBAN planning - Abstract
Parks are essential public places and play a central role in urban livability. However, traditional methods of investigating their attractiveness, such as questionnaires and in situ observations, are usually time- and resource-consuming, while providing less transferable and only site-specific results. This paper presents an improved methodology of using social media (Twitter) data to extract spatial and temporal patterns of park visits for urban planning purposes, along with the sentiment of the tweets, focusing on frequent Twitter users. We analyzed the spatiotemporal park visiting behavior of more than 4000 users for almost 1700 parks, examining 78,000 tweets in London, UK. The novelty of the research is in the combination of spatial and temporal aspects of Twitter data analysis, applying sentiment and emotion extraction for park visits throughout the whole city. This transferable methodology thereby overcomes many of the limitations of traditional research methods. This study concluded that people tweeted mostly in parks 3–4 km away from their center of activity and they were more positive than elsewhere while doing so. In our analysis, we identified four types of parks based on their visitors' spatial behavioral characteristics, the sentiment of the tweets, and the temporal distribution of the users, serving as input for further urban planning-related investigations. [ABSTRACT FROM AUTHOR]
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- 2018
- Full Text
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