PIERFRANCESCO ALAIMO DI LORO

Dottore di ricerca

ciclo: XXXIII


co-supervisore: Prof. Luca Tardella

Titolo della tesi: Innovative approaches in spatio-temporal modeling: handling data collected by new technologies

This thesis illustrates and puts in context two of the main research projects I worked on during my Ph.D. program, in collaboration with several national and international co-authors from "La Sapienza" and other prestigious universities. Both research lines concern spatial and spatio-temporal analysis of geo-referenced datasets, which is of broad and current interest in the statistical research literature and applications. My focus on such an area of statistics was not meditated before the start of the program. However, while pursuing my original research interests in the broader domain of Bayesian statistics, I realized there was an ever-increasing demand for viable and efficient statistical methods to analyze spatial and spatio-temporal data. That is a consequence of the extraordinary technological development that interested data collection systems during the last few decades. The innovative, cutting-edge technologies conceive new devices that can record and store data and information about the most diverse phenomena, possibly at a fine spatial scale and with high temporal resolution. Such capabilities were just a dream up to 20 or30 years ago. Spatial statistics methods are rapidly evolving to face this surge of novel data structure in various application fields: geology, meteorology, ecology, epidemiology, economics, politics, and more. The first chapter of this thesis introduces the general idea behind spatial statistics, which is the branch of statistics devoted to analyzing and modeling temporal and spatial structure in time and/or geo-referenced datasets. A brief historical introduction of its development is provided, starting from the first (sometimes unwitting) applications of its logic to practical and theoretical problems at the end of the XIX century. Many methods and techniques in this domain evolved independently, driven by the specific needs of the application fields in which they were developed. The historical ex-cursus leads to a coarse (but reasonable) distinction in three main areas: continuous spatial variations, discrete spatial variations, spatial point patterns. These areas present further facets within themselves, making spatial statistics an incredibly diverse and rich topic. A really comprehensive review would require an entire book to be written and maybe a lifetime to be thoroughly studied. Therefore, in the following Chapters, the discussion is focused on specific areas and techniques used in the studies. Only those tools that proved valuable for the analysis performed in Alaimo Di Loro et al.(2021) and Kalair et al. (2020) are extensively treated. The second chapter focuses on analyzing continuous spatial variation, which is the modeling of outcomes varying continuously over some space. First, the most relevant properties for continuous spatial processes are introduced; second, some of the most common methodologies for performing spatial interpolation of the mean trend and stochastic modeling of the residuals are listed and sketched. In particular, the chapter digresses on Spline Regressionas a valid technique to catch the first-order structure in spatial data. Soon after, the Geo-Statisticalmethodsand the Bayesian Hierarchicalframework are claimed as invaluable tools to attain the simultaneous estimation of the first and second-order structure of a process. Extension to spatio-temporal contexts is not as trivial as it may seem but must be approached with due care. An extensive discussion about the possible pitfalls and viable solutions is included in the same chapter. Finally, the problems arising in the analysis of Big spatial data are highlighted in the last section, where TheNearestNeighbor Gaussian Process(NNGP, Datta et al. (2016a,b)) model is introduced as a highly scalable framework for providing full inference on massive spatial and spatio-temporal datasets.The third chapter includes an extended version of the paper Alaimo Di Loro et al.(2021), currently under-review and published as a pre-print. It describes how the aforementioned technological development has strongly affected human tracking and monitoring capabilities, generating substantial interest in monitoring human activity.New non-intrusive wearable devices, such as wrist-worn sensors that monitor gross motor activity (miniature accelerometers), can continuously record individual activity levels, producing massive amounts of high-resolution measurements. Analyzing such data needs to account for spatial and temporal information on trajectories or paths traversed by subjects wearing such devices. Inferential objectives include estimating a subject’s physical activity levels along a given trajectory, identifying trajectories that are more likely to produce higher levels of physical activity for a given subject, and predicting expected levels of physical activity in any proposed new trajectory for a given set of health attributes. We argue that the underlying process is more appropriately modeled as a stochastic evolution through time while accounting for spatial information separately. Building upon recent developments in this field, we construct temporal processes using directed acyclic graphs (DAG) on the line of the NNGP, include spatial dependence through penalized spline regression, and develop optimized implementations of the collapsed Markov chain Monte Carlo (MCMC)algorithm. The resulting Bayesian hierarchical modeling framework for the analysis of spatial-temporal actigraphy data proves able to deliver fully model-based inference on trajectories while accounting for subject-level health attributes and spatial-temporal dependencies. We undertake a comprehensive analysis of an original dataset from the Physical Activity through Sustainable Transport Approaches in Los Angeles(PASTA-LA) study to formally ascertain spatial zones and trajectories exhibiting significantly higher physical activity levels. Suggestions for further extensions and improvements on the currently adopted methodology are discussed in the last section of the chapter.Chapter four undergoes a paradigm shift and introduces the basic theory and tools of spatial point patterns analysis. Some common probabilistic models for point processes are briefly discussed, with some of their properties and limitations highlighted. The rest of the chapter is instead entirely focused on the Hawkesprocess and its spatio-temporal extension. It is a particular kind of self-exciting point process that presents a strong inter-dependence structure. While conceived in Hawkes (1971a), its use in the statistical application has been for a long time limited to the analysis of earthquakes dynamic. The recent escalation of data at the high temporal resolution, sometimes accompanied by spatial information, has favored its use in modeling events dynamics in diverse fields: finance, society, biology, etc.In particular, its defining properties are presented and state-of-the-art estimation methods of the spatio-temporal version are introduced.In the fifth chapter, the semi-parametric Hawkes process with a periodic background originally introduced in Zhuang and Mateu (2019) is outlined. While very recent, it has already revealed itself very useful to model phenomena that are likely to present a cyclic pattern. It assumes that primary events occur as an effect of the background intensity, while secondary events are associated with the self-excitation effect. There are sound motivations that justify its utilization in the context of road accident dynamics, e.g.: excitation may occur when a driver, reacting to the disruption of one accident, triggers a subsequent accident upstream of the first one.The proposed framework is tested on two original applications on two original sets of data: the first one, somewhat preliminary, involves the modeling and analysis of road accidents that occurred on the urban road network of Rome, in Italy; the second is instead a conclusive analysis recently published in (Kalair et al., 2020), conducted on a collection of road accidents occurred on the M25 London Orbital, in the UnitedKingdom. Adaptations of the original methodology to the road accident setting were deemed necessary in both cases to consider specific features of car accidents and the geometry of the underlying space. The final results permit a fruitful interpretation of the temporal and spatial background that detects the typical commuting behavior in the Roman and Londoners communities. The self-excitation component appears to have slightly different intensities in the two contexts, suggesting excitation mechanisms that vary between urban networks and motorways. Finally, the sixth chapter summarizes all the main passages in the thesis, highlighting the previous chapters’ original contributions. It also tries to summarize a take-home message about statistical modeling’s fundamental importance as a scientific tool to formulate and verify hypotheses that must not be discouraged by new challenges and technological advancements.

Produzione scientifica

11573/1699823 - 2024 - Finite mixtures in capture–recapture surveys for modeling residency patterns in marine wildlife populations
Caruso, Gianmarco; Alaimo Di Loro, Pierfrancesco; Mingione, Marco; Tardella, Luca; Pace, Daniela Silvia; Jona Lasinio, Giovanna - 01a Articolo in rivista
rivista: BIOMETRICAL JOURNAL (Weinheim: Wiley-VCH, 1977-[2020] Berlin: Akad.-Verl., anfangs) pp. 1-24 - issn: 0323-3847 - wos: (0) - scopus: (0)

11573/1680849 - 2023 - Influence of exertional oscillatory breathing and its temporal behavior in patients with heart failure and reduced ejection fraction
Magrì, Damiano; Palermo, Pietro; Salvioni, Elisabetta; Mapelli, Massimo; Gallo, Giovanna; Vignati, Carlo; Mattavelli, Irene; Gugliandolo, Paola; Maruotti, Antonello; Di Loro, Pierfrancesco Alaimo; Fiori, Emiliano; Sciomer, Susanna; Agostoni, Piergiuseppe - 01a Articolo in rivista
rivista: INTERNATIONAL JOURNAL OF CARDIOLOGY (Elsevier Science Ireland Limited:PO Box 85, Limerick Ireland:011 353 61 709600, 011 353 61 61944, EMAIL: usinfo-f@elsevier.com, INTERNET: http://www.elsevier.com, Fax: 011 353 61 709114) pp. 50-56 - issn: 0167-5273 - wos: WOS:001011656900001 (0) - scopus: 2-s2.0-85159683021 (1)

11573/1656316 - 2022 - Specification of informative priors for capture-recapture finite mixture models
Alaimo Di Loro, Pierfrancesco; Caruso, Gianmarco; Mingione, Marco; Jona Lasinio, Giovanna; Tardella, Luca - 04b Atto di convegno in volume
congresso: 51st Scientific Meeting of the Italian Statistical Society (Caserta; Italy)
libro: Book of the short papers SIS 2022 - (9788891932310)

11573/1546415 - 2021 - Nowcasting COVID‐19 incidence indicators during the Italian first outbreak
Alaimo Di Loro, Pierfrancesco; Divino, Fabio; Farcomeni, Alessio; Jona Lasinio, Giovanna; Lovison, Gianfranco; Maruotti, Antonello; Mingione, Marco - 01a Articolo in rivista
rivista: STATISTICS IN MEDICINE (New York, NY : John Wiley & Sons) pp. 1-22 - issn: 1097-0258 - wos: WOS:000647472200001 (21) - scopus: 2-s2.0-85105234564 (22)

11573/1565763 - 2021 - Model-based clustering for estimating cetaceans site-fidelity and abundance
Caruso, Gianmarco; Panunzi, Greta; Mingione, Marco; Alaimo Di Loro, Pierfrancesco; Moro, Stefano; Bompiani, Edoardo; Lanfredi, Caterina; Pace, Daniela Silvia; Tardella, Luca; Jona Lasinio, Giovanna - 04b Atto di convegno in volume
congresso: 13th scientific meeting of the classification and data analysis group, Firenze, September 9-11, 2021 (Firenze)
libro: CLADAG 2021 book of abstracts and short papers - (978-88-5518-340-6)

11573/1489409 - 2021 - A non-parametric Hawkes process model of primary and secondary accidents on a UK smart motorway
Kalair, K.; Connaughton, C.; Alaimo Di Loro, P. - 01a Articolo in rivista
rivista: JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES C-APPLIED STATISTICS (Blackwell Publishing Limited:9600 Garsington Road, Oxford OX4 2DQ United Kingdom:011 44 1865 776868 , (781)388-8200, EMAIL: agentservices@oxon.blackwellpublishing.com, e-help@blackwellpublishers.co.uk, INTERNET: http://www.blackwellpublishing.com, Fax: 011 44 1865 714591) pp. 80-97 - issn: 0035-9254 - wos: WOS:000588046200001 (9) - scopus: 2-s2.0-85096667525 (5)

11573/1580852 - 2021 - Statistical communication of COVID-19 epidemic using widely accessible interactive tools
Mingione, Marco; Alaimo Di Loro, Pierfrancesco - 04b Atto di convegno in volume
congresso: 50th Meeting of the Italian Statistical Society - SIS 2021 (Pisa; Italia (virtuale))
libro: Book of Short Papers SIS 2021 - (9788891927361)

11573/1577111 - 2021 - Spatio-temporal modelling of COVID-19 incident cases using Richards’ curve: An application to the Italian regions
Mingione, Marco; Alaimo Di Loro, Pierfrancesco; Farcomeni, Alessio; Divino, Fabio; Lovison, Gianfranco; Maruotti, Antonello; Jona Lasinio, Giovanna - 01a Articolo in rivista
rivista: SPATIAL STATISTICS (Elsevier) pp. 1-31 - issn: 2211-6753 - wos: WOS:000831532800003 (9) - scopus: 2-s2.0-85117711146 (17)

11573/1526077 - 2021 - Capitoline dolphins. Residency patterns and abundance estimate of Tursiops truncatus at the Tiber River estuary (Mediterranean Sea)
Pace, Daniela Silvia; Di Marco, Chiara; Giacomini, Giancarlo; Ferri, Sara; Silvestri, Margherita; Papale, Elena; Casoli, Edoardo; Ventura, Daniele; Mingione, Marco; Alaimo Di Loro, Pierfrancesco; Jona Lasinio, Giovanna; Ardizzone, Domenico - 01a Articolo in rivista
rivista: BIOLOGY (Basel : MDPI) pp. 1-19 - issn: 2079-7737 - wos: WOS:000642724800001 (17) - scopus: 2-s2.0-85103840478 (18)

11573/1644910 - 2021 - Model-based clustering for monitoring cetaceans population dynamics
Panunzi, G.; Caruso, G.; Mingione, M.; Alaimo Di Loro, P.; Moro, S.; Bompiani, E.; Lanfredi, C.; Pace, D. S.; Tardella, L.; Jona Lasinio, G. - 04f Poster
congresso: GRASPA 2021 (Rome; Italy)
libro: Graspa 2021 - (979-12-200-8496-3)

11573/1471243 - 2020 - Compositional analysis of fish communities in a fast changing marine ecosystem
Mingione, M.; Alaimo Di Loro, P.; Jona Lasinio, G.; Martino, S.; Colloca, F. - 04b Atto di convegno in volume
congresso: Scientific meeting of the Italian Statistical Society (Pisa)
libro: Book of short papers - SIS 2020 - (9788891910776)

11573/1472366 - 2020 - I stay at home with headache. A survey to investigate how the lockdown for COVID-19 impacted on headache in Italian children
Papetti, L.; Alaimo Di Loro, P.; Tarantino, S.; Grazzi, L.; Guidetti, V.; Parisi, P.; Raieli, V.; Sciruicchio, V.; Termine, C.; Toldo, I.; Tozzi, E.; Verdecchia, P.; Carotenuto, M.; Battisti, M.; Celi, A.; D'agnano, D.; Faedda, N.; Ferilli, M. A. N.; Grillo, G.; Natalucci, G.; Onofri, A.; Pelizza, M. F.; Ursitti, F.; Vasta, M.; Velardi, M.; Balestri, M.; Moavero, R.; Vigevano, F.; Valeriani, M. - 01a Articolo in rivista
rivista: CEPHALALGIA (-Attuale:BLACKWELL PUBLISHING, 9600 GARSINGTON RD, OXFORD, ENGLAND, OXON, OX4 2DQ -Scandinavian University Press:PO Box 508, Sentrum, 0105 Oslo Norway:011 47 24 147500, INTERNET: http://www.universitsforlaget.no, Fax: 011 47 24 147501) pp. 1459-1473 - issn: 0333-1024 - wos: WOS:000585938800008 (33) - scopus: 2-s2.0-85095125054 (41)

11573/1410092 - 2020 - Tolerability of palmitoylethanolamide in a pediatric population suffering from migraine. A pilot study
Papetti, Laura; Sforza, Giorgia; Tullo, Giulia; Alaimo Di Loro, Pierfrancesco; Moavero, Romina; Ursitti, Fabiana; Ferilli, Michela Ada Noris; Tarantino, Samuela; Vigevano, Federico; Valeriani, Massimiliano - 01a Articolo in rivista
rivista: PAIN RESEARCH & MANAGEMENT (Oakville, Ont.: Pulsus Group for the Canadian Pain Society.) pp. 1-7 - issn: 1203-6765 - wos: WOS:000531600700001 (15) - scopus: 2-s2.0-85084406419 (18)

11573/1293765 - 2019 - Hidden Markov Model estimation via Particle Gibbs
Alaimo Di Loro, Pierfrancesco; Ciminello, Enrico; Tardella, Luca - 04b Atto di convegno in volume
congresso: SIS2019 - Smart Statistics for Smart Applications (Milano)
libro: Smart Statistics for Smart Applications - Book of Short Papers SIS2019 - (9788891915108)

11573/1278496 - 2019 - Features of Primary Chronic Headache in Children and Adolescents and Validity of Ichd 3 Criteria
Papetti, Laura; Salfa, Irene; Battan, Barbara; Moavero, Romina; Termine, Cristiano; Bartoli, Beatrice; Di Nunzio, Francesca; Tarantino, Samuela; Alaimo Di Loro, Pierfrancesco; Vigevano, Federico; Tarantino, Samuela - 01a Articolo in rivista
rivista: FRONTIERS IN NEUROLOGY (Lausanne: Frontiers Research Foundation, 2010-) pp. 1-8 - issn: 1664-2295 - wos: WOS:000458797000001 (18) - scopus: 2-s2.0-85065918425 (19)

11573/1186547 - 2018 - Bayesian Population Size Estimation With a Single Sample
Alaimo Di Loro, P.; Tardella, L. - 04b Atto di convegno in volume
congresso: 49th Scientific meeting of the Italian Statistical Society, SIS 2018 (Palermo; Italy)
libro: Book of short papers sis 2018 - (9788891910233)

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