480 research outputs found

    Safe passage for attachment systems:Can attachment security at international schools be measured, and is it at risk?

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    Relocations challenge attachment networks. Regardless of whether a person moves or is moved away from, relocation produces separation and loss. When such losses are repeatedly experienced without being adequately processed, a defensive shutting down of the attachment system could result, particularly when such experiences occur during or across the developmental years. At schools with substantial turnover, this possibility could be shaping youth in ways that compromise attachment security and young people’s willingness or ability to develop and maintain deep long-term relationships. Given the well-documented associations between attachment security, social support, and long-term physical and mental health, the hypothesis that mobility could erode attachment and relational health warrants exploration. International schools are logical settings to test such a hypothesis, given their frequently high turnover without confounding factors (e.g. war trauma or refugee experiences). In addition, repeated experiences of separation and loss in international school settings would seem likely to create mental associations for the young people involved regarding how they and others tend to respond to such situations in such settings, raising the possibility that people at such schools, or even the school itself, could collectively be represented as an attachment figure. Questions like these have received scant attention in the literature. They warrant consideration because of their potential to shape young people’s most general convictions regarding attachment, which could, in turn, have implications for young people’s ability to experience meaning in their lives

    LIPIcs, Volume 251, ITCS 2023, Complete Volume

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    LIPIcs, Volume 251, ITCS 2023, Complete Volum

    Digital Traces of the Mind::Using Smartphones to Capture Signals of Well-Being in Individuals

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    General context and questions Adolescents and young adults typically use their smartphone several hours a day. Although there are concerns about how such behaviour might affect their well-being, the popularity of these powerful devices also opens novel opportunities for monitoring well-being in daily life. If successful, monitoring well-being in daily life provides novel opportunities to develop future interventions that provide personalized support to individuals at the moment they require it (just-in-time adaptive interventions). Taking an interdisciplinary approach with insights from communication, computational, and psychological science, this dissertation investigated the relation between smartphone app use and well-being and developed machine learning models to estimate an individual’s well-being based on how they interact with their smartphone. To elucidate the relation between smartphone trace data and well-being and to contribute to the development of technologies for monitoring well-being in future clinical practice, this dissertation addressed two overarching questions:RQ1: Can we find empirical support for theoretically motivated relations between smartphone trace data and well-being in individuals? RQ2: Can we use smartphone trace data to monitor well-being in individuals?Aims The first aim of this dissertation was to quantify the relation between the collected smartphone trace data and momentary well-being at the sample level, but also for each individual, following recent conceptual insights and empirical findings in psychological, communication, and computational science. A strength of this personalized (or idiographic) approach is that it allows us to capture how individuals might differ in how smartphone app use is related to their well-being. Considering such interindividual differences is important to determine if some individuals might potentially benefit from spending more time on their smartphone apps whereas others do not or even experience adverse effects. The second aim of this dissertation was to develop models for monitoring well-being in daily life. The present work pursued this transdisciplinary aim by taking a machine learning approach and evaluating to what extent we might estimate an individual’s well-being based on their smartphone trace data. If such traces can be used for this purpose by helping to pinpoint when individuals are unwell, they might be a useful data source for developing future interventions that provide personalized support to individuals at the moment they require it (just-in-time adaptive interventions). With this aim, the dissertation follows current developments in psychoinformatics and psychiatry, where much research resources are invested in using smartphone traces and similar data (obtained with smartphone sensors and wearables) to develop technologies for detecting whether an individual is currently unwell or will be in the future. Data collection and analysis This work combined novel data collection techniques (digital phenotyping and experience sampling methodology) for measuring smartphone use and well-being in the daily lives of 247 student participants. For a period up to four months, a dedicated application installed on participants’ smartphones collected smartphone trace data. In the same time period, participants completed a brief smartphone-based well-being survey five times a day (for 30 days in the first month and 30 days in the fourth month; up to 300 assessments in total). At each measurement, this survey comprised questions about the participants’ momentary level of procrastination, stress, and fatigue, while sleep duration was measured in the morning. Taking a time-series and machine learning approach to analysing these data, I provide the following contributions: Chapter 2 investigates the person-specific relation between passively logged usage of different application types and momentary subjective procrastination, Chapter 3 develops machine learning methodology to estimate sleep duration using smartphone trace data, Chapter 4 combines machine learning and explainable artificial intelligence to discover smartphone-tracked digital markers of momentary subjective stress, Chapter 5 uses a personalized machine learning approach to evaluate if smartphone trace data contains behavioral signs of fatigue. Collectively, these empirical studies provide preliminary answers to the overarching questions of this dissertation.Summary of results With respect to the theoretically motivated relations between smartphone trace data and wellbeing (RQ1), we found that different patterns in smartphone trace data, from time spent on social network, messenger, video, and game applications to smartphone-tracked sleep proxies, are related to well-being in individuals. The strength and nature of this relation depends on the individual and app usage pattern under consideration. The relation between smartphone app use patterns and well-being is limited in most individuals, but relatively strong in a minority. Whereas some individuals might benefit from using specific app types, others might experience decreases in well-being when spending more time on these apps. With respect to the question whether we might use smartphone trace data to monitor well-being in individuals (RQ2), we found that smartphone trace data might be useful for this purpose in some individuals and to some extent. They appear most relevant in the context of sleep monitoring (Chapter 3) and have the potential to be included as one of several data sources for monitoring momentary procrastination (Chapter 2), stress (Chapter 4), and fatigue (Chapter 5) in daily life. Outlook Future interdisciplinary research is needed to investigate whether the relationship between smartphone use and well-being depends on the nature of the activities performed on these devices, the content they present, and the context in which they are used. Answering these questions is essential to unravel the complex puzzle of developing technologies for monitoring well-being in daily life.<br/

    Explainable temporal data mining techniques to support the prediction task in Medicine

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    In the last decades, the increasing amount of data available in all fields raises the necessity to discover new knowledge and explain the hidden information found. On one hand, the rapid increase of interest in, and use of, artificial intelligence (AI) in computer applications has raised a parallel concern about its ability (or lack thereof) to provide understandable, or explainable, results to users. In the biomedical informatics and computer science communities, there is considerable discussion about the `` un-explainable" nature of artificial intelligence, where often algorithms and systems leave users, and even developers, in the dark with respect to how results were obtained. Especially in the biomedical context, the necessity to explain an artificial intelligence system result is legitimate of the importance of patient safety. On the other hand, current database systems enable us to store huge quantities of data. Their analysis through data mining techniques provides the possibility to extract relevant knowledge and useful hidden information. Relationships and patterns within these data could provide new medical knowledge. The analysis of such healthcare/medical data collections could greatly help to observe the health conditions of the population and extract useful information that can be exploited in the assessment of healthcare/medical processes. Particularly, the prediction of medical events is essential for preventing disease, understanding disease mechanisms, and increasing patient quality of care. In this context, an important aspect is to verify whether the database content supports the capability of predicting future events. In this thesis, we start addressing the problem of explainability, discussing some of the most significant challenges need to be addressed with scientific and engineering rigor in a variety of biomedical domains. We analyze the ``temporal component" of explainability, focusing on detailing different perspectives such as: the use of temporal data, the temporal task, the temporal reasoning, and the dynamics of explainability in respect to the user perspective and to knowledge. Starting from this panorama, we focus our attention on two different temporal data mining techniques. The first one, based on trend abstractions, starting from the concept of Trend-Event Pattern and moving through the concept of prediction, we propose a new kind of predictive temporal patterns, namely Predictive Trend-Event Patterns (PTE-Ps). The framework aims to combine complex temporal features to extract a compact and non-redundant predictive set of patterns composed by such temporal features. The second one, based on functional dependencies, we propose a methodology for deriving a new kind of approximate temporal functional dependencies, called Approximate Predictive Functional Dependencies (APFDs), based on a three-window framework. We then discuss the concept of approximation, the data complexity of deriving an APFD, the introduction of two new error measures, and finally the quality of APFDs in terms of coverage and reliability. Exploiting these methodologies, we analyze intensive care unit data from the MIMIC dataset

    The Role of Synthetic Data in Improving Supervised Learning Methods: The Case of Land Use/Land Cover Classification

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    A thesis submitted in partial fulfillment of the requirements for the degree of Doctor in Information ManagementIn remote sensing, Land Use/Land Cover (LULC) maps constitute important assets for various applications, promoting environmental sustainability and good resource management. Although, their production continues to be a challenging task. There are various factors that contribute towards the difficulty of generating accurate, timely updated LULC maps, both via automatic or photo-interpreted LULC mapping. Data preprocessing, being a crucial step for any Machine Learning task, is particularly important in the remote sensing domain due to the overwhelming amount of raw, unlabeled data continuously gathered from multiple remote sensing missions. However a significant part of the state-of-the-art focuses on scenarios with full access to labeled training data with relatively balanced class distributions. This thesis focuses on the challenges found in automatic LULC classification tasks, specifically in data preprocessing tasks. We focus on the development of novel Active Learning (AL) and imbalanced learning techniques, to improve ML performance in situations with limited training data and/or the existence of rare classes. We also show that much of the contributions presented are not only successful in remote sensing problems, but also in various other multidisciplinary classification problems. The work presented in this thesis used open access datasets to test the contributions made in imbalanced learning and AL. All the data pulling, preprocessing and experiments are made available at https://github.com/joaopfonseca/publications. The algorithmic implementations are made available in the Python package ml-research at https://github.com/joaopfonseca/ml-research

    Privacy risk assessment of emerging machine learning paradigms

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    Machine learning (ML) has progressed tremendously, and data is the key factor to drive such development. However, there are two main challenges regarding collecting the data and handling it with ML models. First, the acquisition of high-quality labeled data can be difficult and expensive due to the need for extensive human annotation. Second, to model the complex relationship between entities, e.g., social networks or molecule structures, graphs have been leveraged. However, conventional ML models may not effectively handle graph data due to the non-linear and complex nature of the relationships between nodes. To address these challenges, recent developments in semi-supervised learning and self-supervised learning have been introduced to leverage unlabeled data for ML tasks. In addition, a new family of ML models known as graph neural networks has been proposed to tackle the challenges associated with graph data. Despite being powerful, the potential privacy risk stemming from these paradigms should also be taken into account. In this dissertation, we perform the privacy risk assessment of the emerging machine learning paradigms. Firstly, we investigate the membership privacy leakage stemming from semi-supervised learning. Concretely, we propose the first data augmentation-based membership inference attack that is tailored to the training paradigm of semi-supervised learning methods. Secondly, we quantify the privacy leakage of self-supervised learning through the lens of membership inference attacks and attribute inference attacks. Thirdly, we study the privacy implications of training GNNs on graphs. In particular, we propose the first attack to steal a graph from the outputs of a GNN model that is trained on the graph. Finally, we also explore potential defense mechanisms to mitigate these attacks.Maschinelles Lernen (ML) hat enorme Fortschritte gemacht, und Daten sind der Schlüsselfaktor, um diese Entwicklung voranzutreiben. Es gibt jedoch zwei große Herausforderungen bei der Erfassung der Daten und deren Handhabung mit ML-Modellen. Erstens kann die Erfassung qualitativ hochwertiger beschrifteter Daten aufgrund der Notwendigkeit umfangreicher menschlicher Anmerkungen schwierig und teuer sein. Zweitens wurden Graphen genutzt, um die komplexe Beziehung zwischen Entitäten, z. B. sozialen Netzwerken oder Molekülstrukturen, zu modellieren. Herkömmliche ML Modelle können Diagrammdaten jedoch aufgrund der nichtlinearen und komplexen Natur der Beziehungen zwischen Knoten möglicherweise nicht effektiv handhaben. Um diesen Herausforderungen zu begegnen, wurden jüngste Entwicklungen im halbüberwachten Lernen und im selbstüberwachten Lernen eingeführt, um unbeschriftete Daten für ML Aufgaben zu nutzen. Darüber hinaus wurde eine neue Familie von ML-Modellen, bekannt als Graph Neural Networks, vorgeschlagen, um die Herausforderungen im Zusammenhang mit Graphdaten zu bewältigen. Obwohl sie leistungsfähig sind, sollte auch das potenzielle Datenschutzrisiko berücksichtigt werden, das sich aus diesen Paradigmen ergibt. In dieser Dissertation führen wir die Datenschutzrisikobewertung der aufkommenden Paradigmen des maschinellen Lernens durch. Erstens untersuchen wir die Datenschutzlecks der Mitgliedschaft, die sich aus halbüberwachtem Lernen ergeben. Konkret schlagen wir den ersten auf Datenaugmentation basierenden Mitgliedschafts-Inferenz-Angriff vor, der auf das Trainingsparadigma halbüberwachter Lernmethoden zugeschnitten ist. Zweitens quantifizieren wir das Durchsickern der Privatsphäre des selbstüberwachten Lernens durch die Linse von Mitgliedschafts-Inferenz-Angriffen und Attribut-Inferenz- Angriffen. Drittens untersuchen wir die Datenschutzauswirkungen des Trainings von GNNs auf Graphen. Insbesondere schlagen wir den ersten Angriff vor, um einen Graphen aus den Ausgaben eines GNN-Modells zu stehlen, das auf dem Graphen trainiert wird. Schließlich untersuchen wir auch mögliche Verteidigungsmechanismen, um diese Angriffe abzuschwächen

    LIPIcs, Volume 261, ICALP 2023, Complete Volume

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    LIPIcs, Volume 261, ICALP 2023, Complete Volum

    Essays on monetary policy

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    This is a summary of the four chapters that comprise this D.Phil. thesis.1 This thesis examines two major aspects of policy. The first two chapters examine monetary policy communication. The second two examine the causes and consequences of a time-varying reaction function of the central bank. 1. Central Bank Communication and Higher Moments In this first chapter, I investigate which parts of central bank communication affect the higher moments of expectations embedded in financial market pricing. Much of the literature on central bank communication has focused on how communication impacts the conditional expected mean of future policy. But this chapter asks how central bank communication affects the second and third moments of the financial market’s perceived distribution of future policy decisions. I use high frequency changes in option-prices around Bank of England communications to show that communication affects higher moments of the distribution of expectations. I find that the relevant communication in the case of the Bank of England is primarily confined to the information contained in the Q&A and Statement, rather than the longer Inflation Report. 2. Mark My Words: The Transmission of Central Bank Communication to the General Public via the Print Media In the second chapter, jointly with James Brookes, I ask how central banks can change their communication in order to receive greater newspaper coverage, if that is indeed an objective of theirs. We use computational linguistics combined with an event-study methodology to measure the extent of news coverage a central bank communication receives, and the textual features that might cause a communication to be more (or less) likely to be considered newsworthy. We consider the case of the Bank of England, and estimate the relationship between news coverage and central bank communication implied by our model. We find that the interaction between the state of the economy and the way in which the Bank of England writes its communication is important for determining news coverage. We provide concrete suggestions for ways in which central bank communication can increase its news coverage by improving readability in line with our results. 3. Uncertainty and Time-varying Monetary Policy In the third chapter, together with Michael McMahon, I investigate the links between uncertainty and the reaction function of the Federal Reserve. US macroeconomic evidence points to higher economic volatility being positively correlated with more aggressive monetary policy responses. This represents a challenge for “good policy” explanations of the Great Moderation which map a more aggressive monetary response to reduced volatility. While some models of monetary policy under uncertainty can match this comovement qualitatively, these models do not, on their own, account for the reaction-function changes quantitatively for reasonable changes in uncertainty. We present a number of alternative sources of uncertainty that we believe should be more prevalent in the literature on monetary policy. 4. The Element(s) of Surprise In the final chapter, together with Michael McMahon, I analyse the implications for monetary surprises of time-varying reaction functions. Monetary policy surprises are driven by several separate forces. We argue that many of the surprises in monetary policy instruments are driven by unexpected changes in the reaction function of policymakers. We show that these reaction function surprises are fundamentally different from monetary policy shocks in their effect on the economy, are likely endogenous to the state, and unable to removed using current orthogonalisation procedures. As a result monetary policy surprises should not be used to measure the effect of a monetary policy “shock” to the economy. We find evidence for reaction function surprises in the features of the high frequency asset price surprise data and in analysing the text of a major US economic forecaster. Further, we show that periods in which an estimated macro model suggests policymakers have switched reaction functions provide the majority of variation in monetary policy surprises

    General Course Catalog [2022/23 academic year]

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    General Course Catalog, 2022/23 academic yearhttps://repository.stcloudstate.edu/undergencat/1134/thumbnail.jp
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