224 research outputs found

    A Simultaneous Extraction of Context and Community from pervasive signals using nested Dirichlet process

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    Understanding user contexts and group structures plays a central role in pervasive computing. These contexts and community structures are complex to mine from data collected in the wild due to the unprecedented growth of data, noise, uncertainties and complexities. Typical existing approaches would first extract the latent patterns to explain human dynamics or behaviors and then use them as a way to consistently formulate numerical representations for community detection, often via a clustering method. While being able to capture high-order and complex representations, these two steps are performed separately. More importantly, they face a fundamental difficulty in determining the correct number of latent patterns and communities. This paper presents an approach that seamlessly addresses these challenges to simultaneously discover latent patterns and communities in a unified Bayesian nonparametric framework. Our Simultaneous Extraction of Context and Community (SECC) model roots in the nested Dirichlet process theory which allows a nested structure to be built to summarize data at multiple levels. We demonstrate our framework on five datasets where the advantages of the proposed approach are validated

    Making sense of pervasive signals: a machine learning approach

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    This study focused on challenges come from noisy and complex pervasive data. We proposed new Bayesian nonparametric models to infer co-patterns from multi-channel data collected from pervasive devices. By making sense of pervasive data, the study contributes to the development of Machine Learning and Data Mining in Big Data era

    Computational Modeling of Face-to-Face Social Interaction Using Nonverbal Behavioral Cues

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    The computational modeling of face-to-face interactions using nonverbal behavioral cues is an emerging and relevant problem in social computing. Studying face-to-face interactions in small groups helps in understanding the basic processes of individual and group behavior; and improving team productivity and satisfaction in the modern workplace. Apart from the verbal channel, nonverbal behavioral cues form a rich communication channel through which people infer – often automatically and unconsciously – emotions, relationships, and traits of fellowmembers. There exists a solid body of knowledge about small groups and the multimodal nature of the nonverbal phenomenon in social psychology and nonverbal communication. However, the problem has only recently begun to be studied in the multimodal processing community. A recent trend is to analyze these interactions in the context of face-to-face group conversations, using multiple sensors and make inferences automatically without the need of a human expert. These problems can be formulated in a machine learning framework involving the extraction of relevant audio, video features and the design of supervised or unsupervised learning models. While attempting to bridge social psychology, perception, and machine learning, certain factors have to be considered. Firstly, various group conversation patterns emerge at different time-scales. For example, turn-taking patterns evolve over shorter time scales, whereas dominance or group-interest trends get established over larger time scales. Secondly, a set of audio and visual cues that are not only relevant but also robustly computable need to be chosen. Thirdly, unlike typical machine learning problems where ground truth is well defined, interaction modeling involves data annotation that needs to factor in inter-annotator variability. Finally, principled ways of integrating the multimodal cues have to be investigated. In the thesis, we have investigated individual social constructs in small groups like dominance and status (two facets of the so-called vertical dimension of social relations). In the first part of this work, we have investigated how dominance perceived by external observers can be estimated by different nonverbal audio and video cues, and affected by annotator variability, the estimationmethod, and the exact task involved. In the second part, we jointly study perceived dominance and role-based status to understand whether dominant people are the ones with high status and whether dominance and status in small-group conversations be automatically explained by the same nonverbal cues. We employ speaking activity, visual activity, and visual attention cues for both the works. In the second part of the thesis, we have investigated group social constructs using both supervised and unsupervised approaches. We first propose a novel framework to characterize groups. The two-layer framework consists of a individual layer and the group layer. At the individual layer, the floor-occupation patterns of the individuals are captured. At the group layer, the identity information of the individuals is not used. We define group cues by aggregating individual cues over time and person, and use them to classify group conversational contexts – cooperative vs competitive and brainstorming vs decision-making. We then propose a framework to discover group interaction patterns using probabilistic topicmodels. An objective evaluation of ourmethodology involving human judgment and multiple annotators, showed that the learned topics indeed are meaningful, and also that the discovered patterns resemble prototypical leadership styles – autocratic, participative, and free-rein – proposed in social psychology

    A framework for mobile activity recognition

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    Bayesian nonparametric multilevel modelling and applications

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    Our research aims at contributing to the multilevel modeling in data analytics. We address the task of multilevel clustering, multilevel regression, and classification. We provide state of the art solution for the critical problem

    Towards scalable Bayesian nonparametric methods for data analytics

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    Resorting big data to actionable information involves dealing with four dimensions of challenges in big data (called four V&rsquo;s): volume, variety, velocity, veracity. In this study, we seek for novel Bayesian nonparametric models and scalable learning algorithms which can deal with these challenges of the big data era.<br /

    Towards scalable Bayesian nonparametric methods for data analytics

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    Resorting big data to actionable information involves dealing with four dimensions of challenges in big data (called four V&rsquo;s): volume, variety, velocity, veracity. In this study, we seek for novel Bayesian nonparametric models and scalable learning algorithms which can deal with these challenges of the big data era.<br /

    Advances in knowledge discovery and data mining Part II

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    19th Pacific-Asia Conference, PAKDD 2015, Ho Chi Minh City, Vietnam, May 19-22, 2015, Proceedings, Part II</p

    Advancing Android Activity Recognition Service with Markov Smoother: Practical Solutions

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    Common use of smartphones is a compelling reason for performing activity recognition with on-board sensors as it is more practical than other approaches, such as wearable sensors and augmented environments. Many solutions have been proposed by academia, but practical use is limited to experimental settings. Ad hoc solutions exist with different degrees in recognition accuracy and efficiency. To ease the development of activity recognition for the mobile application eco-system, Google released an activity recognition service on their Android platform. In this paper, we present a systematic evaluation of this activity recognition service and share the lesson learnt. Through our experiments, we identified scenarios in which the recognition accuracy was barely acceptable. We analyze the cause of the inaccuracy and propose four practical and light-weight solutions to significantly improve the recognition accuracy and efficiency. Our evaluation confirmed the improvement. As a contribution, we released the proposed solutions as open-source projects for developers who want to incorporate activity recognition into their applications
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