727 research outputs found
A new universal bundle theory
Universal Bundle Theory (UBT) holds that objects are fundamentally identical with bundles of universals. Universals are multiply instantiable properties. One popular objection to UBT concerns the possibility of distinct indiscernibles. There are mainly two replies in the literature, corresponding to two representative UBTs, which I shall call the Identity-View and the Instance-View. Each view faces serious problems. This paper proposes a new version of UBT and argues that it is better than these other two versions
STIMULATED RAMAN SCATTERING IN MICRO SPHERE RESONATORS
Micro sphere resonators that hold optical whisper gallery modes (WGMs) provide an innovative option for implementing micro optical resonators. The unique properties of the micro sphere resonator make it capable to introduce resonance for various optical phenomenon, like stimulated Raman scattering (SRS), in micron scale.
This thesis illustrates the characteristics of micro sphere resonators and demonstrates the resonance-enhanced SRS in micro sphere resonators with reduce threshold power. Both theoretical and experimental results are presented. Coupling model for WGM is derived in transfer matrix method. Simulation analyses for mode pattern of WGMs are solved based on mathematic model and finite element method (FEM). Fabrication of devices like silica binocular tapered fiber couplers and silica micro spheres is developed. The measurement setup is established, based on which characteristics of silica micro sphere resonators are measured. The result is compared to theoretical analysis to obtain the Q-factor of the resonator. The correspondence of the Q-factor on the coupling condition and the degradation of the Q factor over time are further discussed. SRS in silica micro sphere resonators is demonstrated with a reduced threshold power as low as 1 mW, which is 2 to 3 orders lower than that in fiber-based devices. Fabrication and measurement on chalcogenide glass micro sphere resonators are presented, according to which the threshold for SRS is also calculated. Further work is needed to improve the Q-factor of the chalcogenide glass micro sphere resonator for demonstrating the resonance-enhanced SRS in this material
The ontology of haecceities
This thesis deals with the Problem of Distinction, i.e. what explains the distinction of two substances, especially when they are qualitatively indiscernible? It argues that the best solution to this problem is an ontology of haecceities, properties like “being identical with X” which is unique for X and responsible for its individuation.
This is achieved in two steps. In the first half of the thesis (Chapters 2 to 5), the nature of the Problem of Distinction is clarified and Principles of Evaluations of the solution to the Problem of Distinction are set out. Then based on these Principles, the thesis argues against the main extant non-haecceity solutions to the Problem of Distinction including the Spacetime Points Solution, Bare Particularism, Trope Theory, and the Universal Bundle Theory.
In the second half of the thesis (Chapters 6 to 9), it develops a novel ontology of haecceities. A Haecceity Mereology with three rules is proposed. According to this ontology, the reality is constituted by two fundamental kinds of properties, universals and haecceities. An individual substance is a special mereological sum of a haecceity and its correspondent universals. Hence, there are two distinct substances because of the distinction of two haecceities. Besides solving the Problem of Distinction, the ontology of haecceities also explains many other things such as the unity of substances. Further, we argue that, although our knowledge of substances is epistemically fallible, the relationship between a haecceity and its correspondent universals is metaphysically necessary
On the Landscape of One-hidden-layer Sparse Networks and Beyond
Sparse neural networks have received increasing interests due to their small
size compared to dense networks. Nevertheless, most existing works on neural
network theory have focused on dense neural networks, and our understanding of
sparse networks is very limited. In this paper, we study the loss landscape of
one-hidden-layer sparse networks. We first consider sparse networks with linear
activations. We show that sparse linear networks can have spurious strict
minima, which is in sharp contrast to dense linear networks which do not even
have spurious minima. Second, we show that spurious valleys can exist for wide
sparse non-linear networks. This is different from wide dense networks which do
not have spurious valleys under mild assumptions
Urban greenery and mental wellbeing in adults: Cross-sectional mediation analyses on multiple pathways across different greenery measures
Multiple mechanisms have been proposed to explain how greenery enhances their
mental wellbeing. Mediation studies, however, focus on a limited number of
mechanisms and rely on remotely sensed greenery measures, which do not
accurately capture how neighborhood greenery is perceived on the ground. To
examine: 1) how streetscape and remote sensing-based greenery affect people's
mental wellbeing in Guangzhou, China; 2) whether and, if so, to what extent the
associations are mediated by physical activity, stress, air quality and noise,
and social cohesion; and 3) whether differences in the mediation across the
streetscape greenery and NDVI exposure metrics occurred. Mental wellbeing was
quantified by the WHO-5 wellbeing index. Greenery measures were extracted at
the neighborhood level: 1) streetscape greenery from street view data via a
convolutional neural network, and 2) the NDVI remote sensing images. Single and
multiple mediation analyses with multilevel regressions were conducted.
Streetscape and NDVI greenery were weakly and positively, but not
significantly, correlated. Our regression results revealed that streetscape
greenery and NDVI were, individually and jointly, positively associated with
mental wellbeing. Significant partial mediators for the streetscape greenery
were physical activity, stress, air quality and noise, and social cohesion;
together, they explained 62% of the association. For NDVI, only physical
activity and social cohesion were significant partial mediators, accounting for
22% of the association. Mental health and wellbeing and both streetscape and
satellite-derived greenery seem to be both directly correlated and indirectly
mediated. Our findings signify that both greenery measures capture different
aspects of natural environments and may contribute to people's wellbeing by
means of different mechanisms
FLUORESCENT LIGHT-UP PROBES WITH AGGREGATION-INDUCED EMISSION (AIE) CHARACTERISTICS
Ph.DDOCTOR OF PHILOSOPH
Institutional Entrepreneurship and Acquiring Legitimacy of Social Commerce Platform
Research on social commerce has ignored the process and mechanism of institutional entrepreneurship. Based on the institutional theory, we use qualitative research methods to study the process of institutional entrepreneurship of social commerce. This paper also analyzes the legitimacy acquisition process of social commerce from the perspective of institutional contradiction and institutional logic. We found that, firstly, institutional contradictions existing in traditional e-commerce organization field are the fundamental motivation for institutional entrepreneurship of social commerce platform. Secondly, social commerce entrepreneur proposed new institutional logics which are the solutions according to the institutional contradictions existing in traditional e-commerce organization field. Thirdly, because of the new institutional logics proposed by institutional entrepreneur, social commerce platform acquired cognitive legitimacy and normative legitimacy. Finally, the factors of organizational field influence the whole process of institutional entrepreneurship of social commerce
Self-supervised deep clustering of single-cell RNA-seq data to hierarchically detect rare cell populations.
Single-cell RNA sequencing (scRNA-seq) is a widely used technique for characterizing individual cells and studying gene expression at the single-cell level. Clustering plays a vital role in grouping similar cells together for various downstream analyses. However, the high sparsity and dimensionality of large scRNA-seq data pose challenges to clustering performance. Although several deep learning-based clustering algorithms have been proposed, most existing clustering methods have limitations in capturing the precise distribution types of the data or fully utilizing the relationships between cells, leaving a considerable scope for improving the clustering performance, particularly in detecting rare cell populations from large scRNA-seq data. We introduce DeepScena, a novel single-cell hierarchical clustering tool that fully incorporates nonlinear dimension reduction, negative binomial-based convolutional autoencoder for data fitting, and a self-supervision model for cell similarity enhancement. In comprehensive evaluation using multiple large-scale scRNA-seq datasets, DeepScena consistently outperformed seven popular clustering tools in terms of accuracy. Notably, DeepScena exhibits high proficiency in identifying rare cell populations within large datasets that contain large numbers of clusters. When applied to scRNA-seq data of multiple myeloma cells, DeepScena successfully identified not only previously labeled large cell types but also subpopulations in CD14 monocytes, T cells and natural killer cells, respectively
ILCAS: Imitation Learning-Based Configuration-Adaptive Streaming for Live Video Analytics with Cross-Camera Collaboration
The high-accuracy and resource-intensive deep neural networks (DNNs) have
been widely adopted by live video analytics (VA), where camera videos are
streamed over the network to resource-rich edge/cloud servers for DNN
inference. Common video encoding configurations (e.g., resolution and frame
rate) have been identified with significant impacts on striking the balance
between bandwidth consumption and inference accuracy and therefore their
adaption scheme has been a focus of optimization. However, previous
profiling-based solutions suffer from high profiling cost, while existing deep
reinforcement learning (DRL) based solutions may achieve poor performance due
to the usage of fixed reward function for training the agent, which fails to
craft the application goals in various scenarios. In this paper, we propose
ILCAS, the first imitation learning (IL) based configuration-adaptive VA
streaming system. Unlike DRL-based solutions, ILCAS trains the agent with
demonstrations collected from the expert which is designed as an offline
optimal policy that solves the configuration adaption problem through dynamic
programming. To tackle the challenge of video content dynamics, ILCAS derives
motion feature maps based on motion vectors which allow ILCAS to visually
``perceive'' video content changes. Moreover, ILCAS incorporates a cross-camera
collaboration scheme to exploit the spatio-temporal correlations of cameras for
more proper configuration selection. Extensive experiments confirm the
superiority of ILCAS compared with state-of-the-art solutions, with 2-20.9%
improvement of mean accuracy and 19.9-85.3% reduction of chunk upload lag.Comment: This work has been submitted to the IEEE Transactions on Mobile
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