113 research outputs found
Knowledge structure, knowledge granulation and knowledge distance in a knowledge base
AbstractOne of the strengths of rough set theory is the fact that an unknown target concept can be approximately characterized by existing knowledge structures in a knowledge base. Knowledge structures in knowledge bases have two categories: complete and incomplete. In this paper, through uniformly expressing these two kinds of knowledge structures, we first address four operators on a knowledge base, which are adequate for generating new knowledge structures through using known knowledge structures. Then, an axiom definition of knowledge granulation in knowledge bases is presented, under which some existing knowledge granulations become its special forms. Finally, we introduce the concept of a knowledge distance for calculating the difference between two knowledge structures in the same knowledge base. Noting that the knowledge distance satisfies the three properties of a distance space on all knowledge structures induced by a given universe. These results will be very helpful for knowledge discovery from knowledge bases and significant for establishing a framework of granular computing in knowledge bases
Towards Privacy-Aware Causal Structure Learning in Federated Setting
Causal structure learning has been extensively studied and widely used in
machine learning and various applications. To achieve an ideal performance,
existing causal structure learning algorithms often need to centralize a large
amount of data from multiple data sources. However, in the privacy-preserving
setting, it is impossible to centralize data from all sources and put them
together as a single dataset. To preserve data privacy, federated learning as a
new learning paradigm has attracted much attention in machine learning in
recent years. In this paper, we study a privacy-aware causal structure learning
problem in the federated setting and propose a novel Federated PC (FedPC)
algorithm with two new strategies for preserving data privacy without
centralizing data. Specifically, we first propose a novel layer-wise
aggregation strategy for a seamless adaptation of the PC algorithm into the
federated learning paradigm for federated skeleton learning, then we design an
effective strategy for learning consistent separation sets for federated edge
orientation. The extensive experiments validate that FedPC is effective for
causal structure learning in a federated learning setting.Comment: This paper has been accepted by the journal IEEE Transactions on Big
Data, and it contains 21 pages, 9 figures and 15 table
DualTable: A Hybrid Storage Model for Update Optimization in Hive
Hive is the most mature and prevalent data warehouse tool providing SQL-like
interface in the Hadoop ecosystem. It is successfully used in many Internet
companies and shows its value for big data processing in traditional
industries. However, enterprise big data processing systems as in Smart Grid
applications usually require complicated business logics and involve many data
manipulation operations like updates and deletes. Hive cannot offer sufficient
support for these while preserving high query performance. Hive using the
Hadoop Distributed File System (HDFS) for storage cannot implement data
manipulation efficiently and Hive on HBase suffers from poor query performance
even though it can support faster data manipulation.There is a project based on
Hive issue Hive-5317 to support update operations, but it has not been finished
in Hive's latest version. Since this ACID compliant extension adopts same data
storage format on HDFS, the update performance problem is not solved.
In this paper, we propose a hybrid storage model called DualTable, which
combines the efficient streaming reads of HDFS and the random write capability
of HBase. Hive on DualTable provides better data manipulation support and
preserves query performance at the same time. Experiments on a TPC-H data set
and on a real smart grid data set show that Hive on DualTable is up to 10 times
faster than Hive when executing update and delete operations.Comment: accepted by industry session of ICDE201
Real-time visualization of clustering and intracellular transport of gold nanoparticles by correlative imaging.
Mechanistic understanding of the endocytosis and intracellular trafficking of nanoparticles is essential for designing smart theranostic carriers. Physico-chemical properties, including size, clustering and surface chemistry of nanoparticles regulate their cellular uptake and transport. Significantly, even single nanoparticles could cluster intracellularly, yet their clustering state and subsequent trafficking are not well understood. Here, we used DNA-decorated gold (fPlas-gold) nanoparticles as a dually emissive fluorescent and plasmonic probe to examine their clustering states and intracellular transport. Evidence from correlative fluorescence and plasmonic imaging shows that endocytosis of fPlas-gold follows multiple pathways. In the early stages of endocytosis, fPlas-gold nanoparticles appear mostly as single particles and they cluster during the vesicular transport and maturation. The speed of encapsulated fPlas-gold transport was critically dependent on the size of clusters but not on the types of organelle such as endosomes and lysosomes. Our results provide key strategies for engineering theranostic nanocarriers for efficient health management
Linear active disturbance rejection control for large onshore wind turbines in full wind speed range
To achieve real-time estimation and compensation of total system disturbances and improve the control performance of wind turbines under complex turbulent wind conditions, three one-order LADRCs were used to reconstruct the wind turbine core control system. A dynamic variable limit LADRC was designed for torque control, a minimum limit LADRC was applied in pitch control, and a LADRC power controller was designed for decoupling torque and pitch control. The stability of the LADRCs was proven using the Lyapunov method. According to the transfer function of wind turbines and empirical equations, the parameters of each LADRC were tuned. Based on the hardware-in-loop simulation (HILS) test platform, the control algorithm of look-up table, PID, RISC, and LADRC were constructed by PLC language. Through comparative studies, it was verified that the algorithm proposed in this paper can reduce generator rotor speed and power fluctuations by about 13.6% and 1.7% at least, and it can also reduce the blade root load force
CRL4 antagonizes SCFFbxo7-mediated turnover of cereblon and BK channel to regulate learning and memory
Intellectual disability (ID), one of the most common human developmental disorders, can be caused by genetic mutations in Cullin 4B (Cul4B) and cereblon (CRBN). CRBN is a substrate receptor for the Cul4A/B-DDB1 ubiquitin ligase (CRL4) and can target voltage- and calcium-activated BK channel for ER retention. Here we report that ID-associated CRL4CRBNmutations abolish the interaction of the BK channel with CRL4, and redirect the BK channel to the SCFFbxo7ubiquitin ligase for proteasomal degradation. Glioma cell lines harbouring CRBN mutations record density-dependent decrease of BK currents, which can be restored by blocking Cullin ubiquitin ligase activity. Importantly, mice with neuron-specific deletion of DDB1 or CRBN express reduced BK protein levels in the brain, and exhibit similar impairment in learning and memory, a deficit that can be partially rescued by activating the BK channel. Our results reveal a competitive targeting of the BK channel by two ubiquitin ligases to achieve exquisite control of its stability, and support changes in neuronal excitability as a common pathogenic mechanism underlying CRL4CRBN–associated ID
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