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63 results about "Average path length" patented technology

Average path length is a concept in network topology that is defined as the average number of steps along the shortest paths for all possible pairs of network nodes. It is a measure of the efficiency of information or mass transport on a network.

Data transmission method of content-centric datacenter network

InactiveCN103179037AMultiple available bandwidthImprove throughputData switching networksExtensibilityContent centric
The invention belongs to a content data network technology, and discloses a data transmission method of a content-centric datacenter network. The method is characterized in that an NDN (Named Data Network) based content-centric routing and forwarding strategy is used; multicast characteristics and expandability of the CCDN (content-centric datacenter network) are guaranteed only by storing a complete PIT (Pending Interest Table) and part of an FIB (forwarding information base), by adopting a Hybrid Content and Location routing strategy and by taking limited storage resources and datacenter network topology of a datacenter switch into consideration; and different from an on-path caching strategy of the NDN, an off-path mechanism that a host provides data caching is adopted by taking large data volume characteristic of the datacenter network and host storage capacity of redundancy into consideration. According to multistage topological characteristics, of the datacenter network, such as Fat-Tree, the CCDN guarantees Distance-aware Content based Forwarding through FIB learning, average path length of data transmission is decreased, and network throughput is improved. By the aid of the adaptive forwarding strategy, the CCDN can still provide accurate and efficient data forwarding in network failure.
Owner:TSINGHUA UNIV

Electroencephalogram signal characteristic extracting method

InactiveCN103110418ARevealing fractal propertiesDiagnostic recording/measuringSensorsComplex network analysisAlgorithm
The invention provides an electroencephalogram signal characteristic extracting method. Network average route lengths and clustering coefficients are calculated through wavelet reconstruction, windowing horizontal visibility map complex network conversion and complex network analysis. The average route lengths and clustering coefficients composed of electroencephalogram signals are calculated to achieve characteristic analysis of electroencephalogram signals and chaotic time sequence signals of the electroencephalogram signals of different rhythms. The electroencephalogram signal characteristic extracting method has the advantages that one-dimensional chaotic time sequences are converted into complex networks, according to analysis of network characteristic parameters, fractal characters of the electroencephalogram signals are revealed, the complex non-linearity signals of the electroencephalogram signals are depicted from a brand new angle. The electroencephalogram signal characteristics can be applied to automatic diagnosis of mental disease and a characteristic identifying module of a brain-machine port system. The electroencephalogram signal characteristic extracting method can effectively distinguish the electroencephalogram signals of an epilepsia attach stage and an epilepsia non-attach stage, the equation p<0.1 is met after Mann-Whitney detection, and the electroencephalogram signal characteristic extracting method can be applied to epilepsia electroencephalogram automatic identification.
Owner:TIANJIN UNIV

Method and apparatus for scale-free topology generation in relay based wireless networks

A method of placing nodes in an area that requires coverage, the method includes the step of creating a network topology such that the average path length is kept to a minimum number of hops at the time of placement of a new node, wherein a limit is placed on a number of neighbors at the time of placement of the new node, the number being a parameter that impacts the average path length, resiliency and capital investment. The new node is connected to at least one node in the network.
Owner:NOKIA CORP

Irregular network

Irregularities are provided in at least one dimension of a torus or mesh network for lower average path length and lower maximum channel load while increasing tolerance for omitted end-around connections. In preferred embodiments, all nodes supported on each backplane are connected in a single cycle which includes nodes on opposite sides of lower dimension tori. The cycles in adjacent backplanes hop different numbers of nodes.
Owner:FUTUREWEI TECH INC

Complex weighted traffic network key node identification method based on semi-local centrality

The invention provides a complex weighted traffic network key node identification method based on semi-local centrality, comprising the following steps: S1, constructing a complex weighted traffic network: constructing a traffic network by adopting an original method, and taking road sections as nodes and road sections as edges; generating a corresponding adjacent matrix; according to the road grade, obtaining a weighted adjacency matrix through the adjacency matrix; S2, processing the weighted adjacency matrix, and analyzing network characteristics: calculating degree distribution of nodes, calculating an average clustering coefficient, and calculating an average path length; analyzing network characteristics according to the degree distribution of the nodes, the average clustering coefficient and the average path length; S3, identifying key nodes by adopting a semi-local centrality algorithm; and S4, sorting the key nodes of the traffic network: sorting the nodes in a descending order according to the importance degree to obtain the key nodes in the traffic network. The road grade is used as the weight, and the semi-local centrality algorithm is adopted, so that the problems thatthe key node identification calculation complexity of the existing traffic network is high and the traffic network characteristics are not considered are solved.
Owner:JIANGSU OPEN UNIV

Abnormal data detection method and system and storage medium

The invention discloses an abnormal data detection method and system and a storage medium, and belongs to the technical field of the Internet. The method comprises the steps that a detection node obtains a pre-established isolated forest model, and the detection node obtains a to-be-detected data subset; the detection node calculates the average path length of each piece of to-be-detected data inthe isolated forest model; the detection node calculates the detection score of each piece of to-be-detected data according to the average path length of each piece of to-be-detected data in the isolated forest model; and the detection node determines a detection result of each piece of to-be-detected data according to the detection score of each piece of to-be-detected data. According to the invention, the to-be-detected data in the to-be-detected data set is distributed to different detection nodes for storage; compared with the prior art, the data storage amount of each detection node is reduced, and the isolated forest model is distributed to different detection nodes, so that abnormal data can be detected on different detection nodes in parallel, the detection speed is increased, andthe detection duration is shortened.
Owner:TENCENT TECH (SHENZHEN) CO LTD

Water system connectivity evaluation method

The invention discloses a water system connectivity evaluation method. The method comprises the steps of digitalizing a river network of a target area to obtain river network data reflecting water system connectivity; establishing an evaluation system for the water system connectivity according to the river network data; selecting principal components in a system by adopting a principal componentanalysis method, and weighting the principal components by adopting an entropy method; and determining a water system connectivity comprehensive score of the area, thereby analyzing the change of thewater system connectivity, wherein the evaluation system for the water system connectivity consists of a primary index layer and a secondary index layer; quantity connectivity indexes include river network density and a water surface rate; structure connectivity indexes include a river network growth coefficient, an area-length ratio and an average path length; and function connectivity indexes include a clustering coefficient, a node degree and average node betweenness. The indexes are classified and counted; the comprehensive score is obtained through the principal component analysis methodand the entropy method; and the change of the water system connectivity is objectively analyzed, so that a basis is provided for river-lake health and water system function analysis.
Owner:HOHAI UNIV

Isolation mechanism-based online photovoltaic hotspot fault detection method

The invention discloses an isolation mechanism-based online photovoltaic hotspot fault detection method, and belongs to the field of photovoltaic power generation system fault detection. The method comprises the following steps of: acquiring a series of real-time operation data of photovoltaic panels in a photovoltaic array; establishing an isolation forest-based photovoltaic array hotspot fault estimation model by utilizing the characteristic that hotspot fault data is less and different; and finally traversing an average path length of each record in the forest so as to obtain a hotspot fault score. According to the method, online measurement can be carried out on the hotspot faults of any photovoltaic panel in the photovoltaic array.
Owner:CHONGQING UNIV

Method for updating a digital road map

Methods are provided for updating a digital road map in which road segments having segment lengths are stored. At least two vehicles are equipped with at least one respective onboard unit generating position readings. If a first set of position readings of a first onboard unit can be associated with a road segment, a first path length is determined based on the position readings of the first set. If a second set of position readings of a second onboard unit can be associated with the road segment, a second path length is determined based on the position readings of the second set. An average path length is calculated based on at least the first and second path lengths. If the average path length deviates from the stored segment length, the average path length is stored as an updated stored segment length of this road segment in the digital road map.
Owner:KAPSCH TRAFFICCOM AG

Group degree based sorting method and model evolution method for important nodes on complex network

ActiveCN105045967AAdvantage lengthDominance Clustering Coefficient PerformanceSpecial data processing applicationsAverage path lengthData mining
The present invention discloses a group degree based sorting method and model evolution method for important nodes on complex network. The method comprises: first, obtaining each order of group degree of each node on a complex network; then calculating each order of overall group degree of the complex network; normalizing each order of overall group degree; calculating a weight of each order of group degree according to a normalization result; finally, each node performing weighting on each order of group degree of the node according to the weight, wherein a result is an importance value of the node; and sorting each node according to the importance value. During model evolution, each time a new node is added, a connecting node of the new node is selected according to the importance values of existing nodes. According to the sorting method and model evolution method provided by the present invention, the importance value of the node is calculated based on the group degree, the obtained node importance sequence is better in line with the actual situation of the network, and the average path length and cluster coefficient property obtained through model evolution both have obvious advantages.
Owner:UNIV OF ELECTRONIC SCI & TECH OF CHINA

Method for characterizing three-dimensional pore network structure parameters of coal rock

A method for characterizing the pore network structure of a coal rock comprises the following steps: obtaining three-dimensional data of a coal rock core pore structure by a CT technology, establishing a three-dimensional digital rock core, and establishing a three-dimensional pore network by using a central axis algorithm; simplifying the model data of the pore network, simplifying pores into nodes, simplifying pore passages into edges, marking the pores, and deriving pore communication information; and using a complex network to characterize the basic information of the network, comprising the total number of the nodes, the total number of the edges, node distribution, the average degree of the nodes, the average path length of the network, the network clustering coefficient, the networkmedia, the network density and the network robustness. Compared with traditional coal rock pore structure analysis methods, the method in the invention increases network property analysis, can analyze the seepage law of different pore network communication structures having the same porosity to achieve the purpose of improving the existing gas recovery rate at the microscopic level, and adopts acomplex network theory to quantitatively characterize the pore structure network parameters of the coal rock in order to accurately and comprehensively characterize the pore network communication property of the coal rock.
Owner:CHINA UNIV OF MINING & TECH

Hyperspectral anomaly detection method based on discrimination forest subspace selection

The invention provides a hyperspectral anomaly detection method based on discrimination forest subspace selection, and the method comprises the steps: randomly selecting a part of pixels from a hyperspectral image, constructing a subspace selection isolated binary tree, and constructing an isolated discrimination forest according to the subspace selection isolated binary tree; traversing the hyperspectral image through the constructed isolated discrimination forest, and calculating the average path length; and calculating an abnormal score value of each pixel to realize detection of an abnormal target. According to the invention, an isolated discrimination forest model is used to repeatedly learn and estimate the distribution rule of background classes and abnormal classes in the image inthe form of subsets. On the basis, an axis parallel subspace selection method is introduced, a wave band which is more beneficial to abnormal information discrimination is selected, the problem that abnormal information is buried due to wave band redundancy and too high dimension is avoided, abnormal score value information of the image is solved, and a final result of hyperspectral image abnormaltarget detection is obtained.
Owner:WUHAN UNIV

Multivariable causal-driven complex electromechanical system service security situation assessment method

ActiveCN111008363ABuild accuratelyGood quantitative representation abilityComplex mathematical operationsNetwork structureEngineering
The invention discloses a multivariable causal-driven complex electromechanical system service security situation assessment method, and belongs to the field of complex electromechanical system service process state evaluation. The method comprises the following steps: firstly, extracting state monitoring data in a complex electromechanical system service process, preprocessing the state monitoring data, calculating a causal measure value between monitoring variables by using a GPDC method, and constructing a causal network topology model capable of reflecting a system state evolution process;extracting features of three dimensions of an average path length, a clustering coefficient and a network structure entropy based on the established causal network model; and reconstructing an abnormal state space of the system according to the extracted abnormal fluctuation information of the three features, normalizing abnormal over-limit indexes on the three dimensions, and effectively evaluating the service state of the complex electromechanical system by using the normalized abnormal indexes.
Owner:XI AN JIAOTONG UNIV

Composite bus subway network model construction method

The invention discloses a composite bus subway network model construction method. Through comprehensively comparing an average clustering coefficient and an average path length of a composite network under non-weighted conditions and a weighted average path length of the network under weighted conditions, an optimal model parameter d can be acquired. The method comprises steps that firstly, a bus subway dual-layer network is constructed according to a dual-layer network model, connection between nodes in the network and connection between network layers of the dual-layer network are both realized. When a subway network is composed to a bus network, node mapping including node fusion and establishment and connection edge re-connection are both processed, and connection edge re-connection is influenced by the model parameter d. Parameters of the composite network under different d value conditions are compared, the optimal value of the d can be determined; buses and subways can be reasonably connected together through the optimal model parameter d, and passenger travel efficiency is improved.
Owner:NANJING UNIV OF POSTS & TELECOMM

Method for constructing bus-metro coupling network based on space network

The present invention relates to a method for constructing a bus-metro coupling network based on a space network. The method is characterized in that: a bus network and a metro network are connected by introducing a pedestrian way, the difference between the essence of the two kinds of transport carriers and difference of passengers flow rate caused by the habit of passengers who choose the transport carrier are taken into account; for the time-consuming issue most stressed by people to travel, the time spent on the car, walking time and transfer waiting time are included in the total time spent on the road to carry out the topology of a bus-metro coupling network based on the space network which is more in line with the actual situation; and in addition, a multi-layer network analysis method is also used to calculate the average path length and the average weighted path length of the network. The results show that the constructed network structure performance is better than the previous topology, so that compared with the previous modeling of single-layer and composite networks, the modeling manner of the method disclosed by the present invention can better reflect the real traffic system.
Owner:NANJING UNIV OF POSTS & TELECOMM

Abnormal user group detection method, device and equipment based on isolated forest

The invention belongs to the field of abnormal data analysis, and discloses an abnormal user group detection method and device based on an isolated forest, computer equipment and a readable storage medium. The method comprises the steps of encoding acquired user behavior characteristic data; carrying out dimension reduction on the coded user behavior characteristic data to obtain to-be-processed characteristic data, randomly selecting a user behavior characteristic from the to-be-processed characteristic data, and constructing an isolated forest according to a corresponding segmentation value;calculating the path length from the root node of the isolated tree to the leaf node and the average path length; and finally, calculating an abnormal score of each piece of to-be-processed characteristic data, and taking user output corresponding to the to-be-processed characteristic data of which the abnormal score is greater than a first preset value as an abnormal user; and calculating the similarity among the abnormal users, and performing grouping processing to obtain abnormal user groups. The invention further relates to a blockchain technology. The user behavior characteristics are deployed in the blockchain in a distributed manner. By adopting the method, the technical problem of inaccurate data processing and analysis is solved.
Owner:CHINA PING AN PROPERTY INSURANCE CO LTD

Power system transient stability simulation method based on network node numbering optimization

InactiveCN104578055AReduce the total number of times of return substitution and multiplicationReduce path lengthAc network circuit arrangementsNODALElectric power system
The invention discloses a power system transient stability simulation method based on network node numbering optimization. A sparse vector technology is widely applied to power system calculation. However, existing network node numbering methods applied to sparse vectors aim to achieve the purpose that the average forward and backward substitution calculation amount of all nodes is the smallest, and the characteristic that forward and backward substitution only needs to be conducted on active nodes during transient stability simulation is not taken into consideration. According to the power system transient stability simulation method, the characteristic that the sparse structure of an independent vector of a network algebraic equation and the sparser structure of a solution vector are identical and decided during transient stability simulation is fully considered, the network nodes are divided into active nodes and passive nodes, the out-degrees of the nodes, the number of active precursor nodes and the number of the precursor nodes are fully considered, the network nodes are numbered, under the condition that the number of newly increased elements of a factor table is small, the average path length of the active nodes is made the smallest, and no requirement for the path tree lengths of the passive nodes exists. By the adoption of the power system transient stability simulation method, the calculation amount of solving a differential algebra equation set during transient stability simulation of a power system can be remarkably reduced.
Owner:ZHEJIANG UNIV

Main body complexity analyzing evaluation method based on concepts model

An analysis and evaluation method of the body complexity based on a conceptual model mainly comprises the following steps. The first step is to get the needed version of the analysis body which is converted to the form of a DAG graph. The second step is to sort all the concepts inside a single body from high to low according to the importance, calculate and store the number of the paths, the longest path length and the average path length of every concept being sorted in the form of a table, and analyze the properties and rules of the distributing complexity of the single body. In the second step, the concepts with the same degree of importance are sorted from low to high according to the average length of the path. From the mutual reliable relationship among the concept, relation and path, the invention overcomes the deficiencies of the non-systematic and non-complete evaluation and analysis method, the lack of convincingness of the reasonability verification of the analysis and the insufficiency of the analysis to the reasons for the change of the complexity through the analysis of the body conceptual model, and has wide applicable scope.
Owner:TONGJI UNIV

A container shipping network port importance evaluation method based on integrated centrality

The invention discloses a container shipping network port importance evaluation method based on integrated centrality, which comprises the following steps: S1, obtaining port route information in thecontainer transportation process, and constructing a container shipping network database according to the port route information; S2, constructing a container shipping network model; S3, calculating the average path length, the aggregation coefficient, the degree and the distribution function thereof, and further analyzing the network type of the contain shipping network model; S4, calculating thescores of degree centrality, approaching centrality and intermediary centrality of each port in the container shipping network model, and calculating the comprehensive centrality scores of each portby the comprehensive centrality method, and then ranking and evaluating the importance of each port in the container shipping network model. The invention provides an evaluation mode of port importance, carries out importance analysis and research on ports in a container shipping network, and provides a reference basis for investment construction of a marine port and optimization of a shipping network.
Owner:WUHAN UNIV OF TECH

Grid structure vulnerability node identification method

InactiveCN107093152AVulnerability displayData processing applicationsNODALPower grid
The invention discloses a method for identifying vulnerable nodes of a grid structure, which includes: 1) reading in the node connection relationship data of the grid topology structure, and configuring the number k of pre-attacked or destroyed nodes; 2) calculating two nodes based on the network topology structure The shortest path between and the average path length L of the network; 3) Calculate the network efficiency E; 4) Delete the relevant path connected to the node and recalculate the network efficiency Ei of the point; 5) Calculate the network efficiency Ei of each node based on the network efficiency Ei 6) Based on the node vulnerability index, use the original input node connection relationship data to obtain the network topology diagram; 7) Remove the node with the largest node vulnerability value Vi, and loop through steps 2)-6) to obtain the second vulnerability node; 8) loop k times, and finally complete the identification of N-k vulnerability points. The vulnerability node identification method described above can dynamically identify the node vulnerability, taking into account the change of the node vulnerability under the changed network topology after the node is deleted.
Owner:杭州创云一智科技有限公司

Test method for physical design similarity of circuit

The invention discloses a test method for physical design similarity of a circuit. The method comprises the following steps of: carrying out equivalence on components or modules in a circuit principle graph as nodes, carrying out equivalence on connection between components or modules, and building a complex network of circuit physical design; calculating the following four characteristic parameters of the complex network of circuit physical design: a node degree, node betweenness, a node cluster coefficient and a node average path length; and carrying out a Kolmogorov-Sirnov test of characteristic parameter accumulation distribution on a compared circuit physical design complex network, and obtaining overall similarity of each network characteristic parameter. By the adoption of the test method, according to complex network characteristics indicated by different circuit physical design, quantitative analysis on circuit physical design similarity is given out, and misjudgment brought by the affect of an subjective factor due to observation of a circuit design profile and the like in patent tort dispute of the circuit physical design is reduced.
Owner:HUNAN UNIV

Logistics unmanned aerial vehicle abnormal behavior intelligent identification method based on isolated forest method

The invention discloses a logistics unmanned aerial vehicle abnormal behavior intelligent identification method based on an isolated forest method. The logistics unmanned aerial vehicle abnormal behavior intelligent identification method comprises the following specific steps: 1, carrying out outlier calculation and observation on logistics unmanned aerial vehicle flight data; 2, constructing isolated trees according to the input data, combining the single isolated trees with the data features, and constructing a set of isolated forests; 3, calculating the average path length of each isolated tree and the expectation E (h (x)) of the path length, and finally solving the abnormal score of the sample through the E (h(x)); 4, dividing the abnormal data according to the calculation result of the abnormal score; 5, substituting the longitude, latitude, elevation angle, climbing speed and abnormal score data into the model, and evaluating the accuracy. The method has the advantages that intelligent learning and efficient detection of unmanned aerial vehicle abnormal behaviors are achieved, the pressure of high-speed development unmanned aerial vehicle operation on flight safety and public safety can be effectively relieved, and thereby a technical foundation is laid for development of the unmanned aerial vehicle logistics distribution industry.
Owner:XIHUA UNIV

Information physical system planning method for balancing system failure risk

ActiveCN107277828ATake heterogeneity into accountMathematical quantification of heterogeneityNetwork planningRobustificationTelecommunications link
The invention discloses an information physical system planning method for balancing system failure risk. The method comprises the following steps: constructing a network topology by taking a CPS primary station and a terminal as nodes and taking a communication link as a side; according to an evaluation system of the CPS, judging matrix according to the network heterogeneity characteristic construction by using an expert scoring method; when judging that the matrix satisfies a consistency requirement, generating the general node weight of a CPS network node; establishing a CPS risk balancing planning model, performing the important identification on the network node based on the Gaussian potential, and resolving by using a binary genetic algorithm so as to acquire a new network topology; defining the network efficiency, the communication robustness and the average path length scale for evaluating the reliability and the efficiency of the network. By using the method disclosed by the invention, the network efficiency and the capacity of resisting the failure risk are improved, the complicated CPS network planning is realized, and the method is suitable for CPS application environments with different scales and characteristics.
Owner:TIANJIN UNIV

Brain volume atrophy prediction method based on brain function network

ActiveCN110298479AAchieve early preventionPrecautionaryMedical data miningForecastingAlgorithmBrain function
The invention discloses a brain volume atrophy prediction method based on a brain function network. The brain volume atrophy prediction method comprises the following steps: 1, processing function image data, analyzing the function data and calculating a brain volume; 2, establishing a brain function network; 3, calculating the average path length and the aggregation coefficient of the brain network; and 4, establishing a prediction model of brain volume atrophy. Through the steps, the brain volume atrophy prediction method establishes the mapping relation between the topological characteristics of the brain function network and the brain atrophy information, and provides the brain volume atrophy prediction method based on the brain function network. The brain volume atrophy prediction method has early warning, systematicness and robustness, and the research result of the brain volume atrophy prediction method can provide powerful method support for future prediction of brain volume atrophy, and can achieve early prevention and treatment of brain atrophy.
Owner:BEIHANG UNIV

Harmonic data anomaly detection method, terminal equipment and storage medium

The invention relates to a harmonic data anomaly detection method, terminal equipment and a storage medium. The method comprises the following steps: S1, collecting harmonic current data generated bythe equipment in a period of time sequence as a data set; S2, constructing a forest composed of a plurality of isolated trees according to the collected data set; S3, calculating the path length of each harmonic data in the data set; S4, calculating the average path length of all data in the data set; S5, calculating an abnormal score of each harmonic data; and S6, determining whether each harmonic data is abnormal or not according to the abnormal score of each harmonic data. The invention achieves the abnormality detection of the harmonic data through the isolated forest algorithm, reduces the expenditure of manpower and material resources, improves the economic benefits and service quality, improves the management level of a power grid, and also improves the safety operation capability of the power grid.
Owner:XIAMEN UNIV OF TECH

Complex supply chain network node search model and implementation method thereof

InactiveCN108090644AFast and accurate publicationQuick and accurate discoveryResourcesManufacturing computing systemsNode clusteringRelationship - Father
The invention provides a complex supply chain network node search model which is formed by the following steps that step 1, different unit entities of a supply network act as the nodes of the network,the links among the units act as the edges of the network, and the direction of the edges represents that the last node of the supply network points to the next node; and the weight of the edges represents the number of the child nodes included in the father node; step 2, when one node is additionally arranged and connection is established, the new node is connected to the top ranking number of original nodes so as to form a complex supply chain network in which the majority cascade nodes are governed by the minority gathering nodes; and step 3, the degree of the node is the number of the edges connected with the node in the complex supply chain network; and the average path length of the node is the number of the edges on the shortest path of the two nodes in the complex supply chain network, and the aggregation coefficient in the complex supply chain network is the parameter for measuring the node clustering condition in the complex supply chain network.
Owner:ZHEJIANG UNIVERSITY OF SCIENCE AND TECHNOLOGY

Advertisement distributing system and advertisement distributing method

An objective is to appropriately distribute an advertisement about a communication service. A cluster extractor 11 extracts a plurality of clusters, based on communication records between communication terminals 30. A clustering coefficient calculator 12, an average path length calculator 13, and a degree distribution calculator 14 calculate a clustering coefficient, an average path length in an advertisement distribution target cluster, and a degree distribution, respectively, based on communication records between communication terminals belonging to an advertisement distribution target cluster. An advertising strategy determiner 15 determines an advertising strategy, based on the clustering coefficient and the average path length, and a distribution target determiner 16 determines a distribution target terminal, based on the degree distribution and the advertising strategy. A determined target notifier 17 notifies a communication management device 20 of the distribution target terminal and the advertising strategy and an advertisement distributor 21 distributes an advertisement according to the advertising strategy to the distribution target communication terminal.
Owner:NTT DOCOMO INC

Abnormal data detection method and device, computer equipment and storage medium

The invention relates to the field of artificial intelligence, and provides an abnormal data detection method and device, computer equipment and a storage medium. The method comprises the steps: acquiring the user driving behavior characteristics; screening out specified user driving behavior characteristics from the specified user driving behavior characteristic data, constructing a specified isolated tree based on a preset segmentation value, and generating a corresponding isolated forest; calculating the path length of the user driving behavior characteristic data from the root node of the isolated tree to each leaf node; calculating the average path length of all the user driving behavior characteristic data in the isolated forest; calculating an anomaly detection score of the driving behavior characteristic data of each user; and generating an anomaly detection result corresponding to each piece of user driving behavior feature data based on the anomaly detection score. The abnormal data can be quickly and accurately identified from all the user driving behavior characteristic data. The method can also be applied to the field of block chains, and the data such as the anomaly detection score can be stored on the block chain.
Owner:PING AN TECH (SHENZHEN) CO LTD

Distributing advertisements to distribution target nodes based on a clustering coefficient

A cluster extractor extracts a plurality of clusters based on communication records between communication terminals. A clustering coefficient calculator, an average path length calculator, and a degree distribution calculator calculate a clustering coefficient, an average path length in an advertisement distribution target cluster, and a degree distribution, respectively, based on communication records between communication terminals belonging to an advertisement distribution target cluster. An advertising strategy determiner determines an advertising strategy, based on the clustering coefficient and the average path length, and a distribution target determiner determines a distribution target terminal, based on the degree distribution and the advertising strategy. A determined target notifier notifies a communication management device of the distribution target terminal and the advertising strategy and an advertisement distributor distributes an advertisement according to the advertising strategy to the distribution target communication terminal.
Owner:NTT DOCOMO INC
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