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71 results about "Unsupervised algorithm" patented technology

Unsupervised learning algorithms are machine learning algorithms that work without a desired output label. A supervised machine learning algorithm typically learns a function that maps an input x into an output y, while an unsupervised learning algorithm simply analyzes the x’s without requiring the y’s.

Automatic marking method for natural scene image

The invention discloses an automatic marking method for a natural scene image, and belongs to the field of computer vision. The method comprises the following steps that image features are extracted; an original image is segmented by adopting an unsupervised algorithm so that a super-pixel graph is generated; modeling of a pixel marking model is performed through CRF and significant prior information is embedded in the model; and the model is solved and pixel marking is realized. The CRF is adopted to act as a basic model, the significant detection prior information is introduced in the CRF model, and separation of a foreground target and a background can be realized through significant detection and a universal connection association relation between the super-pixels is constructed in a foreground target area. The significant detection prior information is introduced so that the classification precision of the foreground target in the image can be effectively enhanced. Meanwhile, the problem of classification "crosstalk" of the foreground and the background can be effectively solved by the separation of the foreground area and the background area. Therefore, the overall classification precision of pixel marking can be effectively enhanced by the method, and the method has substantial effect for the scenes of relatively complex foreground target profiles and subareas of highly different colors and textures.
Owner:江苏优利信科技有限公司

Unsupervised algorithm-based card raising number detection method and system

The embodiment of the invention provides a card raising number detection method and system based on an unsupervised algorithm. The method comprises the following steps: 1) collecting operator electriccanal login log data; 2) acquiring login behavior characteristics of the user from the login log data, taking the login behavior characteristics of the user as a first characteristic set, and takinghigh-dimensional statistical characteristics corresponding to the login behavior characteristics of the user as a second characteristic set; 3) identifying each abnormal group corresponding to the first feature set by using an isolated forest algorithm; clustering the features in the second feature set by using a clustering algorithm to obtain a plurality of clusters, and obtaining abnormal clusters according to the stability of the login behavior features; and 4) determining whether the number corresponding to the abnormal group belongs to the card raising number or not according to the number of the numbers clustered into the abnormal cluster in the numbers corresponding to the abnormal group and the proportion of the numbers corresponding to the abnormal group. By applying the embodiment of the invention, the identification accuracy of the card raising number can be improved.
Owner:SHANGHAI GUAN AN INFORMATION TECH

Method and apparatus for generating adaptive security model

InactiveUS20120159622A1Detecting an external attack more rapidly and accuratelyMemory loss protectionError detection/correctionThe InternetAdaptive security
A method for generating an adaptive security model includes: generating an initial security model with respect to data input via an Internet during a learning process; and continuously updating the initial security model by applying characteristics of the input data during an online process. Said generating an initial security model includes: matching the input data with a unit having a weight vector with distance closest to the input data using a first unsupervised algorithm; generating a map composed of weight vectors of units; and performing a second unsupervised algorithm using the weight vectors forming the map as input values to partition an attack cluster.
Owner:ELECTRONICS & TELECOMM RES INST

Traffic identification method and device, electronic device and storage medium

The invention discloses a traffic identification method and device, an electronic device and a storage medium. The method comprises the following steps of monitoring the flow of a target service, andcalculating the flow mean value ratio of the target service; if the calculated traffic mean value ratio exceeds a first threshold value, determining a traffic sudden increase moment; obtaining the user data corresponding to the traffic sudden increase moment, and screening out abnormal user data in the user data based on a graph semi-supervised method; and determining an abnormal user according tothe abnormal user data, and identifying the flow of the abnormal user as abnormal flow. According to the technical scheme, a mean shift thought is adopted to the monitor traffic sudden increase, theabnormal traffic generation is determined, a graph semi-supervised learning algorithm can represent the similarity of access behaviors which are not intercepted, the interpretability is high, the requirement for data is lower than that of an unsupervised algorithm, and an obtained result is more stable; and the omission is avoided through a mode of firstly determining the abnormal users and then identifying the abnormal flow.
Owner:BEIJING SANKUAI ONLINE TECH CO LTD

Document keyword extraction method and device based on BERT model

A document keyword extraction method based on a BERT model comprises the following steps that each document in a document set is coded through the BERT model, and the attention weight of document semantics generated by the BERT model to each sub-word is extracted; restoring the sub-words into words, and aggregating the attention weights of the sub-words into the attention weight of the words; the attention weights of the same word at different positions in the document are aggregated into the attention weight, irrelevant to the position, of the word, and the attention weight is recorded as p (wordweight '2jeemaa2' doc); calculating the attention weight of each word on the document set, and recording the attention weight of each word on the document set as p (wordweight '2jeemaa2' corpus); and combining the p (wordweight '2jeemaa2' doc) and the p (wordweight '2jeemaa2' corpus), and selecting N words with the highest final attention weight as the keyword of the document. According to the method, the BERT model is used for extracting the document semantic representation to calculate the word attention weight distribution, the keyword extraction is finally realized, the word frequency information is considered, the problem that the semantics is ignored by the traditional unsupervised algorithm is effectively solved, and the keyword extraction accuracy and recall rate are improved.
Owner:INST OF COMPUTING TECH CHINESE ACAD OF SCI

Conditional random field framework embedding registering information weak supervise image scene understanding method

The invention discloses a conditional random field framework embedding registering information weak supervise image scene understanding method comprising the following steps: extracting training image characteristics; using a non-supervise algorithm to segment the training image so as to form a ultra pixel graph; considering structure relation information in the training image, between the training images and between registering ultra pixels, and using CRF to model a pixel mark training model; solving the model to obtain training image ultra pixel marks; combining the pixel mark training model with the extracted test image characteristics and the ultra pixel graph, the solved training image ultra pixel marks, the obtained structure relation information in the test image, between test images and between the test image and the registered training image, thus obtaining a modeling pixel mark testing model; solving the model to obtain ultra pixel marks in the test image. The method uses an image registering algorithm to dig the registering structure information between images, thus building the ultra pixel relations between the images; the registering information is introduced, thus effectively improving the multi-image model classification precision.
Owner:NANJING NORMAL UNIVERSITY

Data-driven unsupervised algorithm for analyzing sensor data to detect abnormal valve operation

The invention relates to a data-driven unsupervised algorithm for analyzing sensor data to detect abnormal valve operation. A computer-implemented method, system, and computer program product are provided. A plurality of maintenance messages (MMSGs) are identified. Each MMSG is associated with at least one shut-off valve. A sensor parameter is identified based on an analysis of sensor parameters associated with the shut-off valves of each MMSG. A threshold value for the sensor parameter is identified as being associated with abnormal operation of the respective shut-off valves. A sensor associated with a first shut-off valve captures values for the sensor parameter during a first and second predefined time period, the first and second predefined time periods associated with an opening anda closing of the first shut-off valve. Upon determining that a difference between the maximum values of the sensor values captured during the first and second predefined time periods exceeds the firstthreshold value, a determination is made that the first shut-off valve is operating abnormally.
Owner:THE BOEING CO

Aircraft liquid cooling failure fault diagnosis method based on stacked sparse noise reduction auto-encoder

The invention discloses an aircraft liquid cooling failure fault diagnosis method based on a stacked sparse noise reduction auto-encoder. The method comprises the following specific steps: 1, performing time series data acquisition and normalization processing; 2, establishing and training a fault feature extraction model based on the stacked sparse noise reduction auto-encoder; 3, establishing and training a multi-layer perceptron classifier; and 4, performing airplane liquid cooling failure fault diagnosis. According to the method, data features automatically extracted from related parameterdata of the liquid cooling system based on an unsupervised algorithm are used as fault diagnosis criteria; and compared with the prior art, the method has the advantages that traditional manual faultcriteria made based on expert knowledge are replaced, information of related parameters in the liquid cooling system is fully mined, the requirements for manual experience and expert knowledge are reduced, and the obtaining efficiency, cost and accuracy of the fault criteria are improved. Fault diagnosis is carried out by using multiple paths of signal parameters, so that the airplane liquid cooling failure fault can be effectively diagnosed, and the practical engineering application value is relatively high.
Owner:BEIHANG UNIV

Anomaly detection method and system based on log information, and computer equipment

The invention relates to an anomaly detection method and system based on log information, and computer device. The anomaly detection method based on the log information comprises the following steps: obtaining structured data: exporting a log, extracting attribute features of the log through a regular expression, and converting the attribute features into structured data; performing unsupervised detection model training: carrying out dimensionality reduction on the structured data, carrying out data clustering on the internal structure of the structured data by utilizing a clustering algorithm, and repeating the step to obtain an unsupervised recognition model; performing supervised detection model training: constructing time sequence feature data by using a timestamp according to the structured data, and training a supervised recognition model based on the time sequence feature data; and performing anomaly detection: importing a to-be-detected log into the unsupervised recognition model and the supervised recognition model, and performing anomaly detection. By using a supervised algorithm and an unsupervised algorithm, abnormal log recognition is carried out from different angles, and the log anomaly detection effect is greatly improved.
Owner:SHANGHAI MININGLAMP ARTIFICIAL INTELLIGENCE GRP CO LTD

Operation and maintenance data feature selection method and device

The invention provides an operation and maintenance data feature selection method and device, and the method comprises the steps: obtaining an original data sample; preprocessing the original data sample to obtain a multi-dimensional data sample; calculating the multi-dimensional data sample through a preset algorithm, and when the calculated value of the cost expression is minimum, outputting the feature weight of each dimension of data; and screening out a target data set from the multi-dimensional data sample according to the feature weight of each dimension of data and a preset weight threshold. Therefore, a feature selection method capable of adapting to an actual operation and maintenance environment is provided, the method does not depend on experience of operation and maintenance personnel, a large amount of historical data and manual annotation, and does not depend on one algorithm to detect the self effect, so that the method can adapt to various downstream early warning algorithms or analysis algorithms, and combines the advantages of a supervised algorithm and an unsupervised algorithm; the method not only can learn the characteristics of historical faults and position the high-frequency abnormal dimensions, but also can effectively judge the dimensions without faults in history.
Owner:TSINGHUA UNIV

User information classification method and device

The embodiment of the invention provides a user information classification method and device, and the method comprises the steps: carrying out the model training of a first training feature variable with a label, obtaining a first user information classification model, carrying out the clustering of a second training feature variable in an intermediate state through an unsupervised algorithm, andthen determining the label; therefore, the limitation of artificial identification is broadened, and a second user information classification model is further obtained after model training is carriedout by using the second training feature variable after label determination. And then user information classification is performed on the original first training feature variable based on the second user information classification model and then training of the third user information classification model is performed so that the data utilization rate can be enhanced by utilizing the full-amount intermediate sample data, and the data utilization rate can be enhanced due to increase of the data utilization rate. The modeling effect and the user information classification effect of the original first user information classification model are also improved, and the multiple user information classification models are generated, so that the method is more convenient and flexible in actual use.
Owner:SHANGHAI ICEKREDIT INC

Maintenance shop rating method, system, electronic device and storage medium

The invention discloses a maintenance shop rating method, system, electronic device and storage medium. That method includes: acquiring characteristic data of the maintenance shop; performing K-meansclustering operation on all the characteristic data to obtain K class families, wherein K is a positive integer; the mapping relationship between the K class families and the K grades is established,and the repair shop rating result is obtained according to the K grades. The maintenance shop rating method provided by the present application characterizes the maintenance ability of the maintenanceshop through the characteristic data, and performs K-means clustering operation on all the characteristic data to obtain K class families, corresponding to K ranks of evaluation results. In the rating process of the maintenance shop, the unsupervised algorithm is implemented to avoid the inaccurate rating results caused by human subjective factors.
Owner:LAUNCH TECH CO LTD
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