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386 results about "Score matrix" patented technology

Scoring Matrix. Scoring matrices are used to determine the relative score made by matching two characters in a sequence alignment. These are usually log-odds of the likelihood of two characters being derived from a common ancestral character.

Method and apparatus for coordination of motion determination over multiple frames

PCT No. PCT / EP96 / 01272 Sec. 371 Date Nov. 21, 1997 Sec. 102(e) Date Nov. 21, 1997 PCT Filed Mar. 22, 1996 PCT Pub. No. WO96 / 29679 PCT Pub. Date Sep. 26, 1996The present invention concerns improved motion estimation in signal records. A method for estimating motion between one reference image and each frame in a sequence of frames, each frame consisting of a plurality of samples of an input signal comprises the steps of: transforming the estimated motion fields into a motion matrix, wherein each row corresponds to one frame, and each row contains each component of motion vector for each element of the reference image; performing a Principal Component Analysis of the motion matrix, thereby obtaining a motion score matrix consisting of a plurality of column vectors called motion score vectors and a motion loading matrix consisting of a plurality of row vectors called motion loading vectors, such that each motion score vector corresponds to one element for each frame, such that each element of each motion loading vector corresponds to one element of the reference image, such that one column of said motion score matrix and one motion loading vector together constitute a factor, and such that the number of factors is lower than or equal to the number of said frames; wherein the results from the Principal Component Analysis on the motion matrix are used to influence further estimation of motion from the reference image to one or more of the frames.
Owner:IDT INT DIGITAL TECH DEUTLAND

Internet information product recommending method based on matrix decomposition

The invention discloses an internet information product recommending method based on matrix decomposition. The method comprises the following steps of: 1) obtaining the user scoring record to the information product; 2) obtaining the social relationship record between internet users; 3) respectively building a scoring matrix and a social matrix according to the types of a target user and a target product; 4) learning a user feature vector and a product feature vector through a matrix decomposition technology; 5) calculating the scores of different products scored by the target user according to the feature vectors, so as to recommending the favorite products of the user according to the scores. In the method, analysis on user social relationship is introduced, and personalized product recommendation is provided for the target user based on the production type information. The calculation is simple and quick, and the method has better expandability and adaptability, so that the method is suitable for highly dynamic and immense amount of product-oriented recommendation for the internet users.
Owner:NANJING UNIV

Method and apparatus using discriminative training in natural language call routing and document retrieval

A method and apparatus for performing discriminative training of, for example, call routing training data (or, alternatively, other classification training data) which improves the subsequent classification of a user's natural language based requests. An initial scoring matrix is generated based on the training data and then the scoring matrix is adjusted so as to improve the discrimination between competing classes (e.g., destinations). In accordance with one illustrative embodiment of the present invention a Generalized Probabilistic Descent (GPD) algorithm may be advantageously employed to provide the improved discrimination. More specifically, the present invention provides a method and apparatus comprising steps or means for generating an initial scoring matrix comprising a numerical value for each of a set of n classes in association with each of a set of m features, the initial scoring matrix based on a set of training data and, for each element of said set of training data, based on a subset of said features which are comprised in the natural language text of said element of said set of training data and on one of said classes which has been identified therefor; and based on the initial scoring matrix and the set of training data, generating a discriminatively trained scoring matrix for use by said classification system by adjusting one or more of said numerical values such that a greater degree of discrimination exists between competing ones of said classes when said classification requests are performed, thereby resulting in a reduced classification error rate.
Owner:LUCENT TECH INC

Collaborative filtering method for personalized recommendation fusion content and behavior

The invention relates to a collaborative filtering method for personalized recommendation fusion content and behavior. The method comprises the following steps of, (1) characteristic input, includinga project-attribute matrix representing a project content and a user behavior matrix representing user behaviors; (2) content-based project clustering for calculating the similarity of projects and clustering the projects; (3) score prediction and feature filling including carrying out score prediction on the non-scoring projects, and filling a user-project scoring matrix; (4) behavior-based userclustering including clustering users according to a project clustering result and a user-project scoring matrix; (5) score predication and project recommendation including determining the clusteringcluster where the target users are located, finding a nearest neighbor user set, performing score prediction on the non-scoring projects of the target users, and finally recommending the first N projects with the highest prediction scores to the target users. Compared with the prior art, the collaborative filtering method effectively solves the problems of data sparsity and cold start, and ensureshigh recommendation efficiency.
Owner:TONGJI UNIV

Intelligent community oriented electronic commerce information recommendation method

The invention relates to an intelligent community oriented electronic commerce information recommendation method and belongs to the technical field of electronic commerce. The method comprises the steps of 1), collecting specific browse behaviors of users on clients and processing data to obtain hidden scores of the users; 2), establishing a ''user-commodity '' comprehensive scoring matrix capable of reflecting user preference; 3), establishing a ''virtual user-item'' scoring matrix; 4), generating a commodity recommendation set based on a nearest neighbor set through utilization of a cooperative filtering method; 5), establishing user feature vectors; 6), generating user feature clusters; and 7), generating a partner recommendation set. According to the method, through full utilization of the advantages that the scale of a consumer group is relatively small and a commodity range is clear in an intelligent community, various browse behaviors of the users showing up interests on the clients are collected and preprocessed, the operation pressure of a server is mitigated to a great extent; the community information recommendation is realized; the partner recommendation is realized through combination of long-term fixed social relationships of community residents; and the residents are helped to increase neighbor friendship.
Owner:重庆易途智能科技发展有限公司

Driving behavior analyzing method and evaluation system based on vehicle-mounted data

The invention discloses a driving behavior analyzing method based on vehicle-mounted data. The driving behavior analyzing method comprises the following steps of collecting driving data of automobiles in a real time manner; deleting invalid driving data according to bit mask; performing deletion or modification on exceptional data; performing descriptive statistic on the driving data so as to obtain statistic driving data; through an analytic hierarchy process of group decision, obtaining the weight distribution of evaluating indicators; through a method for scoring by an expert, obtaining scores during a stroke period; through a conformability principle, obtaining the duration of the stroke, the average velocity of the stroke, and the ride comfort scores of the stroke; and according to the weight distribution of the evaluating indicators and the score, obtaining a scoring matrix of the driving data. The invention further discloses a driving behavior evaluation system based on the vehicle-mounted data. According to the driving behavior analyzing method and evaluation system based on the vehicle-mounted data, through the level analysis method of the group decision, the weight of the driving data is obtained, and through the conformability principle, the score of the driving data is obtained, so that the driving behavior of a user can be accurately analyzed and evaluated.
Owner:UNITED ELECTRONICS

Item-based explicit and implicit feedback mixing collaborative filtering recommendation algorithm

The invention discloses an item-based explicit and implicit feedback mixing collaborative filtering recommendation algorithm. The method comprises the following steps of obtaining the information of interest of users on every item and establishing the score matrix of every user on all the items; calculating the average score of every user, the quantity of the scoring users of every item and the average score of every item; calculating a common comment user quantity matrix; calculating the Pearson similarity and the modified cosine similarity of between any two items; calculating the similarity based on explicit feedback; calculating the cosine similarity based on implicit feedback; calculating a final similarity; obtaining the nearest neighbor set I of a current item; when providing a recommendation list to a target user u, according to the score matrix, obtaining the scored items and the unscored items of the target user u; calculating the prediction scores of the unscored items of the target user u and selecting N items with the highest scores inside the unscored items of the target user u to the user. The item-based explicit and implicit feedback mixing collaborative filtering recommendation algorithm can effectively improve the accuracy of prediction recommendation.
Owner:ZHEJIANG UNIV

Method and apparatus for enhanced estimation of an analyte property through multiple region transformation

The invention provides for transformation of a section of a data block independently of the transformation of separate or overlapping data blocks to determine a property related to the original matrix, where each of the separate or overlapping data blocks are derived from an original data matrix. The transformation enhances parameters of a first data block over a given region of an axis of the data matrix, such as signal-to-noise, without affecting analysis of a second data block derived from the data matrix. This allows for enhancement of analysis of an analyte property, such as concentration, represented within the original data matrix. In a first embodiment of the invention, a separate decomposition and factor selection for each selected data matrix is performed with subsequent score matrix concatenization. The combined score matrix is used to generate a model that is subsequently used to estimate a property, such as concentration represented in the original data matrix. In a second embodiment, each data matrix is independently preprocessed. Demonstration of the invention is performed through glucose concentration estimation from noninvasive spectra of the body.
Owner:GLT ACQUISITION

Television program recommending method and device for digital television

InactiveCN102207972AAvoid problems with hard-to-get system recommendationsRecommended service is accurateSpecial data processing applicationsRecommendation serviceScore matrix
The embodiment of the invention discloses a television program recommending method and device for a digital television. The method comprises the following steps: collecting basic information of digital television subscribers; constructing an initial predictive scoring matrix according to the basic information of the subscribers; establishing a similar television program list according to the initial predictive scoring matrix; and acquiring the recommendation result according to the similar television program list. In the method and device provided by the embodiment of the invention, a content-based recommendation method is added on the basis of a collaborative filtering recommendation method so as to solve the problem of cold start up of a collaborative filtering recommendation system in the prior art, and the two methods are combined to construct the similar television program list, and recommendation service is provided for the subscribers by use of the similar television program list. Therefore, the method and device provided by the invention can be used for assisting the digital television subscribers to find the possible interested television programs, can ensure that a new digital television subscriber can obtain more accurate recommendation service, and can be used for solving the problem that a new television program has less possibility of being recommended by the system.
Owner:SUN YAT SEN UNIV

Video pushing method, apparatus, computer device and storage medium

The invention relates to a video pushing method, apparatus, computer device and storage medium. The method includes acquiring a plurality of user identifiers and corresponding video identifiers and corresponding historical behavior data, calculating scoring data corresponding to each user identifier according to the historical behavior data of each user identifier, assembling a score data set, storing the scoring data set according to a matrix to obtain a scoring matrix, inputting user ID, video identification and scoring matrices into the trained video push model, decomposing the scoring matrix, according to the decomposition result, determining the user similarity between users and the video similarity between videos, according to the user similarity between users and the video similarity between corresponding videos, determining the target video identification set corresponding to each user identification, and pushing the video link corresponding to the target video identification set to the corresponding terminal corresponding to each target user identification, so as to improve the accuracy of video recommendation and enhance the user experience.
Owner:广州飞磨科技有限公司

Recommendation method for searching target user and matching target product for automobile industry

The invention relates to data processing and recommendation in a computer technology and discloses a recommendation method for searching a target user and matching a target product for an automobile industry. A corresponding automobile product is automatically recommended for the target user with a purchasing intention, so that the marketing cost of companies is reduced. The method can be concluded as follows: a, a pre-treatment phase of data mainly aims at knowing and analyzing a task of a system and reducing dimensions of original data through steps of cleaning data, integrating and simplifying and the like, so that target data used for a predication phase is generated; b, the predication phase mainly aims at finding the target user with the purchasing intention according to an association rule, and an attribute vector is obtained by knowing about preference attributes corresponding to the target user through a manner of obtaining network search recording mining of the target user or a questionnaire survey manner; finally, the similarity between users is calculated by adopting a user-attribute scoring matrix through a collaborative filtering algorithm, so that a predicated result is given based on the similarity; c, an evaluation phase aims at evaluating the predicated result. The recommendation method is applicable to recommendation of automobile products.
Owner:SICHUAN UNIV

Recommendation system cold start solving method based on user feedback

The invention provides a recommendation system cold start solving method based on user feedback. The method comprises the following steps: selecting data samples; constructing a time sequence sample matrix, dividing a user-commodity real score matrix into a plurality of sub matrixes according to a time sequence, simulating emergence of new users, taking sub matrixes in the top of time rank as training sub matrixes and taking other sub matrixes as test sub matrixes; and establishing a user-commodity characteristic matrix by using a latent semantic model, introducing new users into a confidence interval upper bounded UCB algorithm model and iterating and updating user characteristics and commodity characteristics. The recommendation system cold start solving method does not need extra information and is capable of rapidly screening commodities interested by the users according to limited frequency of user feedback interaction.
Owner:TIANJIN UNIV

Calibrated underwriting system

ActiveUS20160171618A1Facilitate underwriting decisionFacilitate decision-makingFinanceApplication softwareData mining
According to some embodiments, account information may be received in connection with a potential insurance policy. A premium indication portal processor may receive, from a risk score model application, an account score matrix for the potential insurance policy, including grade values comparing the account information with other insured policies in a risk database, along with a benchmark premium value calibrated to a target return on equity based on the account information and information in the risk database. The account score matrix may be displayed on an underwriter device, and guide indication adjustments may be received from the underwriter device for the potential insurance policy. The premium indication portal processor may then automatically calculate an adjusted premium value calibrated to the target return on equity based at least in part on the guide indication adjustments.
Owner:HARTFORD FIRE INSURANCE

Collaborative filtering method on basis of scene implicit relation among articles

The invention discloses a collaborative filtering method on the basis of a scene implicit relation among articles. The collaborative filtering method comprises the following steps of: 1, extracting scores of the articles in different scenes from original score data and establishing an article-scene score matrix; 2, decomposing the article-scene score matrix by a matrix decomposition method to obtain an implicit factor matrix of the articles; 3, establishing a scene feature vector for each article by using the obtained implicit factor matrix of the articles so as to calculate the similarity among the articles by utilizing a Pearson correlation coefficient and establish an article implicit relation matrix; and 4, integrating obtained article implicit relation information into a probability matrix decomposition matrix to generate a personalized recommendation. According to the invention, scene information can be sufficiently utilized to mine the implicit relation information among the articles, and the recommendation is generated by utilizing the implicit relation among the articles; the collaborative filtering method has high expandability for the scene information, and a candidate scene set can be regulated according to the application requirements; and the accuracy and the personalization degree of the recommendation can be effectively improved.
Owner:ZHEJIANG UNIV
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