Patent application number | Description | Published |
20080319932 | CLASSIFICATION USING A CASCADE APPROACH - A system and method that facilitates and effectuates optimizing a classifier for greater performance in a specific region of classification that is of interest, such as a low false positive rate or a low false negative rate. A two-stage classification model can be trained and employed, where the first stage classification is optimized over the entire classification region and the second stage classifier is optimized for the specific region of interest. During training the entire set of training data is employed by a first stage classifier. Only data that is classified by the first stage classifier or by cross validation to fall within a region of interest is used to train the second stage classifier. During classification, data that is classified within the region of interest by the first classification is given the first stage classifier's classification value, otherwise the classification value for the instance of data from the second stage classifier is used. | 12-25-2008 |
20090157720 | RAISING THE BASELINE FOR HIGH-PRECISION TEXT CLASSIFIERS - The claimed subject matter provides systems and/or methods for normalizing document representations for use with Naïve Bayes. The system can include devices and components that determine norms associated with documents by aggregating absolute term weight values associated with the documents, and further ascertain term weights for features associated with the documents, and thereafter divides the term weights for the features associated with the documents with the norms associated with the documents to produce a normalized document representation that can be utilized by arbitrary linear classifiers. | 06-18-2009 |
20090240498 | SIMILIARITY MEASURES FOR SHORT SEGMENTS OF TEXT - Systems and methods to perform short text segment similarity measures. Illustratively, a short text segment similarity environment comprises a short text engine operative to process data representative of short segments of text and an instruction set comprising at least one instruction to instruct the short text engine to process data representative of short text segment inputs according to a selected short text similarity identification paradigm. Illustratively, two or more short text segments can be received as input by the short text engine and a request to identify similarities among the two or more short text segments. Responsive to the request and data input, the short text engine executes a selected similarity identification technique in accordance with the sort text similarity identification paradigm to process the received data and to identify similarities between the short text segment inputs. | 09-24-2009 |
20090319508 | CONSISTENT PHRASE RELEVANCE MEASURES - Two methods for measuring keyword-document relevance are described. The methods receive a keyword and a document as input and output a probability value for the keyword. The first method is a similarity-based approach which uses techniques for measuring similarity between two short-text segments to measure relevance between the keyword and the document. The second method is a regression-based approach based on an assumption that if an out-of-document phrase (the keyword) is semantically similar to an in-document phrase, then relevance scores of the in and out-of document phrases should be close to each other. | 12-24-2009 |
20100211641 | PERSONALIZED EMAIL FILTERING - Techniques and systems are described that utilize a scalable, “light-weight” user model, which can be combined with a traditional global email spam filter, to determine whether an email message sent to a target user is a desired email. A global email model is trained with a set of email messages to detect desired emails, and a user email model is also trained to detect desired emails. Training the user email model may comprise one or more of: using labeled training emails; using target user-based information; and using information from the global email model. Global and user model scores for an email sent to a target user can be combined to produce an email score. The email score can be compared with a desired email threshold to determine whether the email message sent to the target user is desired or not. | 08-19-2010 |
20110219012 | Learning Element Weighting for Similarity Measures - Described is a technology for measuring the similarity between two objects (e.g., documents), via a framework that learns the term-weighting function from training data, e.g., labeled pairs of objects, to develop a learned model. A learning procedure tunes the model parameters by minimizing a defined loss function of the similarity score. Also described is using the learning procedure and learned model to detect near duplicate documents. | 09-08-2011 |
20120323968 | Learning Discriminative Projections for Text Similarity Measures - A model for mapping the raw text representation of a text object to a vector space is disclosed. A function is defined for computing a similarity score given two output vectors. A loss function is defined for computing an error based on the similarity scores and the labels of pairs of vectors. The parameters of the model are tuned to minimize the loss function. The label of two vectors indicates a degree of similarity of the objects. The label may be a binary number or a real-valued number. The function for computing similarity scores may be a cosine, Jaccard, or differentiable function. The loss function may compare pairs of vectors to their labels. Each element of the output vector is a linear or non-linear function of the terms of an input vector. The text objects may be different types of documents and two different models may be trained concurrently. | 12-20-2012 |
20120330978 | CONSISTENT PHRASE RELEVANCE MEASURES - Two methods for measuring keyword-document relevance are described. The methods receive a keyword and a document as input and output a probability value for the keyword. The first method is a similarity-based approach which uses techniques for measuring similarity between two short-text segments to measure relevance between the keyword and the document. The second method is a regression-based approach based on an assumption that if an out-of-document phrase (the keyword) is semantically similar to an in-document phrase, then relevance scores of the in and out-of document phrases should be close to each other. | 12-27-2012 |
20130159320 | CLICKTHROUGH-BASED LATENT SEMANTIC MODEL - There is provided a computer-implemented method and system for ranking documents. The method includes identifying a number of query-document pairs based on clickthrough data for a number of documents. The method also includes building a latent semantic model based on the query-document pairs and ranking the documents for a search based on the latent semantic model. | 06-20-2013 |
20140067368 | DETERMINING SYNONYM-ANTONYM POLARITY IN TERM VECTORS - A document-term matrix may be generated based on a corpus. A term representation matrix may be generated based on modifying a plurality of elements of the document-term matrix based on antonym information included in the corpus. Similarities may be determined based on a plurality of elements of the term representation matrix. | 03-06-2014 |
20140249799 | RELATIONAL SIMILARITY MEASUREMENT - Relational similarity measuring embodiments are presented that generally involve creating a relational similarity model that, given two pairs of words, is used to measure a degree of relational similarity between the two relations respectively exhibited by these word pairs. In one exemplary embodiment this involves creating a combined relational similarity model from a plurality of relational similarity models. This is generally accomplished by first selecting a plurality of relational similarity models, each of which measures relational similarity between two pairs of words, and each of which is trained or created using a different method or linguistic/textual resource. The selected models are then combined to form the combined relational similarity model. The combined model inputs two pairs of words and outputs a relational similarity indicator representing a measure the degree of relational similarity between the word pairs. | 09-04-2014 |