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    • 3. 发明授权
    • Semantic search via role labeling
    • 通过角色标注进行语义搜索
    • US08392436B2
    • 2013-03-05
    • US12364041
    • 2009-02-02
    • Bing BaiJason WestonRonan Collobert
    • Bing BaiJason WestonRonan Collobert
    • G06F7/00G06F17/00
    • G06F17/30654
    • A method and system for searching for information contained in a database of documents each includes an offline part and an online part. The offline part includes predicting, in a first computer process, semantic data for sentences of the documents contained in the database and storing this data in a database. The online part includes querying the database for information with a semantically-sensitive query, predicting, in a real time computer process, semantic data for the query, and determining, in a second computer process, a matching score against all the documents in the database, which incorporates the semantic data for the sentences and the query.
    • 用于搜索包含在文档数据库中的信息的方法和系统各自包括离线部分和在线部分。 离线部分包括在第一计算机进程中预测包含在数据库中的文档的句子的语义数据,并将该数据存储在数据库中。 在线部分包括使用语义敏感的查询来查询数据库的信息,在实时计算机进程中预测用于查询的语义数据,以及在第二计算机进程中确定与数据库中的所有文档的匹配分数 ,其中包含句子和查询的语义数据。
    • 4. 发明申请
    • Semantic Search Via Role Labeling
    • 语义搜索通过角色标签
    • US20090204605A1
    • 2009-08-13
    • US12364041
    • 2009-02-02
    • Bing BaiJason WestonRonan Collobert
    • Bing BaiJason WestonRonan Collobert
    • G06F17/30G06F15/18G10L21/00
    • G06F17/30654
    • A method and system for searching for information contained in a database of documents each includes an offline part and an online part. The offline part includes predicting, in a first computer process, semantic data for sentences of the documents contained in the database and storing this data in a database. The online part includes querying the database for information with a semantically-sensitive query, predicting, in a real time computer process, semantic data for the query, and determining, in a second computer process, a matching score against all the documents in the database, which incorporates the semantic data for the sentences and the query.
    • 用于搜索包含在文档数据库中的信息的方法和系统各自包括离线部分和在线部分。 离线部分包括在第一计算机进程中预测包含在数据库中的文档的句子的语义数据,并将该数据存储在数据库中。 在线部分包括使用语义敏感的查询来查询数据库的信息,在实时计算机进程中预测用于查询的语义数据,以及在第二计算机进程中确定与数据库中的所有文档的匹配分数 ,其中包含句子和查询的语义数据。
    • 7. 发明授权
    • Fast semantic extraction using a neural network architecture
    • 使用神经网络架构的快速语义提取
    • US08180633B2
    • 2012-05-15
    • US12039965
    • 2008-02-29
    • Ronan CollobertJason Weston
    • Ronan CollobertJason Weston
    • G10L15/16
    • G06F17/2785
    • A system and method for semantic extraction using a neural network architecture includes indexing each word in an input sentence into a dictionary and using these indices to map each word to a d-dimensional vector (the features of which are learned). Together with this, position information for a word of interest (the word to labeled) and a verb of interest (the verb that the semantic role is being predicted for) with respect to a given word are also used. These positions are integrated by employing a linear layer that is adapted to the input sentence. Several linear transformations and squashing functions are then applied to output class probabilities for semantic role labels. All the weights for the whole architecture are trained by backpropagation.
    • 使用神经网络架构的语义提取的系统和方法包括将输入语句中的每个单词索引到词典中,并且使用这些索引将每个单词映射到d维向量(其特征被学习)。 与此同时,还使用了一个关于一个给定单词的感兴趣的词的位置信息(被标记的词)和一个感兴趣的动词(语义角色被预测的动词)。 通过采用适合于输入句子的线性层来集成这些位置。 然后将多个线性变换和压缩函数应用于语义角色标签的输出类概率。 整个建筑的所有重量都通过反向传播进行训练。
    • 8. 发明申请
    • Large Scale Manifold Transduction
    • 大规模歧管转导
    • US20090204556A1
    • 2009-08-13
    • US12364059
    • 2009-02-02
    • Jason WestonRonan Collobert
    • Jason WestonRonan Collobert
    • G06F15/18
    • G06K9/6276
    • A method for training a learning machine for use in discriminative classification and regression includes randomly selecting, in a first computer process, an unclassified datapoint associated with a phenomenon of interest; determining, in a second computer process, a set of datapoints associated with the phenomenon of interest that is likely to be in the same class as the selected unclassified datapoint; predicting, in a third computer process, a class label for the selected unclassified datapoint in a third computer process; predicting a class label for the set of datapoints in a fourth computer process; combining the predicted class labels in a fifth computer process, to predict a composite class label that describes the selected unclassified datapoint and the set of datapoints; and using the combined class label to adjust at least one parameter of the learning machine in a sixth computer process.
    • 用于训练用于辨别分类和回归的学习机的方法包括在第一计算机过程中随机选择与感兴趣的现象相关联的未分类的数据点; 在第二计算机进程中确定与可能与所选择的未分类数据点处于同一类别的感兴趣的现象相关联的一组数据点; 在第三计算机进程中,在第三计算机进程中预测所选未分类数据点的类标签; 在第四计算机进程中预测该组数据点的类标签; 在第五计算机进程中组合预测的类标签,以预测描述所选择的未分类数据点和数据点集合的复合类标签; 以及在第六计算机进程中使用组合的类标签来调整学习机器的至少一个参数。
    • 9. 发明申请
    • METHOD FOR TRAINING A LEARNING MACHINE HAVING A DEEP MULTI-LAYERED NETWORK WITH LABELED AND UNLABELED TRAINING DATA
    • 用于训练具有标签和非完整培训数据的深层多层网络的学习机的方法
    • US20090204558A1
    • 2009-08-13
    • US12367278
    • 2009-02-06
    • Jason WestonRonan Collobert
    • Jason WestonRonan Collobert
    • G06F15/18
    • G06N3/08G06K9/6251
    • A method for training a learning machine having a deep network with a plurality of layers, includes applying a regularizer to one or more of the layers of the deep network; training the regularizer with unlabeled data; and training the deep network with labeled data. Also, an apparatus for use in discriminative classification and regression, including an input device for inputting unlabeled and labeled data associated with a phenomenon of interest; a processor; and a memory communicating with the processor. The memory includes instructions executable by the processor for implementing a learning machine having a deep network structure and training the learning machine by applying a regularizer to one or more of the layers of the deep network; training the regularizer with unlabeled data; and training the deep network with labeled data.
    • 一种用于训练具有多个层的深度网络的学习机的方法,包括:对所述深层网络的一个或多个层应用正则化; 训练正规者与未标记的数据; 并用标签数据训练深层网络。 另外,一种用于鉴别分类和回归的装置,包括输入装置,用于输入与感兴趣的现象相关联的未标记和标记的数据; 处理器 以及与处理器通信的存储器。 存储器包括可由处理器执行的用于实现具有深度网络结构的学习机器的指令,并且通过将深度网络的一个或多个层应用校正器来训练学习机器; 训练正规者与未标记的数据; 并用标签数据训练深层网络。