会员体验
专利管家(专利管理)
工作空间(专利管理)
风险监控(情报监控)
数据分析(专利分析)
侵权分析(诉讼无效)
联系我们
交流群
官方交流:
QQ群: 891211   
微信请扫码    >>>
现在联系顾问~
热词
    • 42. 发明授权
    • System and method for feature-rich continuous space language models
    • 功能丰富的连续空间语言模型的系统和方法
    • US09092425B2
    • 2015-07-28
    • US12963161
    • 2010-12-08
    • Piotr Wojciech MirowskiSrinivas BangaloreSuhrid BalakrishnanSumit Chopra
    • Piotr Wojciech MirowskiSrinivas BangaloreSuhrid BalakrishnanSumit Chopra
    • G06F17/27G06F17/28
    • G06F17/28
    • Disclosed herein are systems, methods, and non-transitory computer-readable storage media for predicting probabilities of words for a language model. An exemplary system configured to practice the method receives a sequence of words and external data associated with the sequence of words and maps the sequence of words to an X-dimensional vector, corresponding to a vocabulary size. Then the system processes each X-dimensional vector, based on the external data, to generate respective Y-dimensional vectors, wherein each Y-dimensional vector represents a dense continuous space, and outputs at least one next word predicted to follow the sequence of words based on the respective Y-dimensional vectors. The X-dimensional vector, which is a binary sparse representation, can be higher dimensional than the Y-dimensional vector, which is a dense continuous space. The external data can include part-of-speech tags, topic information, word similarity, word relationships, a particular topic, and succeeding parts of speech in a given history.
    • 这里公开了用于预测语言模型的单词概率的系统,方法和非暂时的计算机可读存储介质。 配置为实施该方法的示例性系统接收与该单词序列相关联的单词序列和外部数据序列,并将该单词序列映射到对应于词汇大小的X维向量。 然后系统根据外部数据对每个X维向量进行处理,以产生各自的Y维向量,其中每个Y维向量表示密集的连续空间,并且输出至少一个预测的下一个单词以跟随单词序列 基于相应的Y维向量。 作为二进制稀疏表示的X维向量可以比作为密集连续空间的Y维向量更高的维度。 外部数据可以包括在给定历史中的部分词汇标签,主题信息,单词相似性,单词关系,特定主题以及后续部分语音。
    • 44. 发明授权
    • System and method of providing machine translation from a source language to a target language
    • 提供从源语言到目标语言的机器翻译的系统和方法
    • US08849665B2
    • 2014-09-30
    • US12022819
    • 2008-01-30
    • Srinivas BangaloreEmil Ettelaie
    • Srinivas BangaloreEmil Ettelaie
    • G10L15/00G10L15/18G06F17/28
    • G06F17/2827
    • A machine translation method, system for using the method, and computer readable media are disclosed. The method includes the steps of receiving a source language sentence, selecting a set of target language n-grams using a lexical classifier and based on the source language sentence. When selecting the set of target language n-grams, in at least one n-gram, n is greater than 1. The method continues by combining the selected set of target language n-grams as a finite state acceptor (FSA), weighting the FSA with data from the lexical classifier, and generating an n-best list of target sentences from the FSA. As an alternate to using the FSA, N strings may be generated from the n-grams and ranked using a language model. The N strings may be represented by an FSA for efficiency but it is not necessary.
    • 公开了一种机器翻译方法,使用该方法的系统和计算机可读介质。 该方法包括以下步骤:接收源语言句,使用词法分类器并基于源语言句选择一组目标语言n-gram。 当选择一组目标语言n-gram时,在至少一个n-gram中,n大于1.该方法通过将所选择的一组目标语言n-gram组合为有限状态接收器(FSA)来继续加权, FSA与来自词汇分类器的数据,并从FSA生成目标句子的最佳列表。 作为使用FSA的替代方案,可以使用n-gram生成N个字符串,并使用语言模型进行排序。 N字符串可以由FSA表示以提高效率,但不是必需的。
    • 47. 发明授权
    • System and method of generating responses to text-based messages
    • 生成对基于文本的消息的响应的系统和方法
    • US08296140B2
    • 2012-10-23
    • US13300752
    • 2011-11-21
    • Srinivas BangaloreMazin GilbertNarendra Gupta
    • Srinivas BangaloreMazin GilbertNarendra Gupta
    • G10L15/00
    • G06F17/2785
    • In accordance with one aspect of the present invention, an automated method of and system for generating a response to a text-based natural language message is disclosed. The method includes identifying a first selected input clause in a sentence in the text-based natural language message. Also, assigning a semantic tag to the first selected input clause and matching the semantic tag to a historical input tag. The historical input tag associated with a first previously generated response clause. Further; generating an output response message based on the historical response clause, the output response message derived from the historical input tag and a second previously generated response clause. The system includes means for performing the method steps.
    • 根据本发明的一个方面,公开了一种用于生成对基于文本的自然语言消息的响应的自动化方法和系统。 该方法包括识别基于文本的自然语言消息中的句子中的第一选择的输入子句。 此外,将语义标签分配给第一选择的输入子句并将语义标签与历史输入标签进行匹配。 与先前生成的第一个响应子句相关联的历史输入标签。 进一步; 基于历史响应子句生成输出响应消息,从历史输入标签导出的输出响应消息和第二个先前生成的响应子句。 该系统包括用于执行方法步骤的装置。
    • 48. 发明申请
    • SYSTEM AND METHOD OF SPOKEN LANGUAGE UNDERSTANDING IN HUMAN COMPUTER DIALOGS
    • 人类语言对话中语言语言理解的系统与方法
    • US20120239383A1
    • 2012-09-20
    • US13481031
    • 2012-05-25
    • Srinivas BangaloreNarendra K. GuptaMazin G. Rahim
    • Srinivas BangaloreNarendra K. GuptaMazin G. Rahim
    • G06F17/27G10L15/00
    • G10L15/1815G06F17/2785G10L13/043G10L15/02G10L15/1822G10L15/265
    • A system and method are disclosed that improve automatic speech recognition in a spoken dialog system. The method comprises partitioning speech recognizer output into self-contained clauses, identifying a dialog act in each of the self-contained clauses, qualifying dialog acts by identifying a current domain object and/or a current domain action, and determining whether further qualification is possible for the current domain object and/or current domain action. If further qualification is possible, then the method comprises identifying another domain action and/or another domain object associated with the current domain object and/or current domain action, reassigning the another domain action and/or another domain object as the current domain action and/or current domain object and then recursively qualifying the new current domain action and/or current object. This process continues until nothing is left to qualify.
    • 公开了一种提高口语对话系统中的自动语音识别的系统和方法。 该方法包括将语音识别器输出划分为独立子句,识别每个自包含子句中的对话行为,通过识别当前域对象和/或当前域动作进行限定对话行为,以及确定是否可进行进一步的限定 对于当前域对象和/或当前域操作。 如果可以进一步鉴定,则该方法包括识别与当前域对象和/或当前域操作相关联的另一域操作和/或另一域对象,将另一域操作和/或另一域对象重新分配为当前域操作,以及 /或当前域对象,然后递归地限定新的当前域操作和/或当前对象。 这个过程一直持续到没有什么是剩下的资格。
    • 49. 发明申请
    • SYSTEM AND METHOD FOR REFERRING TO ENTITIES IN A DISCOURSE DOMAIN
    • 引导领域实体的系统和方法
    • US20120221332A1
    • 2012-08-30
    • US13465685
    • 2012-05-07
    • Giuseppe Di FabbrizioSrinivas BangaloreAmanda Stent
    • Giuseppe Di FabbrizioSrinivas BangaloreAmanda Stent
    • G10L15/26
    • G06F17/2881G06F17/279G10L13/027
    • Systems, methods, and non-transitory computer-readable media for referring to entities. The method includes receiving domain-specific training data of sentences describing a target entity in a context, extracting a speaker history and a visual context from the training data, selecting attributes of the target entity based on at least one of the speaker history, the visual context, and speaker preferences, generating a text expression referring to the target entity based on at least one of the selected attributes, the speaker history, and the context, and outputting the generated text expression. The weighted finite-state automaton can represent partial orderings of word pairs in the domain-specific training data. The weighted finite-state automaton can be speaker specific or speaker independent. The weighted finite-state automaton can include a set of weighted partial orderings of the training data for each possible realization.
    • 用于引用实体的系统,方法和非暂时计算机可读介质。 该方法包括接收在上下文中描述目标实体的句子的特定领域的训练数据,从训练数据中提取讲者历史和视觉上下文,基于说话者的历史,视觉上的至少一个来选择目标实体的属性 上下文和说话人首选项,基于所选择的属性,说话者历史和上下文中的至少一个生成参考目标实体的文本表达,并输出所生成的文本表达。 加权有限状态自动机可以表示域特定训练数据中单词对的部分排序。 加权有限状态自动机可以是扬声器专用或扬声器独立的。 加权有限状态自动机可以包括用于每个可能实现的训练数据的一组加权部分排序。