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
    • 1. 发明授权
    • Domain-specific sentiment classification
    • 域特定情绪分类
    • US07987188B2
    • 2011-07-26
    • US11844222
    • 2007-08-23
    • Tyler J. NeylonKerry L. HannanRyan T. McDonaldMichael WellsJeffrey C. Reynar
    • Tyler J. NeylonKerry L. HannanRyan T. McDonaldMichael WellsJeffrey C. Reynar
    • G06F17/30
    • G06F17/30616
    • A domain-specific sentiment classifier that can be used to score the polarity and magnitude of sentiment expressed by domain-specific documents is created. A domain-independent sentiment lexicon is established and a classifier uses the lexicon to score sentiment of domain-specific documents. Sets of high-sentiment documents having positive and negative polarities are identified. The n-grams within the high-sentiment documents are filtered to remove extremely common n-grams. The filtered n-grams are saved as a domain-specific sentiment lexicon and are used as features in a model. The model is trained using a set of training documents which may be manually or automatically labeled as to their overall sentiment to produce sentiment scores for the n-grams in the domain-specific sentiment lexicon. This lexicon is used by the domain-specific sentiment classifier.
    • 创建一个域特定情绪分类器,可用于评估由领域特定文档表达的情绪的极性和程度。 建立一个独立于领域的情绪词典,一个分类器使用词典来评价领域特定文件的情感。 确定了具有正极性和负极性的高情绪文件。 高信度文件中的n-gram被过滤以去除非常常见的n-gram。 过滤的n-gram被保存为域特定的情绪词典,并被用作模型中的特征。 该模型使用一组培训文件进行培训,培训文档可以手动或自动标记为对整个情境的整体情绪,以便在域特定情绪词典中产生n-gram的情绪评分。 该词典由域特定情绪分类器使用。
    • 2. 发明申请
    • Domain-Specific Sentiment Classification
    • 域特定情绪分类
    • US20090125371A1
    • 2009-05-14
    • US11844222
    • 2007-08-23
    • Tyler J. NeylonKerry L. HannanRyan T. McDonaldMichael WellsJeffrey C. Reynar
    • Tyler J. NeylonKerry L. HannanRyan T. McDonaldMichael WellsJeffrey C. Reynar
    • G06F17/30
    • G06F17/30616
    • A domain-specific sentiment classifier that can be used to score the polarity and magnitude of sentiment expressed by domain-specific documents is created. A domain-independent sentiment lexicon is established and a classifier uses the lexicon to score sentiment of domain-specific documents. Sets of high-sentiment documents having positive and negative polarities are identified. The n-grams within the high-sentiment documents are filtered to remove extremely common n-grams. The filtered n-grams are saved as a domain-specific sentiment lexicon and are used as features in a model. The model is trained using a set of training documents which may be manually or automatically labeled as to their overall sentiment to produce sentiment scores for the n-grams in the domain-specific sentiment lexicon. This lexicon is used by the domain-specific sentiment classifier.
    • 创建一个域特定情绪分类器,可用于评估由领域特定文档表达的情绪的极性和程度。 建立一个独立于领域的情绪词典,一个分类器使用词典来评价领域特定文件的情感。 确定了具有正极性和负极性的高情绪文件。 高信度文件中的n-gram被过滤以去除非常常见的n-gram。 过滤的n-gram被保存为域特定的情绪词典,并被用作模型中的特征。 该模型使用一组培训文件进行培训,培训文档可以手动或自动标记为对整个情境的整体情绪,以便在域特定情绪词典中产生n-gram的情绪评分。 该词典由域特定情绪分类器使用。
    • 3. 发明授权
    • Aspect-based sentiment summarization
    • 基于方面的情绪总结
    • US08799773B2
    • 2014-08-05
    • US12051798
    • 2008-03-19
    • George ReisSasha Blair-GoldensohnRyan T. McDonald
    • George ReisSasha Blair-GoldensohnRyan T. McDonald
    • G06F17/27G06N5/02
    • G06N5/025G06F17/30719
    • Phrases in the reviews that express sentiment about a particular aspect are identified. Reviewable aspects of the entity are also identified. The reviewable aspects include static aspects that are specific to particular types of entities and dynamic aspects that are extracted from the reviews of a specific entity instance. The sentiment phrases are associated with the reviewable aspects to which the phrases pertain. The sentiment expressed by the phrases associated with each aspect is summarized, thereby producing a summary of sentiment associated with each reviewable aspect of the entity. The summarized sentiment and associated phrases can be stored and displayed to a user as a summary description of the entity.
    • 确定了对特定方面表达情感的评论中的短语。 还确定了实体的可审查方面。 可审查的方面包括特定类型的实体的静态方面和从特定实体实例的审查中提取的动态方面。 情绪短语与短语所涉及的可审查方面相关联。 总结了与每个方面相关的短语表达的情绪,从而产生与实体的每个可审查方面相关的情绪的总结。 总结情绪和相关短语可以作为实体的简要描述存储和显示给用户。
    • 4. 发明授权
    • Domain-specific sentiment classification
    • 域特定情绪分类
    • US08356030B2
    • 2013-01-15
    • US13163623
    • 2011-06-17
    • Tyler J. NeylonKerry L. HannanRyan T. McDonaldMichael WellsJeffrey C. Reynar
    • Tyler J. NeylonKerry L. HannanRyan T. McDonaldMichael WellsJeffrey C. Reynar
    • G06F17/30
    • G06F17/30616
    • A domain-specific sentiment classifier that can be used to score the polarity and magnitude of sentiment expressed by domain-specific documents is created. A domain-independent sentiment lexicon is established and a classifier uses the lexicon to score sentiment of domain-specific documents. Sets of high-sentiment documents having positive and negative polarities are identified. The n-grams within the high-sentiment documents are filtered to remove extremely common n-grams. The filtered n-grams are saved as a domain-specific sentiment lexicon and are used as features in a model. The model is trained using a set of training documents which may be manually or automatically labeled as to their overall sentiment to produce sentiment scores for the n-grams in the domain-specific sentiment lexicon. This lexicon is used by the domain-specific sentiment classifier.
    • 创建一个域特定情绪分类器,可用于评估由领域特定文档表达的情绪的极性和程度。 建立一个独立于领域的情绪词典,一个分类器使用词典来评价领域特定文件的情感。 确定了具有正极性和负极性的高情绪文件。 高信度文件中的n-gram被过滤以去除非常常见的n-gram。 过滤的n-gram被保存为域特定的情绪词典,并被用作模型中的特征。 该模型使用一组培训文件进行培训,培训文档可以手动或自动标记为对整个情境的整体情绪,以便在域特定情绪词典中产生n-gram的情绪评分。 该词典由域特定的情感分类器使用。
    • 5. 发明申请
    • Domain-Specific Sentiment Classification
    • 域特定情绪分类
    • US20110252036A1
    • 2011-10-13
    • US13163623
    • 2011-06-17
    • Tyler J. NeylonKerry L. HannanRyan T. McDonaldMichael WellsJeffrey C. Reynar
    • Tyler J. NeylonKerry L. HannanRyan T. McDonaldMichael WellsJeffrey C. Reynar
    • G06F17/30
    • G06F17/30616
    • A domain-specific sentiment classifier that can be used to score the polarity and magnitude of sentiment expressed by domain-specific documents is created. A domain-independent sentiment lexicon is established and a classifier uses the lexicon to score sentiment of domain-specific documents. Sets of high-sentiment documents having positive and negative polarities are identified. The n-grams within the high-sentiment documents are filtered to remove extremely common n-grams. The filtered n-grams are saved as a domain-specific sentiment lexicon and are used as features in a model. The model is trained using a set of training documents which may be manually or automatically labeled as to their overall sentiment to produce sentiment scores for the n-grams in the domain-specific sentiment lexicon. This lexicon is used by the domain-specific sentiment classifier.
    • 创建一个域特定情绪分类器,可用于评估由领域特定文档表达的情绪的极性和程度。 建立一个独立于领域的情绪词典,一个分类器使用词典来评价领域特定文件的情感。 确定了具有正极性和负极性的高情绪文件。 高信度文件中的n-gram被过滤以去除非常常见的n-gram。 过滤的n-gram被保存为域特定的情绪词典,并被用作模型中的特征。 该模型使用一组培训文件进行培训,培训文档可以手动或自动标记为对整个情境的整体情绪,以便在域特定情绪词典中产生n-gram的情绪评分。 该词典由域特定情绪分类器使用。
    • 6. 发明申请
    • Aspect-Based Sentiment Summarization
    • 基于方面的情绪总结
    • US20090193328A1
    • 2009-07-30
    • US12051798
    • 2008-03-19
    • George ReisSasha Blair-GoldensohnRyan T. McDonald
    • George ReisSasha Blair-GoldensohnRyan T. McDonald
    • G06F17/27
    • G06N5/025G06F17/30719
    • Reviews express sentiment about one or more entities. Phrases in the reviews that express sentiment about a particular aspect are identified. Reviewable aspects of the entity are also identified. The reviewable aspects include static aspects that are specific to particular types of entities and dynamic aspects that are extracted from the reviews of a specific entity instance. The sentiment phrases are associated with the reviewable aspects to which the phrases pertain. The sentiment expressed by the phrases associated with each aspect is summarized, thereby producing a summary of sentiment associated with each reviewable aspect of the entity. The summarized sentiment and associated phrases can be stored and displayed to a user as a summary description of the entity.
    • 评论一个或多个实体的表达情绪。 确定了对特定方面表达情感的评论中的短语。 还确定了实体的可审查方面。 可审查的方面包括特定类型的实体的静态方面和从特定实体实例的审查中提取的动态方面。 情绪短语与短语所涉及的可审查方面相关联。 总结了与每个方面相关的短语表达的情绪,从而产生与实体的每个可审查方面相关的情绪的总结。 总结情绪和相关短语可以作为实体的简要描述存储和显示给用户。