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Quantifying modified opinion strength: A fuzzy inference system for Sentiment Analysis

机译:量化修改意见强度:情感分析的模糊推理系统

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In Sentiment Analysis or Opinion Mining, automatic quantification of the strength of opinion, expressed on any feature is very important task. However, it is quite challenging to automatically quantify the strength of opinion words, whenever they get modified by adverbial modifiers. For example the intensity of an opinion word “beautiful” gets increased in “very beautiful”, gets decreased in “slightly beautiful” and complemented in “not beautiful”. In our work, we have designed a fuzzy inference system based on experimentally designed fuzzy membership functions and concepts of hedges to standardized and formulate the process of strength quantification of subjective sentences when strength of opinion word get modified by the presence of n-gram adverbial modifiers pattern in the sentence. Using our membership functions and considering the manually quantified opinion strength for n-gram adverbial modifiers pattern as a baseline, we observed that our fuzzy inference system is producing output values with a very small average root mean square error with the targeted baseline points.
机译:在情感分析或观点挖掘中,对任何功能表达的观点强度进行自动量化是非常重要的任务。但是,每当通过副词修饰语对其进行修饰时,自动量化观点词的强度是非常具有挑战性的。例如,意见词“美丽”的强度在“非常美丽”中增加,在“轻微美丽”中减少,而在“不美丽”中补充。在我们的工作中,我们基于实验设计的模糊隶属函数和套期保值概念设计了一个模糊推理系统,以标准化并制定当n-gram副词修饰词对意见词的强度进行修改时主观句子的强度量化过程。句子中的模式。使用我们的隶属度函数,并考虑将n-gram状语修饰语模式的手动量化观点强度作为基线,我们观察到我们的模糊推理系统所产生的输出值具有非常小的平均均方根误差,并且具有目标基线点。

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