名词说话:名词情感评分的新方法

A. L. Senanayake, Y. Priyadarshana, L. Ranathunga
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引用次数: 0

摘要

测量人类感知能力是当今世界最重要的机制之一。这在社交媒体、商业决策、教育、军事、生物设备、政治决策等领域非常重要。情感评分是衡量自然语言处理下人类感知能力的关键技术因素。词性是情感评分背后的主要因素。尽管有一些有效的方法可以根据形容词、动词或副词来确定情感得分,但仍然需要一种有效的名词评分方法。在情感评分中,名词是最容易被忽略的词类。现有的名词评分方法几乎都是基于以形容词为中心或以形容词-副词为中心的计算方法。本文提出了一种新颖有效的名词分值确定方法。引入了基于名词度的名词评分公理;主观的、客观的、含蓄的和明确的。然后利用这些公理,实现了一套新颖的名词情感评分模块。以电影语料库为数据域对这些模块进行了评价,实验结果显示了良好的效果。
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Nouns Speak: A Novel Approach for Noun Sentiment Scoring
Measuring human perception can be introduced as one of the most vital mechanisms in today’s world. This is very important in the fields of social media, business decision making, education, military, biological appliances, making political decisions and more. Sentiment scoring is the key technical factor for measuring human perception under natural language processing. The parts of speech are the main factors behind sentiment scoring. Even though there are valid approaches to determine the sentiment score based on adjectives, verbs or adverbs, still there is a demand for a valid noun scoring methodology. Nouns can be introduced as the most neglected part of speech in sentiment scoring. Almost all the existing noun scoring approaches are based on adjective centric or adjective-adverb centric computational methodologies. This paper brings a novel and valid approach to determine the scoring value for nouns. New noun scoring axioms have been introduced based on the degrees of noun; subjective, objective, implicit and explicit. Then using these axioms, novel set of noun sentiment scoring modules have been implemented. These modules have been evaluated using movie corpus as the data domain and the experimental results show promising results.
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