情感分析任务和深度学习解决方案的自然语言理解挑战

Radha Guha, T. Sutikno
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引用次数: 0

摘要

当涉及到购买产品或参加活动时,大多数人首先想知道别人对它的看法。为了构建推荐系统,用户对产品的相似度可以用数字来衡量,比如五星评级或二元喜欢或不喜欢评级。如果你没有一个数字评级系统,产品评论文本仍然可以用来提出建议。自然语言理解是计算机科学的一个分支,旨在使机器能够进行自然语言理解(NLU)。消极、中立或积极的情绪分析(SA)或意见挖掘(OM)是一种基于内容自动确定评论和评论极性的算法方法。情商依靠文本分类来工作。在大数据时代,有无数种方法可以使用情感分析,但情感分析仍然是一个挑战。由于其巨大的重要性,情感分析在商界和学术界都是一个热议的话题。当涉及到情感分析任务和文本分类时,经典的机器学习和较新的深度学习算法处于当前技术的前沿。
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Natural language understanding challenges for sentiment analysis tasks and deep learning solutions
When it comes to purchasing a product or attending an event, most people want to know what others think about it first. To construct a recommendation system, a user's likeness of a product can be measured numerically, such as a five-star rating or a binary like or dislike rating. If you don't have a numerical rating system, the product review text can still be used to make recommendations. Natural language comprehension is a branch of computer science that aims to make machines capable of natural language understanding (NLU). Negative, neutral, or positive sentiment analysis (SA) or opinion mining (OM) is an algorithmic method for automatically determining the polarity of comments and reviews based on their content. Emotional intelligence relies on text categorization to work. In the age of big data, there are countless ways to use sentiment analysis, yet SA remains a challenge. As a result of its enormous importance, sentiment analysis is a hotly debated topic in the commercial world as well as academic circles. When it comes to sentiment analysis tasks and text categorization, classical machine learning and newer deep learning algorithms are at the cutting edge of current technology.
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