{"id":60669,"date":"2021-11-03T07:00:31","date_gmt":"2021-11-03T06:00:31","guid":{"rendered":"https:\/\/www.clickworker.com\/?p=60669"},"modified":"2022-06-07T15:34:42","modified_gmt":"2022-06-07T14:34:42","slug":"sentiment-analysis-using-nlp","status":"publish","type":"post","link":"https:\/\/www.clickworker.com\/customer-blog\/sentiment-analysis-using-nlp\/","title":{"rendered":"Artificial Intelligence – Sentiment Analysis Using NLP"},"content":{"rendered":"
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Artificial Intelligence is becoming more and more prominent in our everyday life. From Google Assistant to Apple’s Siri, we can interact with computers, smartphones, and other devices as if they were human beings.<\/p>\r\n
However, while a computer can answer and respond to simple questions, recent innovations also let them learn and understand human emotions.<\/p>\r\nOne of the latest uses of Artificial intelligence is sentiment analysis<\/a> using natural language processing<\/a> (NLP).\r\n\r\n \r\n\r\n\r\n\r\n\r\n To do a sentiment analysis, you need natural language processing and machine learning<\/a> programs. These programs can analyze text to find certain emotions or moods that people express through their writing.<\/p>\r\n The goal of sentiment analysis is to understand what someone feels about something and figure out how they think about it and the actionable steps based on that understanding.\r\n<\/p>\r\n\r\n There are different machine learning (ML) techniques for sentiment analysis, but in general, they all work in the same way.<\/p>\r\n You give the algorithm a bunch of texts and then “teach” it to understand what certain words mean based on how people use those words together.<\/p>\r\n It’s quite similar to how we learn languages as children. Humans learn and understand a language because they are exposed to it at an early age.<\/p>\r\n Once enough data has been gathered, these programs start getting good at figuring out if someone is feeling positive or negative about something just through analyzing text alone.<\/p>\r\n One common type of NLP program uses artificial neural networks (computer programs) that are modeled after the neurons in the human brain; this is where the term “Artificial Intelligence” comes from.<\/p>\r\n These neural networks try to learn how different words relate to each other, like synonyms or antonyms. It will use these connections between words and word order to determine if someone has a positive or negative tone towards something.<\/p>\r\n\r\n Sentiment analysis can be used for many applications. Some typical applications include:<\/p>\r\n NLP is used because it can understand phrases, not just individual words, by capturing the semantic meaning behind them.<\/p>\r\n This allows machines to analyze things like colloquial words that have different meanings depending on the context, as well as non-standard grammar structures that wouldn’t be understood otherwise.<\/p>\r\n Because social media posts use a wide variety of abbreviations, acronyms, emojis and other symbols, these cannot usually be parsed by computer programs so they must rely on contextual clues from surrounding sentences rather the words themselves.<\/p>\r\n\r\n Sentiment analysis software looks at how people feel about things (angry, pleased, etc.). Urgency is another element that sentiment analysis models consider (urgent, not urgent), and intentions are also measured (interested v. not interested).<\/p>\r\n You may define and customize your categories to meet your sentiment analysis needs depending on how you want to read consumer feedback and queries.<\/p>\r\n Some of the different types of sentiment analysis include:<\/p>\r\n At the core of sentiment analysis is NLP – natural language processing technology uses algorithms to give computers access to unstructured text data so they can make sense out of it.<\/p>\r\n To do this, the algorithm must be trained with large amounts of annotated data, broken down into sentences containing expressions such as ‘positive’ or ‘negative´.<\/p>\r\n\r\n Tip:<\/strong><\/p>\r\n\r\n You need a lot of annotated data for training AI systems for sentiment analysis? – Via clickworker you receive both raw data in the form of audio or video recordings as well as annotations and categorizations of this data in the shortest possible time.How Machine Learning Influences Sentiment Analysis<\/h2>\r\n\r\n
How Sentiment Analysis is Used in the Real World<\/h2>\r\n
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Using NLP for Sentiment Analysis<\/h2>\r\n
Types of Sentiment Analysis<\/h2>\r\n
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How Does Sentiment Analysis with NLP Work?<\/h2>\r\n
Learn more about the services<\/p>Audio Datasets<\/a>