{"id":23089,"date":"2025-04-21T17:23:58","date_gmt":"2025-04-21T15:23:58","guid":{"rendered":"https:\/\/www.signorinaroma.com\/what-is-natural-language-processing-examples-and-3\/"},"modified":"2025-04-21T17:23:58","modified_gmt":"2025-04-21T15:23:58","slug":"what-is-natural-language-processing-examples-and-3","status":"publish","type":"post","link":"https:\/\/www.signorinaroma.com\/en\/what-is-natural-language-processing-examples-and-3\/","title":{"rendered":"What is natural language processing? Examples and applications of learning NLP"},"content":{"rendered":"<p><h1>6 Real-World Examples of Natural Language Processing<\/h1>\n<\/p>\n<p><img decoding=\"async\" class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto' 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\" width=\"306px\" alt=\"nlp examples\" \/><\/p>\n<p><p>When we tokenize words, an interpreter considers these input words as different words even though their underlying meaning is the same. Moreover, as we know that NLP  is about analyzing the meaning of content, to resolve this problem, we use stemming. Though natural language processing tasks are closely intertwined, they can be subdivided into categories for convenience. A major drawback of statistical methods is that they require elaborate feature engineering. Since 2015,[22] the statistical approach was replaced by the neural networks approach, using word embeddings to capture semantic properties of words. Natural Language Processing has created the foundations for improving the functionalities of chatbots.<\/p>\n<\/p>\n<p><p>First, we will see an overview of our calculations and formulas, and then we will implement it in Python. As seen above, \u201cfirst\u201d and \u201csecond\u201d values are important words that help us to distinguish between those two sentences. In the code snippet below, we show that all the words truncate to their stem words. However, notice that the stemmed word is not a dictionary word. As shown above, the final graph has many useful words that help us understand what our sample data is about, showing how essential it is to perform data cleaning on NLP.<\/p>\n<\/p>\n<p><h2>Great Companies Need Great People. That&#8217;s Where We Come In.<\/h2>\n<\/p>\n<p><p>It also uses elements of machine learning (ML) and data analytics. As we explore in our post on the difference between data analytics, AI and machine learning, although these are different fields, they do overlap. These are the most common natural language processing examples that you are likely to encounter in your day to day and the most useful for your customer service teams. Predictive text and its cousin autocorrect have evolved a lot and now we have applications like Grammarly, which rely on natural language processing and machine learning. We also have Gmail\u2019s Smart Compose which finishes your sentences for you as you type. NLP based chatbots can help enhance your business processes and elevate customer experience to the next level while also increasing overall growth and profitability.<\/p>\n<\/p>\n<p><p>If you know how to use programming, you can create a chatbot from scratch. If not, you can use templates to start as a base and build <a href=\"https:\/\/www.metadialog.com\/blog\/examples-of-nlp\/\">nlp examples<\/a> from there. Needless to say, for a business with a presence in multiple countries, the services need to be just as diverse.<\/p>\n<\/p>\n<p><h2>A Essential Guide to HIPAA Compliance in Healthcare Chatbots<\/h2>\n<\/p>\n<p><p>It is the branch of Artificial Intelligence that gives the ability to machine understand and process human languages. For this tutorial, we are going to focus more on the NLTK library. Let\u2019s dig deeper into natural language processing by making some examples.<\/p>\n<\/p>\n<p><p>At&nbsp;Kommunicate, we are envisioning a world-beating customer support solution to empower the new era of customer support. We would love to have you on board to have a first-hand experience of Kommunicate. You can signup&nbsp;here&nbsp;and start delighting your customers right&nbsp;away. Additionally, while all the sentimental analytics are in place, NLP cannot deal with sarcasm, humour, or irony.<\/p>\n<\/p>\n<p><h2>Phases of Natural Language Processing<\/h2>\n<\/p>\n<p><p>In general terms, NLP tasks break down language into shorter, elemental pieces, try to understand relationships between the pieces and explore how the pieces work together to create meaning. There are quite a few acronyms in the world of automation and AI. Here are three key terms that will help you understand how NLP chatbots work.<\/p>\n<\/p>\n<div style='border: grey dashed 1px;padding: 11px'>\n<h3>Top Large Language Models (LLMs) in 2023 from OpenAI, Google AI, Deepmind, Anthropic, Baidu, Huawei, Meta AI, AI21 Labs, LG AI Research and NVIDIA &#8211; MarkTechPost<\/h3>\n<p>Top Large Language Models (LLMs) in 2023 from OpenAI, Google AI, Deepmind, Anthropic, Baidu, Huawei, Meta AI, AI21 Labs, LG AI Research and NVIDIA.<\/p>\n<p>Posted: Wed, 22 Feb 2023 08:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMisQFodHRwczovL3d3dy5tYXJrdGVjaHBvc3QuY29tLzIwMjMvMDIvMjIvdG9wLWxhcmdlLWxhbmd1YWdlLW1vZGVscy1sbG1zLWluLTIwMjMtZnJvbS1vcGVuYWktZ29vZ2xlLWFpLWRlZXBtaW5kLWFudGhyb3BpYy1iYWlkdS1odWF3ZWktbWV0YS1haS1haTIxLWxhYnMtbGctYWktcmVzZWFyY2gtYW5kLW52aWRpYS_SAbUBaHR0cHM6Ly93d3cubWFya3RlY2hwb3N0LmNvbS8yMDIzLzAyLzIyL3RvcC1sYXJnZS1sYW5ndWFnZS1tb2RlbHMtbGxtcy1pbi0yMDIzLWZyb20tb3BlbmFpLWdvb2dsZS1haS1kZWVwbWluZC1hbnRocm9waWMtYmFpZHUtaHVhd2VpLW1ldGEtYWktYWkyMS1sYWJzLWxnLWFpLXJlc2VhcmNoLWFuZC1udmlkaWEvP2FtcA?oc=5' rel=\"nofollow\">source<\/a>]\n<\/div>\n<p><p>By using Towards AI, you agree to our Privacy Policy, including our cookie policy. Named entity recognition can automatically scan entire articles and pull out some fundamental entities like people, organizations, places, date, time, money, and GPE discussed in them. In the following example, we will extract a noun phrase from the text. Before extracting it, we need to define what kind of noun phrase we are looking for, or in other words, we have to set the grammar for a noun phrase. In this case, we define a noun phrase by an optional determiner followed by adjectives and nouns. Next, we are going to use RegexpParser( ) to parse the grammar.<\/p>\n<\/p>\n<p><p>In the example above, we can see the entire text of our data is represented as sentences and also notice that  the total number of sentences here is 9. Gensim is an NLP Python framework generally used in topic modeling and similarity detection. It is not a general-purpose NLP library, but it handles tasks assigned to it very well.<\/p>\n<\/p>\n<ul>\n<li>We can use Wordnet to find meanings of words, synonyms, antonyms, and many other words.<\/li>\n<li>Natural language processing includes many different techniques for interpreting human language, ranging from statistical and machine learning methods to rules-based and algorithmic approaches.<\/li>\n<li>Additionally, while all the sentimental analytics are in place, NLP cannot deal with sarcasm, humour, or irony.<\/li>\n<li>They allow computers to analyze the rules of the structure and meaning of the language from data.<\/li>\n<\/ul>\n<p><p>You get a well-documented chatbot API with the framework so even beginners can get started with the tool. On top of that, it offers voice-based bots which improve the user experience. This is an open-source NLP chatbot developed by Google that you can integrate into a variety of channels including mobile apps, social media, and website pages. It provides a visual bot builder so you can see all changes in real time which speeds up the development process. This NLP bot offers high-class NLU technology that provides accurate support for customers even in more complex cases. The editing panel of your individual Visitor Says nodes is where you\u2019ll teach NLP to understand customer queries.<\/p>\n<\/p>\n<p><h2>How to implement common statistical significance tests and find the p value?<\/h2>\n<\/p>\n<p><p>And these are just some of the benefits businesses will see with an NLP chatbot on their support team. Here\u2019s a crash course on how NLP chatbots work, the difference between NLP bots and the clunky chatbots of old \u2014 and how next-gen generative AI chatbots are revolutionizing the world of NLP. This process identifies unique names for people, places, events, companies, and more. NLP software uses named-entity recognition to determine the relationship between different entities in a sentence. With word sense disambiguation, NLP software identifies a word&#8217;s intended meaning, either by training its language model or referring to dictionary definitions. Natural language processing (NLP) is critical to fully and efficiently analyze text and speech data.<\/p>\n<\/p>\n<p><a href=\"https:\/\/www.metadialog.com\/blog\/examples-of-nlp\/\"><\/p>\n<figure><img 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' alt='nlp examples' class='aligncenter' style='display:block;margin-left:auto;margin-right:auto' width='404px' \/><\/figure>\n<p><\/a><\/p>\n<p><p>One example is smarter visual encodings, offering up the best visualization for the right task based on the semantics of the data. This opens up more opportunities for people to explore their data using natural language statements or question fragments made up of several keywords that can be interpreted and assigned a meaning. Applying language to investigate data not only enhances the level of accessibility, but lowers the barrier to analytics across organizations, beyond the expected community of analysts and software developers.<\/p>\n<\/p>\n<p><h2>Classical Approaches<\/h2>\n<\/p>\n<p><p>Unfortunately, the machine reader sometimes had&nbsp; trouble deciphering comic from tragic. The use of NLP in the insurance industry allows companies to leverage text analytics and NLP for informed decision-making for critical claims and risk management processes. We\u2019ve already explored the many uses of Python programming, and NLP is a field that often draws on the language. What\u2019s more, Python has an extensive library (Natural Language Toolkit, NLTK) which can be used for NLP. Search engines have been part of our lives for a relatively long time. However, traditionally, they\u2019ve not been particularly useful for determining the context of what and how people search.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto' 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