{"id":4962,"date":"2024-04-30T10:40:29","date_gmt":"2024-04-30T10:40:29","guid":{"rendered":"https:\/\/skymall.dikonia.in\/?p=4962"},"modified":"2024-07-29T22:42:12","modified_gmt":"2024-07-29T22:42:12","slug":"10-examples-of-natural-language-processing-in","status":"publish","type":"post","link":"https:\/\/skymall.dikonia.in\/index.php\/2024\/04\/30\/10-examples-of-natural-language-processing-in\/","title":{"rendered":"10 Examples of Natural Language Processing in Action"},"content":{"rendered":"<p><h1>What Goes into Making a Successful NLP Design for Chatbots<\/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=\"300px\" alt=\"nlp examples\"\/><\/p>\n<p><p>You can also implement Text Summarization using spacy package. In the above output, you can notice that only 10% of original text is taken as summary. You can change the default parameters of the summarize function according to your requirements. You first read the summary to choose your article of interest. This section will equip you upon how to implement these vital tasks of NLP. The below code demonstrates how to get a list of all the names in the news .<\/p>\n<\/p>\n<p><p>Natural language capabilities are being integrated into data analysis workflows as more BI vendors offer a natural language interface to data visualizations. 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.<\/p>\n<\/p>\n<p><p>Organizing and analyzing this data manually is inefficient, subjective, and often impossible due to the volume. When you send out surveys, be it to customers, employees, or any other group, you need to be able to draw actionable insights from the data you get back. They are effectively trained by their owner and, like other applications of NLP, learn from experience in order to provide better, more tailored assistance.<\/p>\n<\/p>\n<p><p>As the technology evolved, different approaches have come to deal with NLP tasks. NLP tutorial is designed for both beginners and professionals. Online search is now the primary way that people access information. Today, employees and customers alike expect the same ease of finding what they need, when they need it from any search bar, and this includes within the enterprise. Even the business sector is realizing the benefits of this technology, with 35% of companies using NLP for email or text classification purposes.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"304px\" alt=\"nlp examples\"\/><\/p>\n<p><p>In this case, we are going to use NLTK for Natural Language Processing. TextBlob is a Python library designed for processing textual data. The NLTK Python framework is generally used as an education and research tool. However, it can be used to build exciting programs due to its ease of use. Pragmatic analysis deals with overall communication and interpretation of language.<\/p>\n<\/p>\n<p><h2>Understanding Natural Language Processing (NLP):<\/h2>\n<\/p>\n<p><p>For example, in the user query, \u201cWhen is Halloween this year? \u201d, the intent of the user is clearly to know the date of Halloween, with Halloween being the entity that is talked about. Chatbots primarily employ the concept of Natural Language Processing in two stages to get to the core of a user\u2019s query. An NLP chatbot is smarter than a traditional chatbot and has the capability to \u201clearn\u201d from every interaction that it carries.<\/p>\n<\/p>\n<p><p>With an AI-platform like MonkeyLearn, you can start using pre-trained models right away, or build a customized NLP solution in just a few steps (no coding needed). These intelligent machines are increasingly present at the frontline of customer support, as they can help teams solve up to 80% of all routine queries and route more complex issues to human agents. Available 24\/7, chatbots and virtual assistants can speed up response times, and relieve agents from repetitive and time-consuming queries. Many companies have more data than they know what to do with, making it challenging to obtain meaningful insights. As a result, many businesses now look to NLP and text analytics to help them turn their unstructured data into insights. Core NLP features, such as named entity extraction, give users the power to identify key elements like names, dates, currency values, and even phone numbers in text.<\/p>\n<\/p>\n<div style='border: grey dotted 1px;padding: 12px;'>\n<h3>A marketer\u2019s guide to natural language processing (NLP) &#8211; Sprout Social<\/h3>\n<p>A marketer\u2019s guide to natural language processing (NLP).<\/p>\n<p>Posted: Mon, 11 Sep 2023 07:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiPmh0dHBzOi8vc3Byb3V0c29jaWFsLmNvbS9pbnNpZ2h0cy9uYXR1cmFsLWxhbmd1YWdlLXByb2Nlc3Npbmcv0gFCaHR0cHM6Ly9zcHJvdXRzb2NpYWwuY29tL2luc2lnaHRzL25hdHVyYWwtbGFuZ3VhZ2UtcHJvY2Vzc2luZy8_YW1w?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>Autocomplete (or sentence completion) integrates NLP with specific Machine learning algorithms to predict what words or sentences will come next, in an effort to complete the meaning of the text. In the 1950s, Georgetown and IBM presented the first NLP-based translation machine, which had the ability to translate 60 Russian sentences to English automatically. It might feel like your thought is being finished before you get the chance to finish typing. Search engines leverage NLP to suggest relevant results based on previous search history behavior and user intent.<\/p>\n<\/p>\n<p><p>Unfortunately, the machine reader sometimes had&nbsp; trouble deciphering comic from tragic. We\u2019ll be there to answer your questions about generative AI strategies, building a trusted data foundation, and driving ROI. Email filters are common NLP examples you can find online across most servers. From a corporate perspective, spellcheck helps to filter out any inaccurate information in databases by removing typo variations. On average, retailers with a semantic search bar experience a 2% cart abandonment rate, which is significantly lower than the 40% rate found on websites with a non-semantic search bar.<\/p>\n<\/p>\n<p><p>In fact, a report by Social Media Today states that the quantum of people using voice search to search for products is 50%. With that in mind, a good chatbot needs to have a robust NLP architecture that enables it to process user requests and answer with relevant information. This frees up human employees from routine first-tier requests, enabling them to handle escalated customer issues, which require more time and expertise. SpaCy is a free, open-source library for NLP in Python written in Cython. SpaCy is designed to make it easy to build systems for information extraction or general-purpose natural language processing. Analyzing topics, sentiment, keywords, and intent in unstructured data can really boost your market research, shedding light on trends and business opportunities.<\/p>\n<\/p>\n<p><p>It\u2019s a way to provide always-on customer support, especially for frequently asked questions. The final addition to this list of NLP examples would point to predictive text analysis. You must have used predictive text on your smartphone while typing messages. Google is one of the best examples of using NLP in predictive text analysis. Predictive text analysis applications utilize a powerful neural network model for learning from the user behavior to predict the next phrase or word.<\/p>\n<\/p>\n<p><p>It can take some time to make sure your bot understands your customers and provides the right responses. NLP tools can also help customer service departments understand customer sentiment. However, manually analyzing sentiment is time-consuming and can be downright impossible depending on brand size. NLP is broadly defined as the automatic manipulation of natural language, either in speech or text form, by software.<\/p>\n<\/p>\n<p><h2>Smart Search and Predictive Text<\/h2>\n<\/p>\n<p><p>However, you can run the examples with a transformer model instead. Unstructured text is produced by companies, governments, and the general population at an incredible scale. It\u2019s often important to automate the processing and analysis of text that would be impossible for humans to process.<\/p>\n<\/p>\n<p><p>Learners are advised to conduct additional research to ensure that courses and other credentials pursued meet their personal, professional, and financial goals. Let\u2019s see how these components come together into a working chatbot. Cosine similarity determines the similarity score between two vectors.<\/p>\n<\/p>\n<p><h2>Introduction to NLP and spaCy<\/h2>\n<\/p>\n<p><p>The brand is able to collect better quality data from such a setup. Some deep learning tools allow NLP chatbots to gauge from the users\u2019 text or voice the mood that they are in. Not only does this help in analyzing the sensitivities of the interaction, but it also provides suitable responses to keep the situation from blowing out of proportion. NLP-powered virtual agents are bots that rely on intent systems and pre-built dialogue flows \u2014 with different pathways depending on the details a user provides \u2014 to resolve customer issues. A chatbot using NLP will keep track of information throughout the conversation and learn as they go, becoming more accurate over time.<\/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='403px'\/><\/figure>\n<p><\/a><\/p>\n<p><p>At any time ,you can instantiate a pre-trained version of model through .from_pretrained() method. There are different types of models like BERT, GPT, GPT-2, XLM,etc.. Now, let me introduce you to another method of text summarization using Pretrained models available in the transformers library.<\/p>\n<\/p>\n<p><p>To learn more about how natural language can help you better visualize and explore your data, check out this webinar. One of the tell-tale signs of cheating on your Spanish homework is that grammatically, it\u2019s a mess. Many languages don\u2019t allow for straight translation and have different orders for sentence structure, which translation services used to overlook. With NLP, online translators can translate languages more accurately and present grammatically-correct results. This is infinitely helpful when trying to communicate with someone in another language.<\/p>\n<\/p>\n<p><h2>How to Use Chatbots in Your Business?<\/h2>\n<\/p>\n<p><p>Machine capabilities are exploited to train the bot to understand alternate ways of expressing the same meaning in similar contexts. These alternate expressions are mapped to the utterances (intents), so the bot knows they mean the same thing. Machine learning models constantly expand the language model, intent and entity recognition of the bot. Companies are now deploying NLP in customer service through sentiment analysis tools that automatically monitor written text, such as reviews and social media posts, to track sentiment in real time. This helps companies proactively respond to negative comments and complaints from users. It also helps companies improve product recommendations based on previous reviews written by customers and better understand their preferred items.<\/p>\n<\/p>\n<p><p>For better understanding, you can use displacy function of spacy. In real life, you will stumble across huge amounts of data in the form of text files. In spaCy, the POS tags are present in the attribute of Token object. You can access the POS tag of particular token theough the token.pos_ attribute.<\/p>\n<\/p>\n<p><p>There are punctuation, suffices and stop words that do not give us any information. Text Processing involves preparing the text corpus to make it more usable for NLP tasks. It supports the NLP tasks like Word Embedding, text summarization and many others.<\/p>\n<\/p>\n<p><p>While there&#8217;s still a long way to go before machine learning and NLP have the same capabilities as humans, AI is fast becoming a tool that customer service teams can rely upon. The latest AI models are unlocking these areas to analyze the meanings of input text and generate meaningful, expressive output. IBM equips businesses with the Watson Language Translator to quickly translate content into various languages with global audiences in mind. With glossary and phrase rules, companies are able to customize this AI-based tool to fit the market and context they\u2019re targeting. Machine learning and natural language processing technology also enable IBM\u2019s Watson Language Translator to convert spoken sentences into text, making communication that much easier. Organizations and potential customers can then interact through the most convenient language and format.<\/p>\n<\/p>\n<p><p>It is based on the concept that words which occur more frequently are significant. Hence , the sentences containing highly frequent words are important . In this post, I discuss and use various traditional and advanced methods to implement automatic Text Summarization. Natural Language Processing started in 1950 When Alan Mathison Turing published an article in the name Computing Machinery and Intelligence. It talks about automatic interpretation and generation of natural language.<\/p>\n<\/p>\n<p><p>Anyone learning about NLP for the first time would have questions regarding the practical implementation of NLP in the real world. On paper, the concept of machines interacting semantically with humans is a massive leap forward in the domain of technology. Natural language processing is closely related to computer vision. It blends rule-based models for human language or computational linguistics with other models, including deep learning, machine learning, and statistical models.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"308px\" alt=\"nlp examples\"\/><\/p>\n<p><p>You can specify the language used as input to the Tokenizer. Sumy libraray provides you several algorithms to implement Text Summarzation. Just import your desired algorithm rather having to code it on your own.<\/p>\n<\/p>\n<p><h2>Types of Text Summarization<\/h2>\n<\/p>\n<p><p>For this reason, an increasing number of companies are turning to machine learning and NLP software to handle high volumes of customer feedback. Companies depend on customer satisfaction metrics to be able to make modifications to their product or service offerings, and NLP has been proven to help. Additionally, chatbots can be trained to learn industry language and answer industry-specific questions. These additional benefits can have business implications like lower customer churn, less staff turnover and increased growth.<\/p>\n<\/p>\n<p><p>Now, I will walk you through a real-data example of classifying movie reviews as positive or negative. Context refers to the source text based on whhich we require answers from the model. You can pass the string to .encode() which will converts a string in a sequence of ids, using the tokenizer and vocabulary. I shall first walk you step-by step through the process to understand how the next word of the sentence is generated. After that, you can loop over the process to generate as many words as you want. This technique of generating new sentences relevant to context is called Text Generation.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"305px\" alt=\"nlp examples\"\/><\/p>\n<p><p>For instance, researchers have found that models will parrot biased language found in their training data, whether they\u2019re counterfactual, racist, or hateful. Moreover, sophisticated language models can be used to generate disinformation. A broader concern is that training large models produces substantial greenhouse gas emissions. NLP is one of the fast-growing research domains in AI, with applications that involve tasks including translation, summarization, text generation, and sentiment analysis.<\/p>\n<\/p>\n<p><p>It was developed by HuggingFace and provides state of the art models. It is an advanced library known for the transformer modules, it is currently under active development. NLP has advanced so much in recent times that AI can write its own movie scripts, create poetry, summarize text and answer questions for you from a piece of text. This article will help you understand the basic and advanced NLP concepts and show you how to implement using the most advanced and popular NLP libraries \u2013 spaCy, Gensim, Huggingface and NLTK.<\/p>\n<\/p>\n<p><p>MonkeyLearn is a good example of a tool that uses NLP and machine learning to analyze survey results. It can sort through large amounts of unstructured data to give you insights within seconds. Similarly, support ticket routing, or making sure the right query gets to the right team, can also be automated. This is done by using NLP to understand what the customer needs based on the language they are using. This is then combined with deep learning  technology to execute the routing.<\/p>\n<\/p>\n<div style='border: grey dashed 1px;padding: 14px;'>\n<h3>What is NLP? Natural language processing explained &#8211; CIO<\/h3>\n<p>What is NLP? Natural language processing explained.<\/p>\n<p>Posted: Fri, 11 Aug 2023 07:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiUWh0dHBzOi8vd3d3LmNpby5jb20vYXJ0aWNsZS8yMjg1MDEvbmF0dXJhbC1sYW5ndWFnZS1wcm9jZXNzaW5nLW5scC1leHBsYWluZWQuaHRtbNIBUWh0dHBzOi8vd3d3LmNpby5jb20vYXJ0aWNsZS8yMjg1MDEvbmF0dXJhbC1sYW5ndWFnZS1wcm9jZXNzaW5nLW5scC1leHBsYWluZWQuaHRtbA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>To make a custom infix function, first you define a new list on line 12 with any regex patterns that you want to include. Then, you join your custom list with the Language object\u2019s .Defaults.infixes <a href=\"https:\/\/www.metadialog.com\/blog\/examples-of-nlp\/\">nlp examples<\/a> attribute, which needs to be cast to a list before joining. Then you pass the extended tuple as an argument to spacy.util.compile_infix_regex() to obtain your new regex object for infixes.<\/p>\n<\/p>\n<p><p>Employing machine learning or the more advanced deep learning algorithms impart comprehension capabilities to the chatbot. Unless this is done right, a chatbot will be cold and ineffective at addressing customer queries. This is where AI steps in \u2013 in the form of conversational assistants, NLP chatbots today are bridging the gap between consumer expectation and brand communication. You can foun additiona information about <a href=\"https:\/\/www.cravingtech.com\/ai-customer-service-all-you-need-to-know.html\">ai customer service<\/a> and artificial intelligence and NLP. Through implementing machine learning and deep analytics, NLP chatbots are able to custom-tailor each conversation effortlessly and meticulously.<\/p>\n<\/p>\n<ul>\n<li>A widespread example of speech recognition is the smartphone&#8217;s voice search integration.<\/li>\n<li>When integrated, these technological models allow computers to process human language through either text or spoken words.<\/li>\n<li>As a matter of fact, chatbots had already made their mark before the arrival of smart assistants such as Siri and Alexa.<\/li>\n<\/ul>\n<p><p>Notice that the first description contains 2 out of 3 words from our user query, and the second description contains 1 word from the query. The third description also contains 1 word, and the forth description contains no words from the user query. As we can sense that the closest answer to our query will be description number two, as it contains the essential word \u201ccute\u201d from the user\u2019s query, this is how TF-IDF calculates the value. TF-IDF stands for Term Frequency\u200a\u2014\u200aInverse Document Frequency, which is a scoring measure generally used in information retrieval (IR) and summarization. The TF-IDF score shows how important or relevant a term is in a given document.<\/p><\/p>\n","protected":false},"excerpt":{"rendered":"<p>What Goes into Making a Successful NLP Design for Chatbots You can also implement Text Summarization using spacy package. In the above output, you can notice that only 10% of original text is taken as summary. You can change the default parameters of the summarize function according to your requirements. You first read the summary&hellip; <a class=\"more-link\" href=\"https:\/\/skymall.dikonia.in\/index.php\/2024\/04\/30\/10-examples-of-natural-language-processing-in\/\">Continue reading <span class=\"screen-reader-text\">10 Examples of Natural Language Processing in Action<\/span><\/a><\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":[],"categories":[321],"tags":[],"_links":{"self":[{"href":"https:\/\/skymall.dikonia.in\/index.php\/wp-json\/wp\/v2\/posts\/4962"}],"collection":[{"href":"https:\/\/skymall.dikonia.in\/index.php\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/skymall.dikonia.in\/index.php\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/skymall.dikonia.in\/index.php\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/skymall.dikonia.in\/index.php\/wp-json\/wp\/v2\/comments?post=4962"}],"version-history":[{"count":1,"href":"https:\/\/skymall.dikonia.in\/index.php\/wp-json\/wp\/v2\/posts\/4962\/revisions"}],"predecessor-version":[{"id":4963,"href":"https:\/\/skymall.dikonia.in\/index.php\/wp-json\/wp\/v2\/posts\/4962\/revisions\/4963"}],"wp:attachment":[{"href":"https:\/\/skymall.dikonia.in\/index.php\/wp-json\/wp\/v2\/media?parent=4962"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/skymall.dikonia.in\/index.php\/wp-json\/wp\/v2\/categories?post=4962"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/skymall.dikonia.in\/index.php\/wp-json\/wp\/v2\/tags?post=4962"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}