{"id":177,"date":"2024-05-03T14:51:17","date_gmt":"2024-05-03T12:51:17","guid":{"rendered":"https:\/\/coding.vico.scuola.org\/arte-2e-2324\/?p=177"},"modified":"2024-10-29T14:33:48","modified_gmt":"2024-10-29T13:33:48","slug":"semantic-analysis-in-nlp-made-easy-10-best-tools","status":"publish","type":"post","link":"https:\/\/coding.vico.scuola.org\/arte-2e-2324\/?p=177","title":{"rendered":"Semantic Analysis In NLP Made Easy; 10 Best Tools To Get Started"},"content":{"rendered":"<p><h1>Developing an NLP Language Learning App<\/h1>\n<\/p>\n<p><img decoding=\"async\" class='wp-post-image' style='margin-left:auto;margin-right:auto' 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\" width=\"301px\" alt=\"semantic interpretation in nlp\" \/><\/p>\n<p><p>The networks constitute nodes that represent objects and arcs and try to define a relationship between them. Context plays a critical role in processing language as it helps to attribute the correct meaning. \u201cI ate an apple\u201d obviously refers to the fruit, but \u201cI got an apple\u201d could refer to both the fruit or a product. With customer support now including more web-based video calls, there is also an increasing amount of video training data starting to appear.<\/p>\n<\/p>\n<p><p>For example, the stem for the word \u201ctouched\u201d is \u201ctouch.\u201d \u201cTouch\u201d is also the stem of \u201ctouching,\u201d and so on. Since we want to get a sentiment score which ranges from -1.0 (very negative) to 1.0 (very positive) we want to  use the SCRIPT_REAL function to return decimal numbers. Semantic interpretation in artificial intelligence with ambiguity and dis-ambiguity&#8230;<\/p>\n<\/p>\n<p><h2>How does Semantic Analysis work<\/h2>\n<\/p>\n<p><p>It goes beyond syntactic analysis, which focuses solely on grammar and structure. Semantic analysis aims to uncover the deeper meaning and intent behind the words used in communication. Semantic analysis is defined as a process of understanding natural language (text) by extracting insightful information such as context, emotions, and sentiments from unstructured data.<\/p>\n<\/p>\n<div style='border: grey solid 1px;padding: 10px'>\n<h3>What is Multimodal AI? &#8211; TechTarget<\/h3>\n<p>What is Multimodal AI?.<\/p>\n<p>Posted: Mon, 22 May 2023 20:06:46 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiRmh0dHBzOi8vd3d3LnRlY2h0YXJnZXQuY29tL3NlYXJjaGVudGVycHJpc2VhaS9kZWZpbml0aW9uL211bHRpbW9kYWwtQUnSAQA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>There we can identify two named entities as \u201cMichael Jordan\u201d, a person and \u201cBerkeley\u201d, a location. There are real world categories for these entities, such as \u2018Person\u2019, \u2018City\u2019, \u2018Organization\u2019 and so on. Named entity recognition can be used in text classification, topic modelling, content recommendations, trend detection. Expert.ai\u2019s rule-based technology starts by reading all of the words within a piece of content to capture its real meaning. It then identifies the textual elements and assigns them to their logical and grammatical roles. Finally, it analyzes the surrounding text and text structure to accurately determine the proper meaning of the words in context.<\/p>\n<\/p>\n<p><h2>Studying the meaning of the Individual Word<\/h2>\n<\/p>\n<p><p>Nearly all search engines tokenize text, but there are further steps an engine can take to normalize the tokens. Semantic analysis is the process of understanding the meaning and interpretation of words, signs and sentence structure. I say this partly because semantic analysis is one of the toughest parts of natural language processing and it\u2019s not fully solved yet. A primary problem in the area of natural language processing is the problem of semantic analysis. This involves both formalizing the general and domain-dependent semantic information relevant to the task involved, and developing a uniform method for access to that information. Natural language interfaces are generally also required to have access to the syntactic analysis of a sentence as well as knowledge of the prior discourse to produce a detailed semantic representation adequate for the task.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='margin-left:auto;margin-right:auto' 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\" width=\"303px\" alt=\"semantic interpretation in nlp\" \/><\/p>\n<p><p>The choice of method often depends on the specific task, data availability, and the trade-off between complexity and performance. Semantics is the branch of linguistics that focuses on the meaning of words, phrases, and sentences within a language. It seeks to understand how words and combinations of words convey information, convey relationships, and express nuances. Natural Language Processing (NLP) requires complex processes such as Semantic Analysis to extract meaning behind texts or audio data. Through algorithms designed for this purpose, we can determine three primary categories of semantic analysis. It is the first part of the semantic analysis in <a href=\"https:\/\/www.metadialog.com\/blog\/semantic-analysis-in-nlp\/\">which the study<\/a> of the meaning of individual words is performed.<\/p>\n<\/p>\n<p><p>The arguments for the predicate can be identified from other parts of the sentence. Some methods use the  grammatical classes whereas others use unique methods to name these arguments. The identification of the predicate and the arguments for that predicate is known as semantic role labeling.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='margin-left:auto;margin-right:auto' src=\"https:\/\/www.metadialog.com\/wp-content\/uploads\/2022\/06\/examples-of-nlp-1.webp\" width=\"307px\" alt=\"semantic interpretation in nlp\" \/><\/p>\n<p><p>One way to represent <a href=\"https:\/\/www.metadialog.com\/blog\/semantic-analysis-in-nlp\/\">these states<\/a> is as nodes in a diagram, with arrowed lines (arcs) connecting them. The states and transitions compose the finite-state grammar, which may be called a transition network. A top-down strategy starts with S and searches through different ways to rewrite the symbols until it generates the input sentence (or it fails). Thus S is the start and it proceeds through a series of rewrites until the sentence under consideration is found. For example, \u2018destination\u2019 and \u2018last stop\u2019 technically mean the same thing, but students of semantics analyze their subtle shades of meaning.<\/p>\n<\/p>\n<p><p>As an aside, we point out that Prolog, like any other programming language, has a built-in tokenizer that allows it to recognize valid data types that exist in Prolog. Insofar as Prolog can recognize these as not only tokens but also as Prolog commands, it is not just a tokenizer but a built-in reader. The built-in reader can be used to build a Prolog natural language tokenizer that can tokenize strings that consist of valid Prolog terms. Using this Prolog reader, and a built-in &#8220;operator&#8221; predicate to define other operators that can connect nouns, for instance, an elementary natural language processor can be built that can parse simple sentences. So perhaps Prolog has an advantage over other languages when it comes to building a simple natural language processor. However, the types of sentences that can be parsed is so limited that another approach must be used for anything resembling a useful natural language processor for ordinary conversation.<\/p>\n<\/p>\n<p><p>This was developed further into the notion of Scripts, which we mentioned above. The idea was that the computer could be given background information (a SCRIPT) about what sorts of things happened in typical everyday scenarios, and it would then infer information not explicitly provided. MARGIE gave way to SAM (Script Applier Mechanism), which was able to translate limited sentences from a variety of languages (English, Chinese, Russian, Dutch, and Spanish).<\/p>\n<\/p>\n<p><p>It is from the fact that partial results are always well-formed semantic objects that the system gains much of its power. This, in turn, comes from the strict correspondence between syntax and semantics in ABSITY. The result is a foundation for semantic interpretation superior to previous approaches. A semantic interpreter must be able to provide feedback to the parser to help it handle structural ambiguities.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='margin-left:auto;margin-right:auto' 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width=\"300px\" alt=\"semantic interpretation in nlp\" \/><\/p>\n<p><p>Moreover, the system can prioritize or flag urgent requests and route them to the respective customer service teams for immediate action with semantic analysis. As discussed earlier, semantic analysis is a vital component of any automated ticketing support. It understands the text within each ticket, filters it based on the context, and directs the tickets to the right person or department (IT help desk, legal or sales department, etc.). All in all, semantic analysis enables chatbots to focus on user needs and address their queries in lesser time and lower cost. The first technique refers to text classification, while the second relates to text extractor.<\/p>\n<\/p>\n<p><p>We anticipate the emergence of more advanced pre-trained language models, further improvements in common sense reasoning, and the seamless integration of multimodal data analysis. As semantic analysis develops, its influence will extend beyond individual industries, fostering innovative solutions and enriching human-machine interactions. Stanford CoreNLP is a suite of NLP tools that can perform tasks like part-of-speech tagging, named entity recognition, and dependency parsing.<\/p>\n<\/p>\n<p><p>Understanding human language is considered a difficult task due to its complexity. For example, there are an infinite number of different ways to arrange words in a sentence. Also, words can have several meanings and contextual information is necessary to correctly interpret sentences. Just take a look at the following newspaper headline \u201cThe Pope\u2019s baby steps on gays.\u201d This sentence clearly has two very different interpretations, which is a pretty good example of the challenges in natural language processing.<\/p>\n<\/p>\n<ul>\n<li>In other words, we can say that lexical semantics is the relationship between lexical items, meaning of sentences and syntax of sentence.<\/li>\n<li>Therefore, the goal of semantic analysis is to draw exact meaning or dictionary meaning from the text.<\/li>\n<li>The approach helps deliver optimized and suitable content to the users, thereby boosting traffic and improving result relevance.<\/li>\n<li>Meaning representation can be used to reason for verifying what is true in the world as well as to infer the knowledge from the semantic representation.<\/li>\n<li>Text summarization techniques rely on NLP to condense lengthy texts into more manageable summaries.<\/li>\n<\/ul>\n<p><p>Consider the task of text summarization which is used to create digestible chunks of information from large quantities of text. Text summarization extracts words, phrases, and sentences to form a text summary that can be more easily consumed. The accuracy of the summary depends on a machine\u2019s ability to understand language data. Despite advances in machine learning and computational power, current NLP technologies still need to achieve the deep understanding of language that humans possess. Tasks like sarcasm detection, understanding humor, or interpreting emotional nuance still need to be completed in the scope of existing systems.<\/p>\n<\/p>\n<div style='border: grey dotted 1px;padding: 13px'>\n<h3>What Is Computational Linguistics &#8211; TechTarget<\/h3>\n<p>What Is Computational Linguistics.<\/p>\n<p>Posted: Tue, 14 Dec 2021 22:28:52 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiVWh0dHBzOi8vd3d3LnRlY2h0YXJnZXQuY29tL3NlYXJjaGVudGVycHJpc2VhaS9kZWZpbml0aW9uL2NvbXB1dGF0aW9uYWwtbGluZ3Vpc3RpY3MtQ0zSAQA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>Machines will better understand nuances, rhetoric, and cultural references, leading to more accurate interpretations and more engaging AI systems.Furthermore, the application of semantic analysis in chatbots and virtual assistants is expected to grow rapidly. These conversational agents will leverage semantic understanding to engage in more natural and context-aware interactions with users, enhancing the user experience and enabling more efficient information retrieval. Semantic analysis analyzes the grammatical format of sentences, including the arrangement of words, phrases, and clauses, to determine relationships between independent terms in a specific context. It is also a key component of several machine learning tools available today, such as search engines, chatbots, and text analysis software. A subfield of natural language processing (NLP) and machine learning, semantic analysis aids in comprehending the context of any text and understanding the emotions that may be depicted in the sentence. It is useful for extracting vital information from the text to enable computers to achieve human-level accuracy in the analysis of text.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='margin-left:auto;margin-right:auto' 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\" width=\"306px\" alt=\"semantic interpretation in nlp\" \/><\/p>\n<p><p>Often times changes in discourse segment are introduced but cue phrases such as &#8220;by the way.&#8221; Natural language processing must consider this extended discourse context, including multiple segments. For example, a pronoun may refer to a referent not mentioned in the previous segment but in an earlier segment. Consider two people talking about one of them taking a third person to the airport to catch a plane.<\/p>\n<\/p>\n<p><a href=\"https:\/\/www.metadialog.com\/\"><\/p>\n<figure><img src='https:\/\/www.metadialog.com\/wp-content\/uploads\/2022\/06\/power-of-chatbots-2.webp' alt='https:\/\/www.metadialog.com\/' class='aligncenter' style='margin-left:auto;margin-right:auto' width='405px' \/><\/figure>\n<p><\/a><\/p>\n<p><p>Capturing the information is the easy part but understanding what is being said (and doing this at scale) is a whole different story. Hence, under Compositional Semantics Analysis, we try to understand how combinations of individual words form the meaning of the text. The ethical considerations of NLP are as vast and complex as the technology itself. As the field progresses, continuous reflection, dialogue, and proactive measures are essential to ensure that NLP serves as a force for good, benefiting humanity as a whole. Relationship extraction is used to extract the semantic relationship between these entities.<\/p>\n<\/p>\n<div>\n<div>\n<h2>What are the semantics of natural language?<\/h2>\n<\/div>\n<div>\n<div>\n<p>Natural Language Semantics publishes studies focused on linguistic phenomena, including quantification, negation, modality, genericity, tense, aspect, aktionsarten, focus, presuppositions, anaphora, definiteness, plurals, mass nouns, adjectives, adverbial modification, nominalization, ellipsis, and interrogatives.<\/p>\n<\/div><\/div>\n<\/div>\n<p><p>Read more about <a href=\"https:\/\/www.metadialog.com\/\">https:\/\/www.metadialog.com\/<\/a> here.<\/p>\n<\/p>\n<div>\n<div>\n<h2>Is semantic analysis a part of NLP phases?<\/h2>\n<\/div>\n<div>\n<div>\n<p>Semantic analysis is the third stage in NLP, when an analysis is performed to understand the meaning in a statement. This type of analysis is focused on uncovering the definitions of words, phrases, and sentences and identifying whether the way words are organized in a sentence makes sense semantically.<\/p>\n<\/div><\/div>\n<\/div>\n","protected":false},"excerpt":{"rendered":"<p>Developing an NLP Language Learning App The networks constitute nodes that represent objects and arcs and try to define a relationship between them. Context plays a critical role in processing language as it helps to attribute the correct meaning. \u201cI ate an apple\u201d obviously refers to the fruit, but \u201cI got an apple\u201d could refer [&hellip;]<\/p>\n","protected":false},"author":2,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[1],"tags":[],"class_list":["post-177","post","type-post","status-publish","format-standard","hentry","category-senza-categoria"],"_links":{"self":[{"href":"https:\/\/coding.vico.scuola.org\/arte-2e-2324\/index.php?rest_route=\/wp\/v2\/posts\/177","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/coding.vico.scuola.org\/arte-2e-2324\/index.php?rest_route=\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/coding.vico.scuola.org\/arte-2e-2324\/index.php?rest_route=\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/coding.vico.scuola.org\/arte-2e-2324\/index.php?rest_route=\/wp\/v2\/users\/2"}],"replies":[{"embeddable":true,"href":"https:\/\/coding.vico.scuola.org\/arte-2e-2324\/index.php?rest_route=%2Fwp%2Fv2%2Fcomments&post=177"}],"version-history":[{"count":1,"href":"https:\/\/coding.vico.scuola.org\/arte-2e-2324\/index.php?rest_route=\/wp\/v2\/posts\/177\/revisions"}],"predecessor-version":[{"id":178,"href":"https:\/\/coding.vico.scuola.org\/arte-2e-2324\/index.php?rest_route=\/wp\/v2\/posts\/177\/revisions\/178"}],"wp:attachment":[{"href":"https:\/\/coding.vico.scuola.org\/arte-2e-2324\/index.php?rest_route=%2Fwp%2Fv2%2Fmedia&parent=177"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/coding.vico.scuola.org\/arte-2e-2324\/index.php?rest_route=%2Fwp%2Fv2%2Fcategories&post=177"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/coding.vico.scuola.org\/arte-2e-2324\/index.php?rest_route=%2Fwp%2Fv2%2Ftags&post=177"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}