{"id":8060,"date":"2023-10-16T04:59:10","date_gmt":"2023-10-16T10:59:10","guid":{"rendered":"https:\/\/weeksclan.com\/?p=8060"},"modified":"2023-12-27T13:42:57","modified_gmt":"2023-12-27T20:42:57","slug":"semantic-analysis-in-nlp-made-easy-10-best-tools","status":"publish","type":"post","link":"https:\/\/weeksclan.com\/?p=8060","title":{"rendered":"Semantic Analysis In NLP Made Easy; 10 Best Tools To Get Started"},"content":{"rendered":"<p><h1>Natural Language Processing for the Semantic Web SpringerLink<\/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=\"309px\" alt=\"semantic in nlp\"\/><\/p>\n<p><p>There is a growing realization among NLP experts that observations of form alone, without grounding in the referents it represents, can never lead to true extraction of meaning-by humans or computers (Bender and Koller, 2020). Another proposed solution-and one we hope to contribute to with our work-is to integrate logic or even explicit logical representations into distributional semantics and deep learning methods. Semantic analysis is the process of understanding the meaning and interpretation of words, signs and sentence structure. This lets computers partly understand natural language the way humans do. I say this partly because semantic analysis is one of the toughest parts of natural language processing and it\u2019s not fully solved yet. As we enter the era of \u2018data explosion,\u2019 it is vital for organizations to optimize this excess yet valuable data and derive valuable insights to drive their business goals.<\/p>\n<\/p>\n<div style='border: grey solid 1px;padding: 14px;'>\n<h3>Knowledge Graph Market worth $2.4 billion by 2028 &#8211; Exclusive &#8230; &#8211; PR Newswire<\/h3>\n<p>Knowledge Graph Market worth $2.4 billion by 2028 &#8211; Exclusive &#8230;.<\/p>\n<p>Posted: Tue, 31 Oct 2023 14:15:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMikAFodHRwczovL3d3dy5wcm5ld3N3aXJlLmNvbS9uZXdzLXJlbGVhc2VzL2tub3dsZWRnZS1ncmFwaC1tYXJrZXQtd29ydGgtMi00LWJpbGxpb24tYnktMjAyOC0tLWV4Y2x1c2l2ZS1yZXBvcnQtYnktbWFya2V0c2FuZG1hcmtldHMtMzAxOTcyNTMwLmh0bWzSAQA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>The meaning representation can be used to reason for verifying what is correct in the world as well as to extract the knowledge with  semantic representation. As we discussed, the most important task of semantic analysis is to find the proper meaning of the sentence. Content is today analyzed by search engines, semantically and ranked accordingly. It is thus important to load the content with sufficient context and expertise. On the whole, such a trend has improved the general content quality of the internet.<\/p>\n<\/p>\n<p><h2>Word Sense Disambiguation:<\/h2>\n<\/p>\n<p><p>To unlock the potential in these representations, we have made them more expressive and more consistent across classes of verbs. We have grounded them in the linguistic theory of the Generative Lexicon (GL) (Pustejovsky, 1995, 2013; Pustejovsky and Moszkowicz, 2011), which provides a coherent  structure for expressing the temporal and causal sequencing of subevents. Explicit pre- and post-conditions, aspectual information, and well-defined predicates all enable the tracking of an entity&#8217;s state across a complex event. VerbNet is also somewhat similar to PropBank and Abstract Meaning Representations (AMRs). PropBank defines semantic roles for individual verbs and eventive nouns, and these are used as a base for AMRs, which are semantic graphs for individual sentences.<\/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=\"semantic in nlp\"\/><\/p>\n<p><p>Compounding the situation, a word may have different senses in different<\/p>\n<p>parts of speech. The word &#8220;flies&#8221; has at least two senses as a noun<\/p>\n<p>(insects, fly balls) and at least two more as a verb (goes fast, goes through<\/p>\n<p>the air). With its ability to quickly process large data sets and extract insights, NLP is ideal for reviewing candidate resumes, generating financial reports and identifying patients for clinical trials, among many other use cases across various industries. There have also been huge advancements in machine translation through the rise of recurrent neural networks, about which I also wrote a blog post. These two sentences mean the exact same thing and the use of the word is identical. Sentiment analysis is a tool that businesses use to examine consumer comments about their goods or services in order to better understand how their clients feel about them.<\/p>\n<\/p>\n<p><h2>Semantic Analysis, Explained<\/h2>\n<\/p>\n<p><p>This formal structure that is used to understand the meaning of a text is called meaning representation. Natural language processing (NLP) and natural language understanding (NLU) are two often-confused technologies that make search more intelligent and ensure people can search and find what they want. UCCA (Abend and Rappoport, 2013)<\/p>\n<p>is a semantic representation whose main design principles<\/p>\n<p>are ease of annotation, cross-linguistic applicability, and a modular architecture. UCCA represents<\/p>\n<p>the semantics of linguistic utterances as directed acyclic graphs (DAGs), where terminal (childless)<\/p>\n<p>nodes correspond to the text tokens, and non-terminal nodes to semantic units that participate in<\/p>\n<p>some super-ordinate relation. Edges are labeled,<\/p>\n<p>indicating the role of a child in the relation the parent represents. UCCA\u2019s foundational layer mostly covers predicate-argument structure,<\/p>\n<p>semantic heads and inter-Scene relations.<\/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=\"semantic in nlp\"\/><\/p>\n<p><p>In this article we saw the basic version of how semantic search can be implemented. There are many ways to further enhance it using newer deep learning models. In conclusion, semantic analysis in NLP is at the forefront of technological innovation, driving a revolution in how we understand and interact with language. It promises to reshape our world, making communication more accessible, efficient, and meaningful. With the ongoing commitment to address challenges and embrace future trends, the journey of semantic analysis remains exciting and full of potential.<\/p>\n<\/p>\n<p><h2>Applying NLP in Semantic Web Projects<\/h2>\n<\/p>\n<p><p>Furthermore, once calculated, these (pre-computed) word embeddings can be re-used by other applications, greatly improving the innovation and accuracy, effectiveness, of NLP models across the application landscape. ELMo also has the unique characteristic that, given that it uses character-based tokens rather than word or phrase based, it can also even recognize new words from text which the older models could not, solving what is known as the out of vocabulary problem (OOV). By leveraging these techniques, NLP systems can gain a deeper understanding of human language, making them more versatile and capable of handling various tasks, from sentiment analysis to machine translation and question answering. Semantic analysis in Natural Language Processing (NLP) is understanding the meaning of words, phrases, sentences, and entire texts in human language. It goes beyond the surface-level analysis of words and their grammatical structure (syntactic analysis) and focuses on deciphering the deeper layers of language comprehension. Semantics gives a deeper understanding of the text in sources such as a blog post, comments in a forum, documents, group chat applications, chatbots, etc.<\/p>\n<\/p>\n<ul>\n<li>Our client partnered with us to scale up their development team and bring to life their innovative semantic engine for text mining.<\/li>\n<li>The Escape-51.1 class is a typical change of location class, with member verbs like depart, arrive and flee.<\/li>\n<li>IBM Watson is a suite of tools that provide NLP capabilities for text analysis.<\/li>\n<li>A second, non-hierarchical organization (Appendix C) groups together predicates that relate to the same semantic domain and defines, where applicable, the predicates&#8217; relationships to one another.<\/li>\n<li>For example, consider the query, \u201cFind me all documents that mention Barack Obama.\u201d Some documents might contain \u201cBarack Obama,\u201d others \u201cPresident Obama,\u201d and still others \u201cSenator Obama.\u201d When used correctly, extractors will map all of these terms to a single concept.<\/li>\n<\/ul>\n<p><p>They often occurred in the During(E) phase of the representation, but that phase was not restricted to processes. With the introduction of \u00eb, we can not only identify simple process frames but also distinguish punctual transitions from one state to another from transitions across a longer span of time; that is, we can distinguish accomplishments from achievements. The next stage involved developing representations for classes that primarily dealt with states and processes. Because our representations for change events necessarily included state subevents and often included process subevents, we had already developed principles for how to represent states and processes. Once our fundamental structure was established, we adapted these basic representations to events that included more event participants, such as Instruments and Beneficiaries. We applied them to all frames in the Change of Location, Change of State, Change of Possession, and Transfer of Information classes, a process that required iterative refinements to our representations as we encountered more complex events and unexpected variations.<\/p>\n<\/p>\n<p><p>Additionally, PSG is highly reusable and interoperable, being applicable to different NLP tasks like parsing, generation, translation, summarization, and question answering, while also being able to integrate with other linguistic resources and tools. We are encouraged by the efficacy of the semantic representations in tracking entity changes in state and location. We would like to see if the use of specific predicates or the whole representations can be integrated with deep-learning techniques to improve tasks that require rich semantic interpretations.<\/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=\"semantic in nlp\"\/><\/p>\n<p><p>We should identify whether they refer to an entity or not in a certain document. The semantic analysis focuses on larger chunks of text, whereas lexical analysis is based on smaller tokens. Semantic analysis is done by analyzing the grammatical structure of a piece of text and understanding how one word in a sentence is related to another. Data pre-processing is one of the most significant step in text analytics.<\/p>\n<\/p>\n<p><p>Tasks like  sentiment analysis can be useful in some contexts, but search isn\u2019t one of them. While NLP is all about processing text and natural language, NLU is about understanding that text. They need the information to be structured in specific ways to build upon it.<\/p>\n<\/p>\n<div itemScope itemProp=\"mainEntity\" itemType=\"https:\/\/schema.org\/Question\">\n<div itemProp=\"name\">\n<h2>What is semantic text?<\/h2>\n<\/div>\n<div itemScope itemProp=\"acceptedAnswer\" itemType=\"https:\/\/schema.org\/Answer\">\n<div itemProp=\"text\">\n<p>Simply put, semantic analysis is the process of drawing meaning from text. It allows computers to understand and interpret sentences, paragraphs, or whole documents, by analyzing their grammatical structure, and identifying relationships between individual words in a particular context.<\/p>\n<\/div><\/div>\n<\/div>\n<p><p>It offers support for tasks such as sentence splitting, tokenization, part-of-speech tagging, and more, making it a versatile choice for semantic analysis. As semantic <a href=\"https:\/\/www.metadialog.com\/blog\/semantic-analysis-in-nlp\/\">analysis evolves, it<\/a> holds the potential to transform the way we interact with machines and leverage the power of language understanding across diverse applications. Natural language processing brings together linguistics and algorithmic models to analyze written and spoken human language.<\/p>\n<\/p>\n<p><p>Now that we\u2019ve learned about how natural language processing works, it\u2019s important to understand what it can do for businesses. Another remarkable thing about human language is that it is all about symbols. According to Chris Manning, a machine learning professor at Stanford, it is a discrete, symbolic, categorical signaling system. This means we can convey the same meaning in different ways (i.e., speech, gesture, signs, etc.) The encoding by the human brain is a continuous pattern of activation by which the symbols are transmitted via continuous signals of sound and vision.<\/p>\n<\/p>\n<div style='border: grey dotted 1px;padding: 13px;'>\n<h3>Job Trends in Data Analytics: NLP for Job Trend Analysis &#8211; KDnuggets<\/h3>\n<p>Job Trends in Data Analytics: NLP for Job Trend Analysis.<\/p>\n<p>Posted: Tue, 03 Oct 2023 07:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiUWh0dHBzOi8vd3d3LmtkbnVnZ2V0cy5jb20vam9iLXRyZW5kcy1pbi1kYXRhLWFuYWx5dGljcy1ubHAtZm9yLWpvYi10cmVuZC1hbmFseXNpc9IBAA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>As we saw in example 11, E is applied to states that hold throughout the run time of the overall event described by a frame. When E is used, the representation says nothing about the state having beginning or end boundaries other than that they are not within the scope of the representation. This is true whether the representation has one or multiple subevent phases. Process subevents were not distinguished from other types of subevents in previous versions of VerbNet.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"301px\" alt=\"semantic in nlp\"\/><\/p>\n<p><p>An example is in the sentence \u201cThe water over the years carves through the rock,\u201d for which ProPara human annotators have indicated that the entity \u201cspace\u201d has been CREATED. This is extra-linguistic information that is derived through world knowledge only. Lexis, and any system that relies on linguistic cues only, is not expected to be able to make this type of analysis. It is important to recognize the border between linguistic and extra-linguistic semantic information, and how well VerbNet semantic representations enable us to achieve an in-depth linguistic semantic analysis. The arguments of each predicate are represented using the thematic roles for the class. These roles provide the link between the syntax and the semantic representation.<\/p>\n<\/p>\n<ul>\n<li>Future NLP models will excel at understanding and maintaining context throughout conversations or document analyses.<\/li>\n<li>ELMo uses character level encoding and a bi-directional LSTM (long short-term memory) a type of recurrent neural network (RNN) which produces both local and global context aware word embeddings.<\/li>\n<li>An alternative, unsupervised learning algorithm for constructing word embeddings was introduced in 2014 out of Stanford\u2019s Computer Science department [12] called GloVe, or Global Vectors for Word Representation.<\/li>\n<li>In the rest of this article, we review the relevant background on Generative Lexicon (GL) and VerbNet, and explain our method for using GL&#8217;s theory of subevent structure to improve VerbNet&#8217;s semantic representations.<\/li>\n<\/ul>\n<p><p>Popular algorithms for stemming include the Porter stemming algorithm from 1979, which still works well. Below is a parse tree for the sentence \u201cThe thief robbed the apartment.\u201d Included is a description of the three different information types conveyed by the sentence. It is a complex system, although little children can learn it pretty quickly.<\/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=\"semantic 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<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<div itemScope itemProp=\"mainEntity\" itemType=\"https:\/\/schema.org\/Question\">\n<div itemProp=\"name\">\n<h2>What is a semantic in language?<\/h2>\n<\/div>\n<div itemScope itemProp=\"acceptedAnswer\" itemType=\"https:\/\/schema.org\/Answer\">\n<div itemProp=\"text\">\n<p>Semantics is the study of the meaning of words, phrases and sentences. In semantic analysis, there is always an attempt to focus on what the words conventionally mean, rather than on what an individual speaker (like George Carlin) might want them to mean on a particular occasion.<\/p>\n<\/div><\/div>\n<\/div>\n","protected":false},"excerpt":{"rendered":"<p>Natural Language Processing for the Semantic Web SpringerLink There is a growing realization among NLP experts that observations of form alone, without grounding in the referents it represents, can never lead to true extraction of meaning-by humans or computers (Bender and Koller, 2020). Another proposed solution-and one we hope to contribute to with our work-is [&hellip;]<\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"closed","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[116],"tags":[],"_links":{"self":[{"href":"https:\/\/weeksclan.com\/index.php?rest_route=\/wp\/v2\/posts\/8060"}],"collection":[{"href":"https:\/\/weeksclan.com\/index.php?rest_route=\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/weeksclan.com\/index.php?rest_route=\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/weeksclan.com\/index.php?rest_route=\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/weeksclan.com\/index.php?rest_route=%2Fwp%2Fv2%2Fcomments&post=8060"}],"version-history":[{"count":1,"href":"https:\/\/weeksclan.com\/index.php?rest_route=\/wp\/v2\/posts\/8060\/revisions"}],"predecessor-version":[{"id":8061,"href":"https:\/\/weeksclan.com\/index.php?rest_route=\/wp\/v2\/posts\/8060\/revisions\/8061"}],"wp:attachment":[{"href":"https:\/\/weeksclan.com\/index.php?rest_route=%2Fwp%2Fv2%2Fmedia&parent=8060"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/weeksclan.com\/index.php?rest_route=%2Fwp%2Fv2%2Fcategories&post=8060"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/weeksclan.com\/index.php?rest_route=%2Fwp%2Fv2%2Ftags&post=8060"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}