{"id":1167,"date":"2023-04-06T11:05:25","date_gmt":"2023-04-06T11:05:25","guid":{"rendered":"http:\/\/reformasherrero.com\/?p=1167"},"modified":"2024-01-24T13:38:18","modified_gmt":"2024-01-24T13:38:18","slug":"four-sentiment-analysis-accuracy-challenges-in-nlp","status":"publish","type":"post","link":"http:\/\/reformasherrero.com\/?p=1167","title":{"rendered":"Four Sentiment Analysis Accuracy Challenges in NLP"},"content":{"rendered":"<p><h1>nlp js docs v3 sentiment-analysis.md at master axa-group nlp.js<\/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=\"302px\" alt=\"Sentiment Analysis NLP\"\/><\/p>\n<p><p>I simply clicked on the&nbsp;sentiment filter, and the data was presented to me in a user-friendly Brand24 dashboard. Negative sentiment may be expressed using words such as \u201cbad\u201d, \u201cterrible\u201d, \u201chate\u201d, and \u201cdisgusting\u201d. Positive sentiment may be expressed using words such as \u201cgood\u201d, \u201cgreat\u201d, \u201cwonderful\u201d, and \u201cfantastic\u201d. After cleaning and organizing the text, use effective techniques for sentiment analysis. The tool offers a 14-day free trial and is supported by social media platforms such as Facebook, Instagram, Twitter, etc.<\/p>\n<\/p>\n<p><p>Get an understanding of customer feelings and opinions, beyond mere numbers and statistics. Understand how your brand image evolves over time, and compare it to that of your competition. You <a href=\"https:\/\/www.metadialog.com\/blog\/sentiment-analysis-and-nlp\/\">can tune<\/a> into a specific point in time to follow product releases, marketing campaigns, IPO filings, etc., and compare them to past events. Brands of all shapes and sizes have meaningful interactions with customers, leads, even their competition, all across social media.<\/p>\n<\/p>\n<p><h2>How are words\/sentences represented by NLP?<\/h2>\n<\/p>\n<p><p>One of the advantages of such an approach is that there is no longer a need to be a statistician, and we have no need to accumulate the vast amounts of data required for this kind of analysis. Google NL also has the benefit of supporting all their features in a list of languages, as well as having a bit more granularity in their score (magnitude). The&nbsp;magnitude&nbsp;of a document\u2019s sentiment indicates how much emotional content is present within the document. For one thing, it is a mechanism which helps computers analyze natural human language and produce accurate measurable results. It can be used to extract information from huge amounts of text in order to perform a much quicker analysis, which in turn helps businesses identify and understand new opportunities or business strategies.<\/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=\"Sentiment Analysis NLP\"\/><\/p>\n<p><p>Real-time monitoring through sentiment analysis will improve your understanding of your customers, help you to have more accurate net promoter scores, and ensure that your existing customers become loyal customers. We\u2019ve already touched on how sentiment analysis can improve your customer service on social media, but it can also improve your customer service performance through other channels. Another area where sentiment analysis can ensure that natural language processing delivers the correct analysis is in situations where comparisons are being made.<\/p>\n<\/p>\n<p><h2>Simple, rules-based sentiment analysis systems<\/h2>\n<\/p>\n<p><p>This is exactly the kind of PR catastrophe you can avoid with sentiment analysis. It\u2019s an example of why it\u2019s important to care, not only about if people are talking about your brand, but how they\u2019re talking about it. Still, sentiment analysis is worth the effort, even if your sentiment analysis predictions are wrong from time to time. By using MonkeyLearn\u2019s sentiment analysis model, you can expect correct predictions about 70-80% of the time you submit your texts for classification.<\/p>\n<\/p>\n<div style='border: grey solid 1px;padding: 11px;'>\n<h3>AI Takes the Mic: VoC Trends in Customer Experience &#8211; CMSWire<\/h3>\n<p>AI Takes the Mic: VoC Trends in Customer Experience.<\/p>\n<p>Posted: Mon, 18 Sep 2023 07:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiW2h0dHBzOi8vd3d3LmNtc3dpcmUuY29tL2N1c3RvbWVyLWV4cGVyaWVuY2UvNS1haS10cmVuZHMtaW4tdm9pY2Utb2YtdGhlLWN1c3RvbWVyLXByYWN0aWNlcy_SAQA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>Although it looks like stemming, it is a crucial step as it brings context to words by linking words which have similar meaning. This section encapsulates all the specific details about the methods, functions and libraries used for the different models used in the project. But you, the human reading them, can clearly see that first sentence\u2019s tone is much more negative. One of the most prominent examples of sentiment analysis on the Web today is the Hedonometer, a project of the University of Vermont\u2019s Computational Story Lab.<\/p>\n<\/p>\n<p><h2>Sentiment Analysis Approaches<\/h2>\n<\/p>\n<p><p>The simplest approach for dealing with negation in a sentence, which is used in most state-of-the-art sentiment analysis techniques, is marking as negated all the words from a negation cue to the next punctuation token. The effectiveness of the negation model can be changed because of the specific construction of language in different contexts. In essence, the automatic approach involves supervised machine learning classification algorithms. In fact, sentiment analysis <a href=\"https:\/\/www.metadialog.com\/blog\/sentiment-analysis-and-nlp\/\">is one of<\/a> the more sophisticated examples of how to use classification to maximum effect.<\/p>\n<\/p>\n<div itemScope itemProp=\"mainEntity\" itemType=\"https:\/\/schema.org\/Question\">\n<div itemProp=\"name\">\n<h2>What are NLP techniques for mental health?<\/h2>\n<\/div>\n<div itemScope itemProp=\"acceptedAnswer\" itemType=\"https:\/\/schema.org\/Answer\">\n<div itemProp=\"text\">\n<ul>\n<li>help shift your worldview for the better.<\/li>\n<li>improve your relationships.<\/li>\n<li>make it possible to influence others.<\/li>\n<li>help you achieve goals.<\/li>\n<li>boost self-awareness.<\/li>\n<li>improve physical and mental well-being.<\/li>\n<\/ul>\n<\/div><\/div>\n<\/div>\n<p><p>They also require a large amount of training data to achieve high accuracy, meaning hundreds of thousands to millions of input samples will have to be run through both a forward and backward pass. Because neural nets are created from large numbers of identical neurons, they\u2019re highly parallel by nature. This parallelism maps naturally to GPUs, providing a significant computation speed-up over CPU-only training. GPUs have become the platform of choice for training large, complex Neural Network-based systems for this reason, and the parallel nature of inference operations also lend themselves well for execution on GPUs.<\/p>\n<\/p>\n<p><p>It aims to detect whether sentiment around a brand or topic is positive, negative, or neutral. Simply put, sentiment analysis determines how the author feels about a certain topic. When putting sentiment analysis into practice, various tools and frameworks offer unique features and capabilities. These tools are essential for processing, analyzing, and extracting sentiment from textual data. Brandwatch is a popular sentiment analysis tool that keeps track of various social media aspects to reveal the user sentiment towards a service or brand.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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width=\"302px\" alt=\"Sentiment Analysis NLP\"\/><\/p>\n<p><p>This is a popular way for organizations to determine and categorize opinions about a product, service or idea. Every day, many people tweet their emotions and concerns about Starbucks. The goal is to understand the customers\u2019 pain points and address them in order to keep the brand&#8217;s reputation as well as develop marketing strategies. BERT (Bidirectional Encoder Representations from Transformers) is a deep learning model for natural language processing developed by Google. BERT has achieved trailblazing results in many language processing tasks due to its ability to understand  the context in which words are used.<\/p>\n<\/p>\n<p><h2>Thanks for your feedback<\/h2>\n<\/p>\n<p><p>These techniques, to a certain level of accuracy, can classify a certain part of a message into a different emotion. The simplicity of rules-based sentiment analysis makes it a good option for basic document-level sentiment scoring of predictable text documents, such as limited-scope survey responses. However, a purely rules-based sentiment analysis system has many drawbacks that negate most of these advantages. A rules-based system must contain a rule for every word combination in its sentiment library. And in the end, strict rules can\u2019t hope to keep up with the evolution of natural human language. Instant messaging has butchered the traditional rules of grammar, and no ruleset can account for every abbreviation, acronym, double-meaning and misspelling that may appear in any given text document.<\/p>\n<\/p>\n<ul>\n<li>The created set of text data classified as neutral, negative, or positive is placed in the model for training.<\/li>\n<li>And in fact, it is very difficult for a newbie to know exactly where and how to start.<\/li>\n<li>Currently, transformers and other deep learning models seem to dominate the world of natural language processing.<\/li>\n<li>Due to the casual nature of writing on social media, NLP tools sometimes provide inaccurate sentimental tones.<\/li>\n<li>While the papers focussing on NLP only worked with pre-existing datasets, our model was able to produce accurate responses and predictions based on a user\u2019s natural language text input.<\/li>\n<\/ul>\n<p><p>In China, the incident became the number one trending topic on Weibo, a microblogging site with almost 500 million users. Here\u2019s a quite comprehensive list of emojis and their unicode characters that may come in handy when preprocessing. These are all great jumping off points designed to visually demonstrate the value  of sentiment analysis &#8211; but they only scratch the surface of its true power.<\/p>\n<\/p>\n<p><h2>Challenges of sentiment analysis<\/h2>\n<\/p>\n<p><p>Sentiment analysis is an essential yet often invisible tool for businesses, providing insights into customer opinions and shedding light on consumer perceptions of their products and services. In the training phase, input text goes through the feature extractor, which extracts features to generate feature vectors, labels, and tags (positive, negative, or neutral). Feature extraction methods based on word embeddings or word vectors give words with similar meanings a similar representation. The generated vectors are then inputted to the ML algorithm that produces a classifier model. The fine-grained type allows you to define the polarity of the text or interaction precisely. Polarity implies sentiments ranging from positive, negative, or neutral to very positive or very negative.<\/p>\n<\/p>\n<ul>\n<li>The primary motive in these studies has been to automate the analysis of these sentiments by teaching the computers to do so, using the audio, video and text-based data that has been collected so far.<\/li>\n<li>Sentiment analysis can assist businesses and individuals in gaining deeper insights into public opinion, brand perception, and market trends, making more data-driven business decisions, and improving customer experience.<\/li>\n<li>Such a platform would not only provide people with an efficient platform to conduct precursory psychiatric diagnostics, but it would also serve a big role in raising awareness amongst the people.<\/li>\n<li>This information can be used by businesses to make more informed decisions about product development, marketing, and customer service.<\/li>\n<li>This means we pick a model with the smallest number of coefficients that also gives a good accuracy.<\/li>\n<\/ul>\n<p><p>These return values indicate the number of times each word occurs exactly as given. Remember that punctuation will be counted as individual words, so use str.isalpha() to filter them out later. Since all words in the stopwords list are lowercase, and those in the original list may not be, you use str.lower() to account for any discrepancies.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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width=\"306px\" alt=\"Sentiment Analysis NLP\"\/><\/p>\n<p><p>Read more about <a href=\"https:\/\/www.metadialog.com\/\">Sentiment Analysis NLP<\/a> here.<\/p>\n<\/p>\n<p><a href=\"https:\/\/www.metadialog.com\/blog\/sentiment-analysis-and-nlp\/\"><\/p>\n<figure><img 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' alt='Sentiment Analysis NLP' class='aligncenter' style='display:block;margin-left:auto;margin-right:auto;' width='409px'\/><\/figure>\n<p><\/a><\/p>\n<div itemScope itemProp=\"mainEntity\" itemType=\"https:\/\/schema.org\/Question\">\n<div itemProp=\"name\">\n<h2>Why use LSTM for sentiment analysis?<\/h2>\n<\/div>\n<div itemScope itemProp=\"acceptedAnswer\" itemType=\"https:\/\/schema.org\/Answer\">\n<div itemProp=\"text\">\n<p>And that is exactly why LSTM models are widely used nowadays, as they are particularly designed to have a long-term &#x201c;memory&#x201d; that is capable of understanding the overall context better than other neural networks affected by the long-term dependency problem. The key to understanding how the LSTM work is the cell state.<\/p>\n<\/div><\/div>\n<\/div>\n<div itemScope itemProp=\"mainEntity\" itemType=\"https:\/\/schema.org\/Question\">\n<div itemProp=\"name\">\n<h2>Is NLP an algorithm?<\/h2>\n<\/div>\n<div itemScope itemProp=\"acceptedAnswer\" itemType=\"https:\/\/schema.org\/Answer\">\n<div itemProp=\"text\">\n<p>NLP algorithms are complex mathematical formulas used to train computers to understand and process natural language. They help machines make sense of the data they get from written or spoken words and extract meaning from them.<\/p>\n<\/div><\/div>\n<\/div>\n<div itemScope itemProp=\"mainEntity\" itemType=\"https:\/\/schema.org\/Question\">\n<div itemProp=\"name\">\n<h2>Is sentiment analysis ml?<\/h2>\n<\/div>\n<div itemScope itemProp=\"acceptedAnswer\" itemType=\"https:\/\/schema.org\/Answer\">\n<div itemProp=\"text\">\n<p>Sentiment analysis uses machine learning models to perform text analysis of human language. The metrics used are designed to detect whether the overall sentiment of a piece of text is positive, negative or neutral.<\/p>\n<\/div><\/div>\n<\/div>\n<div itemScope itemProp=\"mainEntity\" itemType=\"https:\/\/schema.org\/Question\">\n<div itemProp=\"name\">\n<h2>Can gpt3 do sentiment analysis?<\/h2>\n<\/div>\n<div itemScope itemProp=\"acceptedAnswer\" itemType=\"https:\/\/schema.org\/Answer\">\n<div itemProp=\"text\">\n<p>Sentiment Analysis Basics<\/p>\n<p> &#8211; Monitoring social media sentiment around a brand or product. &#8211; Analyzing user feedback. &#8211; Gauging public opinion on specific topics. OpenAI&apos;s GPT-3 can be a valuable asset for performing sentiment analysis due to its natural language understanding capabilities.<\/br><\/br><\/p>\n<\/div><\/div>\n<\/div>\n","protected":false},"excerpt":{"rendered":"<p>nlp js docs v3 sentiment-analysis.md at master axa-group nlp.js I simply clicked on the&nbsp;sentiment filter, and the data was presented to me in a user-friendly Brand24 dashboard. Negative sentiment may be expressed using words such as \u201cbad\u201d, \u201cterrible\u201d, \u201chate\u201d, and \u201cdisgusting\u201d. Positive sentiment may be expressed using words such as \u201cgood\u201d, \u201cgreat\u201d, \u201cwonderful\u201d, and \u201cfantastic\u201d. After cleaning and organizing the text, use effective techniques for sentiment analysis. The tool offers a 14-day free trial and is supported by social media&#8230;<\/p>\n<p class=\"read-more\"><a class=\"btn btn-default\" href=\"http:\/\/reformasherrero.com\/?p=1167\"> Leer m\u00e1s<span class=\"screen-reader-text\">  Leer m\u00e1s<\/span><\/a><\/p>\n","protected":false},"author":2,"featured_media":0,"comment_status":"closed","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[25],"tags":[],"_links":{"self":[{"href":"http:\/\/reformasherrero.com\/index.php?rest_route=\/wp\/v2\/posts\/1167"}],"collection":[{"href":"http:\/\/reformasherrero.com\/index.php?rest_route=\/wp\/v2\/posts"}],"about":[{"href":"http:\/\/reformasherrero.com\/index.php?rest_route=\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"http:\/\/reformasherrero.com\/index.php?rest_route=\/wp\/v2\/users\/2"}],"replies":[{"embeddable":true,"href":"http:\/\/reformasherrero.com\/index.php?rest_route=%2Fwp%2Fv2%2Fcomments&post=1167"}],"version-history":[{"count":1,"href":"http:\/\/reformasherrero.com\/index.php?rest_route=\/wp\/v2\/posts\/1167\/revisions"}],"predecessor-version":[{"id":1168,"href":"http:\/\/reformasherrero.com\/index.php?rest_route=\/wp\/v2\/posts\/1167\/revisions\/1168"}],"wp:attachment":[{"href":"http:\/\/reformasherrero.com\/index.php?rest_route=%2Fwp%2Fv2%2Fmedia&parent=1167"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"http:\/\/reformasherrero.com\/index.php?rest_route=%2Fwp%2Fv2%2Fcategories&post=1167"},{"taxonomy":"post_tag","embeddable":true,"href":"http:\/\/reformasherrero.com\/index.php?rest_route=%2Fwp%2Fv2%2Ftags&post=1167"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}