{"id":478914,"date":"2023-08-09T09:40:12","date_gmt":"2023-08-09T09:40:12","guid":{"rendered":""},"modified":"2023-09-05T11:17:47","modified_gmt":"2023-09-05T11:17:47","slug":"self-supervised-learning","status":"publish","type":"wiki","link":"https:\/\/oneproxy.pro\/tr\/wiki\/self-supervised-learning\/","title":{"rendered":"Kendi kendini denetleyen \u00f6\u011frenme"},"content":{"rendered":"<p>Kendi kendini denetleyen \u00f6\u011frenme, verilerin bir k\u0131sm\u0131n\u0131 ayn\u0131 verinin di\u011fer k\u0131s\u0131mlar\u0131ndan tahmin etmeyi \u00f6\u011frenen bir t\u00fcr makine \u00f6\u011frenimi paradigmas\u0131d\u0131r. Modellerin e\u011fitilmesine etiketli yan\u0131tlar gerektirmeyen denetimsiz bir \u00f6\u011frenme alt k\u00fcmesidir. Modeller, verinin kendisini denetim olarak etkili bir \u015fekilde kullanarak, verinin bir k\u0131sm\u0131n\u0131 di\u011fer k\u0131s\u0131mlara g\u00f6re tahmin edecek \u015fekilde e\u011fitilir.<\/p>\n<h2>Kendi Kendini Denetleyen \u00d6\u011frenmenin K\u00f6keninin Tarihi ve \u0130lk S\u00f6z\u00fc<\/h2>\n<p>Kendi kendini denetleyen \u00f6\u011frenme kavram\u0131n\u0131n k\u00f6keni, 20. y\u00fczy\u0131l\u0131n sonlar\u0131nda denetimsiz \u00f6\u011frenme tekniklerinin ortaya \u00e7\u0131kmas\u0131na kadar uzanabilir. Pahal\u0131 ve zaman al\u0131c\u0131 manuel etiketleme s\u00fcrecini ortadan kald\u0131rma ihtiyac\u0131ndan do\u011fmu\u015ftur. 2000&#039;li y\u0131llar\u0131n ba\u015flar\u0131nda, ara\u015ft\u0131rmac\u0131lar\u0131n etiketlenmemi\u015f verileri verimli bir \u015fekilde kullanabilecek \u00e7e\u015fitli teknikleri ke\u015ffetmesiyle, kendi kendini denetleyen y\u00f6ntemlere olan ilginin artt\u0131\u011f\u0131na tan\u0131k olduk.<\/p>\n<h2>Kendi Kendine Denetimli \u00d6\u011frenme Hakk\u0131nda Detayl\u0131 Bilgi: Konuyu Geni\u015fletmek Kendi Kendine Denetimli \u00d6\u011frenme<\/h2>\n<p>Kendi kendine denetimli \u00f6\u011frenme, verinin kendisinin \u00f6\u011frenme i\u00e7in denetim sa\u011flamaya yetecek kadar bilgi i\u00e7erdi\u011fi fikrine dayan\u0131r. Modeller, verilerden bir \u00f6\u011frenme g\u00f6revi olu\u015fturarak temsilleri, kal\u0131plar\u0131 ve yap\u0131lar\u0131 \u00f6\u011frenebilir. Bilgisayarl\u0131 g\u00f6rme, do\u011fal dil i\u015fleme ve daha fazlas\u0131 gibi alanlarda olduk\u00e7a pop\u00fcler hale geldi.<\/p>\n<h3>Kendi Kendine Denetimli \u00d6\u011frenme Y\u00f6ntemleri<\/h3>\n<ul>\n<li><strong>Kar\u015f\u0131la\u015ft\u0131rmal\u0131 \u00d6\u011frenme<\/strong>: Benzer ve farkl\u0131 \u00e7iftleri ay\u0131rt etmeyi \u00f6\u011frenir.<\/li>\n<li><strong>Otoregresif Modeller<\/strong>: Verinin sonraki b\u00f6l\u00fcmlerini \u00f6nceki b\u00f6l\u00fcmlere g\u00f6re tahmin eder.<\/li>\n<li><strong>\u00dcretken Modeller<\/strong>: Belirli bir e\u011fitim \u00f6rnekleri k\u00fcmesine benzeyen yeni veri \u00f6rnekleri olu\u015fturma.<\/li>\n<\/ul>\n<h2>Kendi Kendine Denetimli \u00d6\u011frenmenin \u0130\u00e7 Yap\u0131s\u0131: Kendi Kendini Denetimli \u00d6\u011frenme Nas\u0131l \u00c7al\u0131\u015f\u0131r?<\/h2>\n<p>Kendi kendine denetimli \u00f6\u011frenme \u00fc\u00e7 ana bile\u015fenden olu\u015fur:<\/p>\n<ol>\n<li><strong>Veri \u00d6n \u0130\u015fleme<\/strong>: Verileri tahmin i\u00e7in \u00e7e\u015fitli par\u00e7alara ay\u0131rmak.<\/li>\n<li><strong>Model E\u011fitimi<\/strong>: Bir par\u00e7ay\u0131 di\u011ferlerinden tahmin etmek i\u00e7in modeli e\u011fitme.<\/li>\n<li><strong>\u0130nce ayar<\/strong>: \u00d6\u011frenilen temsillerin a\u015fa\u011f\u0131 ak\u0131\u015f g\u00f6revleri i\u00e7in kullan\u0131lmas\u0131.<\/li>\n<\/ol>\n<h2>Kendi Kendini Denetleyen \u00d6\u011frenmenin Temel \u00d6zelliklerinin Analizi<\/h2>\n<ul>\n<li><strong>Veri Verimlili\u011fi<\/strong>: Etiketlenmemi\u015f verileri kullanarak maliyetleri azalt\u0131r.<\/li>\n<li><strong>\u00c7ok y\u00f6nl\u00fcl\u00fck<\/strong>: \u00c7e\u015fitli alanlara uygulanabilir.<\/li>\n<li><strong>\u00d6\u011frenimi Aktar<\/strong>: G\u00f6revler aras\u0131nda genellenen \u00f6\u011frenme temsillerini te\u015fvik eder.<\/li>\n<li><strong>Sa\u011flaml\u0131k<\/strong>: \u00c7o\u011fu zaman g\u00fcr\u00fclt\u00fcye dayan\u0131kl\u0131 modeller \u00fcretir.<\/li>\n<\/ul>\n<h2>Kendi Kendine Denetimli \u00d6\u011frenme T\u00fcrleri: Yazmak i\u00e7in Tablolar\u0131 ve Listeleri Kullan\u0131n<\/h2>\n<table>\n<thead>\n<tr>\n<th>Tip<\/th>\n<th>Tan\u0131m<\/th>\n<\/tr>\n<\/thead>\n<tbody>\n<tr>\n<td>kar\u015f\u0131la\u015ft\u0131rmal\u0131<\/td>\n<td>Benzer ve farkl\u0131 \u00f6rnekler aras\u0131nda ayr\u0131m yapar.<\/td>\n<\/tr>\n<tr>\n<td>Otoregresif<\/td>\n<td>Zaman serisi verilerinde s\u0131ral\u0131 tahmin.<\/td>\n<\/tr>\n<tr>\n<td>\u00fcretken<\/td>\n<td>E\u011fitim verilerine benzeyen yeni \u00f6rnekler olu\u015fturur.<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h2>Kendi Kendine Denetimli \u00d6\u011frenmeyi Kullanma Yollar\u0131, Kullan\u0131ma \u0130li\u015fkin Sorunlar ve \u00c7\u00f6z\u00fcmleri<\/h2>\n<h3>Kullan\u0131m<\/h3>\n<ul>\n<li><strong>\u00d6zellik \u00d6\u011frenme<\/strong>: Anlaml\u0131 \u00f6zelliklerin \u00e7\u0131kar\u0131lmas\u0131.<\/li>\n<li><strong>\u00d6n E\u011fitim Modelleri<\/strong>: A\u015fa\u011f\u0131 y\u00f6nde denetlenen g\u00f6revler i\u00e7in.<\/li>\n<li><strong>Veri Artt\u0131rma<\/strong>: Veri k\u00fcmelerinin geli\u015ftirilmesi.<\/li>\n<\/ul>\n<h3>Sorunlar ve \u00c7\u00f6z\u00fcmler<\/h3>\n<ul>\n<li><strong>A\u015f\u0131r\u0131 uyum g\u00f6sterme<\/strong>: D\u00fczenlile\u015ftirme teknikleri a\u015f\u0131r\u0131 uyumu azaltabilir.<\/li>\n<li><strong>Hesaplamal\u0131 Maliyetler<\/strong>: Verimli modeller ve donan\u0131m h\u0131zland\u0131rma hesaplama sorunlar\u0131n\u0131 azaltabilir.<\/li>\n<\/ul>\n<h2>Ana \u00d6zellikler ve Benzer Terimlerle Di\u011fer Kar\u015f\u0131la\u015ft\u0131rmalar<\/h2>\n<table>\n<thead>\n<tr>\n<th>\u00d6zellikler<\/th>\n<th>Kendi Kendini Denetleyen \u00d6\u011frenme<\/th>\n<th>Denetimli \u00d6\u011frenme<\/th>\n<th>Denetimsiz \u00d6\u011frenme<\/th>\n<\/tr>\n<\/thead>\n<tbody>\n<tr>\n<td>Etiketleme Gerekli<\/td>\n<td>HAYIR<\/td>\n<td>Evet<\/td>\n<td>HAYIR<\/td>\n<\/tr>\n<tr>\n<td>Veri Verimlili\u011fi<\/td>\n<td>Y\u00fcksek<\/td>\n<td>D\u00fc\u015f\u00fck<\/td>\n<td>Orta<\/td>\n<\/tr>\n<tr>\n<td>\u00d6\u011frenimi Aktar<\/td>\n<td>S\u0131kl\u0131kla<\/td>\n<td>Bazen<\/td>\n<td>Nadiren<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h2>Kendi Kendini Y\u00f6neten \u00d6\u011frenmeyle \u0130lgili Gelece\u011fin Perspektifleri ve Teknolojileri<\/h2>\n<p>Kendi kendini denetleyen \u00f6\u011frenmede gelecekteki geli\u015fmeler aras\u0131nda daha verimli algoritmalar, di\u011fer \u00f6\u011frenme paradigmalar\u0131yla entegrasyon, geli\u015fmi\u015f transfer \u00f6\u011frenme teknikleri ve robotik ve t\u0131p gibi daha geni\u015f alanlara uygulama yer al\u0131yor.<\/p>\n<h2>Proxy Sunucular\u0131 Nas\u0131l Kullan\u0131labilir veya Kendi Kendini Denetleyen \u00d6\u011frenmeyle Nas\u0131l \u0130li\u015fkilendirilebilir?<\/h2>\n<p>OneProxy taraf\u0131ndan sa\u011flananlar gibi proxy sunucular\u0131, kendi kendini denetleyen \u00f6\u011frenmeyi \u00e7e\u015fitli \u015fekillerde kolayla\u015ft\u0131rabilir. Kendi kendini denetleyen \u00f6\u011frenme i\u00e7in gerekli olan \u00e7ok miktarda etiketlenmemi\u015f verinin toplanmas\u0131na olanak tan\u0131yarak, \u00e7e\u015fitli \u00e7evrimi\u00e7i kaynaklardan g\u00fcvenli ve etkili veri kaz\u0131ma olana\u011f\u0131 sa\u011flarlar. Ayr\u0131ca, modellerin farkl\u0131 b\u00f6lgelere da\u011f\u0131t\u0131lm\u0131\u015f e\u011fitimine yard\u0131mc\u0131 olabilirler.<\/p>\n<h2>\u0130lgili Ba\u011flant\u0131lar<\/h2>\n<ul>\n<li><a href=\"https:\/\/deepmind.com\/blog\" target=\"_new\" rel=\"noopener nofollow\">DeepMind&#039;\u0131n Kendi Kendine Denetimli \u00d6\u011frenme Blogu<\/a><\/li>\n<li><a href=\"https:\/\/openai.com\/research\" target=\"_new\" rel=\"noopener nofollow\">OpenAI&#039;nin Kendi Kendini Denetleyen \u00d6\u011frenme Ara\u015ft\u0131rmas\u0131<\/a><\/li>\n<li><a href=\"https:\/\/yann.lecun.com\" target=\"_new\" rel=\"noopener nofollow\">Yann LeCun&#039;un Kendi Kendine Denetimli \u00d6\u011frenme \u00fczerine \u00e7al\u0131\u015fmas\u0131<\/a><\/li>\n<\/ul>\n<p>Bu makale sponsorlu\u011fundad\u0131r <a href=\"https:\/\/oneproxy.pro\/tr\/\" target=\"_new\" rel=\"noopener\">OneProxy<\/a>Veriye dayal\u0131 ihtiya\u00e7lar\u0131n\u0131z i\u00e7in birinci s\u0131n\u0131f proxy sunucular\u0131 sa\u011fl\u0131yoruz.<\/p>","protected":false},"featured_media":470447,"menu_order":0,"template":"","meta":{"_acf_changed":false,"content-type":"","inline_featured_image":false,"footnotes":""},"class_list":["post-478914","wiki","type-wiki","status-publish","has-post-thumbnail","hentry"],"acf":{"faq_title":"Frequently Asked Questions about <mark>Self-supervised Learning<\/mark>","faq_items":[{"question":"What is Self-supervised Learning?","answer":"<p>Self-supervised learning is a machine learning approach that uses the data itself as supervision. It's a subset of unsupervised learning where models are trained to predict part of the data from other parts of the same data, without needing manually labeled responses.<\/p>"},{"question":"What is the History of Self-supervised Learning?","answer":"<p>Self-supervised learning originated from the need to bypass the expensive process of manual labeling. It traces back to the emergence of unsupervised learning techniques in the late 20th century, with significant growth in interest and application in the early 2000s.<\/p>"},{"question":"How Does Self-supervised Learning Work?","answer":"<p>Self-supervised learning works by dividing data into parts and training a model to predict one part from the others. It includes data preprocessing, model training, and fine-tuning the learned representations for specific tasks.<\/p>"},{"question":"What Are the Key Features of Self-supervised Learning?","answer":"<p>The key features include data efficiency by utilizing unlabeled data, versatility across various domains, enabling transfer learning, and robustness to noise.<\/p>"},{"question":"What Types of Self-supervised Learning Exist?","answer":"<p>There are various types, including Contrastive learning, which differentiates similar and dissimilar instances; Autoregressive models, which make sequential predictions; and Generative models that create new instances resembling the training data.<\/p>"},{"question":"How Can Self-supervised Learning Be Used, and What Are the Related Problems?","answer":"<p>It can be used for feature learning, pretraining models, and data augmentation. Problems may include overfitting and computational costs, with solutions such as regularization techniques and hardware acceleration.<\/p>"},{"question":"How Does Self-supervised Learning Compare with Other Learning Methods?","answer":"<p>Self-supervised learning does not require labeling, offers high data efficiency, and often supports transfer learning, compared to supervised learning, which requires labeling, and unsupervised learning, which has medium data efficiency.<\/p>"},{"question":"What Are the Future Perspectives of Self-supervised Learning?","answer":"<p>The future may see more efficient algorithms, integration with other learning paradigms, improved transfer learning techniques, and broader applications, including robotics and medicine.<\/p>"},{"question":"How Can Proxy Servers Like OneProxy Be Associated with Self-supervised Learning?","answer":"<p>Proxy servers like OneProxy can facilitate self-supervised learning by enabling secure and efficient data scraping, allowing the collection of vast amounts of unlabeled data, and aiding in distributed training of models across different regions.<\/p>"},{"question":"Where Can I Find More Information About Self-supervised Learning?","answer":"<p>You can find more information through various research blogs and institutions such as <a href=\"https:\/\/deepmind.com\/blog\" target=\"_new\">DeepMind's Blog on Self-supervised Learning<\/a>, <a href=\"https:\/\/openai.com\/research\" target=\"_new\">OpenAI's Research on Self-supervised Learning<\/a>, and <a href=\"https:\/\/yann.lecun.com\" target=\"_new\">Yann LeCun's work on Self-supervised Learning<\/a>.<\/p>"}]},"_links":{"self":[{"href":"https:\/\/oneproxy.pro\/tr\/wp-json\/wp\/v2\/wiki\/478914","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/oneproxy.pro\/tr\/wp-json\/wp\/v2\/wiki"}],"about":[{"href":"https:\/\/oneproxy.pro\/tr\/wp-json\/wp\/v2\/types\/wiki"}],"version-history":[{"count":0,"href":"https:\/\/oneproxy.pro\/tr\/wp-json\/wp\/v2\/wiki\/478914\/revisions"}],"wp:featuredmedia":[{"embeddable":true,"href":"https:\/\/oneproxy.pro\/tr\/wp-json\/wp\/v2\/media\/470447"}],"wp:attachment":[{"href":"https:\/\/oneproxy.pro\/tr\/wp-json\/wp\/v2\/media?parent=478914"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}