Mashinali o‘qitishga kirish Nosirov Xabibullo xikmatullo o‘gli Falsafa doktori (PhD), tret kafedrasi mudiri



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Mashinali o‘qitishga kirish Nosirov Xabibullo xikmatullo o‘gli F-fayllar.org

Unsupervised learning 


  • The only requirement to be called an unsupervised learning strategy is to learn a new feature space that captures the characteristics of the original space by maximizing some objective function or minimising some loss function.

  • Therefore, generating a covariance matrix is not unsupervised learning, but taking the eigenvectors of the covariance matrix is because the linear algebra eigendecomposition operation maximizes the variance; this is known as PCA.

Unsupervised learning 


  • Some of the most common algorithms used in unsupervised learning include:

  • (1) Clustering,

  • (2) Anomaly detection,

  • (3) Neural Networks, and

  • (4) Approaches for learning latent variable models.

Each approach uses several methods as follows:


  • Clustering

    • Hierarchical clustering,

    • K-means

    • Mixture models

    • Dbscan

    • OPTICS algorithm

  • Anomaly detection

    • Local outlier factor

    • Isolation forest

  • Neural networks

    • Autoencoders

    • Deep belief nets

    • Hebbian learning

    • Generative adversarial networks

    • Self-organizing map

  • Approaches for learning latent variable models such as

    • Expectation–maximization algorithm (EM)

    • Method of moments

    • Blind signal separation techniques

      • Principal component analysis

      • Independent component analysis

      • Non-negative matrix factorization

      • Singular value decomposition

Unsupervised learning 


  • The goal of clustering is to

    • group data points that are close (or similar) to each other

    • identify such groupings (or clusters) in an unsupervised manner

Unsupervised learning 


  • A cluster is represented by a single point, known as centroid (or cluster center) of the cluster

  • Centroid is computed as the mean of all data points in a cluster

  • Cluster boundary is decided by the farthest data point in the cluster

Application of Clustering


  • Example 1: groups people of similar sizes together to make “small”, “medium” and “large” T-Shirts.

    • Tailor-made for each person: too expensive

    • One-size-fits-all: does not fit all.

  • Example 2: In marketing, segment customers according to their similarities

    • To do targeted marketing.

  • Example 3: Given a collection of text documents, we want to organize them according to their content similarities,

    • To produce a topic hierarchy

Thank you! Contacts Khabibullo Nosirov, Phd Project Manager, Head Of The Department Tashkent University Of Information Technologies named after Muhammad Al-Khwarizmi Radio And Mobile Communications Faculty 100084, Amir Temur 108, Tashkent, Uzbekistan n.khabibullo1990@gmail.com +998 99 811 57 62 (WhatsApp) +998 90 911 57 62 (Telegram) www.tuit.uz www.spacecom.uz www.intras.uz



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