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Representation Learning = Propositio...
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Robnik-Šikonja, Marko.
Representation Learning = Propositionalization and Embeddings /
Record Type:
Language materials, printed : Monograph/item
Title/Author:
Representation Learning/ by Nada Lavrač, Vid Podpečan, Marko Robnik-Šikonja.
Reminder of title:
Propositionalization and Embeddings /
Author:
Lavrač, Nada.
other author:
Podpečan, Vid.
Description:
XVI, 163 p. 46 illus., 38 illus. in color.online resource. :
Contained By:
Springer Nature eBook
Subject:
Data mining. -
Online resource:
https://doi.org/10.1007/978-3-030-68817-2
ISBN:
9783030688172
Representation Learning = Propositionalization and Embeddings /
Lavrač, Nada.
Representation Learning
Propositionalization and Embeddings /[electronic resource] :by Nada Lavrač, Vid Podpečan, Marko Robnik-Šikonja. - 1st ed. 2021. - XVI, 163 p. 46 illus., 38 illus. in color.online resource.
Introduction to Representation Learning -- Machine Learning Background -- Text Embeddings -- Propositionalization of Relational Data -- Graph and Heterogeneous Network Transformations -- Unified Representation Learning Approaches -- Many Faces of Representation Learning.
This monograph addresses advances in representation learning, a cutting-edge research area of machine learning. Representation learning refers to modern data transformation techniques that convert data of different modalities and complexity, including texts, graphs, and relations, into compact tabular representations, which effectively capture their semantic properties and relations. The monograph focuses on (i) propositionalization approaches, established in relational learning and inductive logic programming, and (ii) embedding approaches, which have gained popularity with recent advances in deep learning. The authors establish a unifying perspective on representation learning techniques developed in these various areas of modern data science, enabling the reader to understand the common underlying principles and to gain insight using selected examples and sample Python code. The monograph should be of interest to a wide audience, ranging from data scientists, machine learning researchers and students to developers, software engineers and industrial researchers interested in hands-on AI solutions.
ISBN: 9783030688172
Standard No.: 10.1007/978-3-030-68817-2doiSubjects--Topical Terms:
528622
Data mining.
LC Class. No.: QA76.9.D343
Dewey Class. No.: 006.312
Representation Learning = Propositionalization and Embeddings /
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Introduction to Representation Learning -- Machine Learning Background -- Text Embeddings -- Propositionalization of Relational Data -- Graph and Heterogeneous Network Transformations -- Unified Representation Learning Approaches -- Many Faces of Representation Learning.
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