Selected article for: "hinge loss and loss function"

Author: Lis-Gutiérrez, Jenny-Paola; Lis-Gutiérrez, Melissa; Gallego-Torres, Adriana Patricia; Ballesteros Ballesteros, Vladimir Alfonso; Romero Ospina, Manuel Francisco
Title: Use of the Industrial Property System in Colombia (2018): A Supervised Learning Application
  • Cord-id: 01juvcaw
  • Document date: 2020_6_22
  • ID: 01juvcaw
    Snippet: The purpose of this paper is to establish ways to predict the spatial distribution of the use of the intellectual property system from information on industrial property applications and grants (distinctive signs and new creations) and copyright registrations in 2018. This will be done using supervised learning algorithms applied to information on industrial property applications and grants (trademarks and new creations) and copyright registrations in 2018. Within the findings, 4 algorithms were
    Document: The purpose of this paper is to establish ways to predict the spatial distribution of the use of the intellectual property system from information on industrial property applications and grants (distinctive signs and new creations) and copyright registrations in 2018. This will be done using supervised learning algorithms applied to information on industrial property applications and grants (trademarks and new creations) and copyright registrations in 2018. Within the findings, 4 algorithms were identified with a level of explanation higher than 80%: (i) Linear Regression, with an elastic network regularization; (ii) Stochastic Gradient Descent, with Hinge loss function, Ringe regularization (L2) and a constant learning rate; (iii) Neural Networks, with 1,000 layers, with Adam’s solution algorithm and 2,000 iterations; (iv) Random Forest, with 10 trees.

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