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Image of DISERTASI KLASIFIKASI PATEN DENGAN PEMBOBOTAN RINGKASAN MENGGUNAKAN PENDEKATAN MACHINE LEARNING

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DISERTASI KLASIFIKASI PATEN DENGAN PEMBOBOTAN RINGKASAN MENGGUNAKAN PENDEKATAN MACHINE LEARNING

Widodo, Slamet - Personal Name;

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Classification of Patents By Weighting Summary of Use Machine Learning Approach Patents are the exclusive rights of inventors to inventions in the field of technology when they create their own inventions or authorize others to implement their inventions. An invention is an inventor's idea that leads to activities aimed at solving specific problems in the field of technology, either in the form of a product or how to treat or refine it for product development. The issue of the complexity of patent proposals for inventors becomes a very important discussion through the process steps that define the patent engineering domain, the foundation of the invention. invention, patent abstract, complete description of the invention, claim, reference search, and abstract. The problem of redundancy of patent abstracts is to avoid duplication or repeated storage of the same information on the IPC (International Patent Classification) label or patent group in several patent documents. over the Internet, thus storing the same information in multiple layers or tags. The aim of this study is to generate a dataset of Indonesian patents for a machine learning model to predict classes or labels from the input data based on the information provided by the patent data. IPC (International Patent Classification) of the previous training course. The primary objective is to identify patterns or relationships in the data that can be used to classify proposed new patent data into one of several predefined IPC-related patent data types. . The model's prediction results can be one, two, or three, depending on which category is most similar to the generated model. Its contribution is to create a predictive model for new patent documents to obtain meaningful patent citations based on patent document types. Classification can help decision-making by providing predictions of the most likely type or class of inventions based on new input data documents. the study is to obtain documents that can be used as a reference to measure and evaluate the taxonomy pattern applied in Indonesian patent documents; can save time and effort in tasks such as sorting patent similarity data, checking patent documents . Key word: Patent, Patent Classification, IPC (International Patent Classification)


Availability
Inventory Code Barcode Call Number Location Status
2507003254T174255T1742552025Central Library (Reference)Available but not for loan - Not for Loan
Detail Information
Series Title
-
Call Number
T1742552025
Publisher
: Prodi Doktor Ilmu Teknik, Fakultas Teknik Universitas Sriwijaya., 2025
Collation
xiv, 132 hlm.:ilus., tab.; 29 cm
Language
Indonesia
ISBN/ISSN
-
Classification
620.07
Content Type
-
Media Type
-
Carrier Type
-
Edition
-
Subject(s)
Ilmu Teknik
Specific Detail Info
-
Statement of Responsibility
EM
Other version/related

No other version available

File Attachment
  • DISERTASI KLASIFIKASI PATEN DENGAN PEMBOBOTAN RINGKASAN MENGGUNAKAN PENDEKATAN MACHINE LEARNING
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