A. Document Frequiency (DF)Document frequency is the number of documen translation - A. Document Frequiency (DF)Document frequency is the number of documen Indonesian how to say

A. Document Frequiency (DF)Document

A. Document Frequiency (DF)
Document frequency is the number of documents in which a
term occurs in a dataset. It is the simplest criterion for term
selection and easily scales to a large dataset with linear
computation complexity. A basic assumption of this method is
that terms appear in minority documents are not important or
will not influence the clustering efficiency. It is a simple but
effective feature selection method for text categorization [9].
B. Term Contributtion (TC)
Because the simple method like DF assumes that each term
is of same importance in different documents, it is easily
biased by those common terms which have high document
frequency but uniform distribution over different classes. TC
is proposed to deal with this problem [10].
We will introduce TF.IDF (Term Frequency Inverse
Document Frequency) first [11]. TF.IDF synthetically
considers the frequency of a term in a document and the
document frequency of the term. It believes that if a term
appears in too many documents, it's too common and not
important for clustering. So Inverse Document Frequency is
considered. That is, if the frequency of a term in a document is
high and it does not appear in many documents, the term is
important. A common form of TF.IDF is
0/5000
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A. dokumen Frequiency (DF)Dokumen frekuensi adalah jumlah dokumen yangistilah terjadi dalam dataset. Ini adalah kriteria yang paling sederhana untuk jangkaseleksi dan mudah timbangan untuk dataset besar dengan linearkompleksitas komputasi. Asumsi dasar dari metode ini adalahbahwa istilah muncul dalam minoritas dokumen tidak penting atautidak akan mempengaruhi efisiensi clustering. Ini adalah sederhana namunFitur efektif metode seleksi untuk teks kategorisasi [9].B. jangka Contributtion (TC)Karena metode sederhana seperti DF mengasumsikan bahwa setiap istilahadalah sama pentingnya dalam dokumen yang berbeda, itu adalah mudahbias oleh istilah tersebut umum yang memiliki tinggi dokumenfrekuensi tapi distribusi seragam atas kelas yang berbeda. TCdiusulkan untuk menangani masalah ini [10].Kami akan memperkenalkan TF. IDF (istilah frekuensi inversDokumen frekuensi) pertama [11]. TF. IDF sintetikmempertimbangkan frekuensi istilah dalam dokumen dandokumen frekuensi istilah. Percaya bahwa jika istilahmuncul dalam dokumen-dokumen yang terlalu banyak, terlalu umum dan tidakpenting untuk pengelompokan. Jadi invers dokumen frekuensidianggap. Yaitu jika frekuensi istilah dalam dokumentinggi dan tidak muncul dalam banyak dokumen, istilahpenting. Bentuk umum TF. IDF adalah
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