Toothpaste Brand Prediction Based on Analysis of Teeth Condition and Price Preferences Using the Random Forest Algorithm

Penulis

  • Afiyati Afiyati Universitas Mercu Buana
  • Rahma Farah Ningrum Institut Teknologi PLN
  • Faaza Naima Universitas Mercu Buana

DOI:

https://doi.org/10.22441/collabits.v1i1.25560

Abstrak

This study aimed to predict toothpaste brands based on an analysis of dental conditions and price preferences using the Random Forest algorithm and the CRISP-DM approach. The research results indicated that the variables of tooth color range and frequency of toothache had the highest influence, suggesting that consumers were more likely to choose a brand based on tooth color and sensitivity. Evaluation using the Confusion Matrix and Classification Report models demonstrated good performance with an accuracy of 91.3%. Based on the result, the model could serve as a robust foundation for developing a GUI-based Toothpaste Brand Prediction Application using the tkinter library, assisting users in making more informed decisions.

Unduhan

Data unduhan belum tersedia.

Referensi

Perbandingan Efektivitas Pasta Gigi Herbal Dengan Pasta Gigi Non Herbal Terhadap Penurunan Indeks Plak Pada Siswa Sdn Angsau 4 Pelaihari. Widodo, Rahmah R, Rachmadi P. 2, Banjarmasin : Universitas Lambung Mangkurat, 2014, Vols. Dentino Jurnal Kedokteran Gigi, 2.

PENGGUNAAN Na - CMC ( GELLING AGENT) DALAM SEDIAAN PASTA GIGI EKSTRAK KAYU SIWAK ( Salvadora persica ) DAN EKSTRAK DAUN SIRIH MERAH ( Piper crocatum ). Sofyan, Van Fatkhan. Purwokerto : Universitas Muhammadiyah Purwokerto, 2017.

Annur, Cindy Mutia. Produk Konsumen. Katadata. [Online] Katadata Media Network, Maret 24, 2023. [Cited: 12 01, 2023.] https://databoks.katadata.co.id/datapublish/2023/03/24/pepsodent-merek-pasta-gigi-yang-paling-sering-digunakan-konsumen-indonesia.

PENERAPAN DATA MINING UNTUK PREDIKSI MEREK PAKAIAN YANG PALING DIMINATI DENGAN METODE K-NEAREST NEIGHBOR (STUDI KASUS : PT. MATAHARI DEPARTEMENT STORE BINJAI). Andrean Pratama, Budi Serasi Ginting, Nurhayati. 2, Jakarta : Panca Budi, 2021, Jurnal Panca Budi, Vol. 14, pp. 54-64. ISSN.

PENERAPAN METODE K-NEAREST NEIGHBOR UNTUK PREDIKSI PENJUALAN SEPEDA MOTOR TERLARIS. Rismala, Irfan Ali, Ade Rizki Rinaldi. 1, Cirebon : Institut Teknologi Malang, 2023, Vols. 7, pp. 585-590. ISSN.

ANALISIS DAN IMPLEMENTASI FRAMEWORK CRISP-DM UNTUK MENGETAHUI PERILAKU DATA TRANSAKSI PELANGGAN. Muhammad Zain Imtiyaz, Muhammad Nasrun S.Si, M.T., Umar Ali Ahmad S.T, M.T. 1, Jakarta : Telkom University, 2015, Vol. 2. ISSN: 2355-9365 .

“Prediksi Kinerja Penjualan Karya Musik Menggunakan Framework CRISP-DM (Studi Kasus: X Music Indonesia). Purwarianti, A. A. Prajitno dan A. Bandung : Institut Teknologi Bandung, 2011, Vols. Jurnal Institut Teknologi Bandung bidang Teknik Elektro dan Informatika,.

Implementasi Algoritma Random Forest Untuk Menentukan Penerima Bantuan Raskin. Ilham Kurniawan, Duwi Cahya Puri Buani, Abdussomad, Widya Apriliah, Rizal Amegia Saputra. 2, Jakarta Pusat : Jurnal Teknologi Informasi dan Ilmu Komputer, 2023, Vol. 10. ISSN.

Penerapan Klasifikasi Random Forest Terhadap Data Gangguan Spektrum Autisme (ASD) Pada Anak – Anak Menggunakan Seleksi Fitur Principal Component Analysis. Luthfiyah Amatullah, Yuni Widiastiwi, Nurul Chamidah. Jakarta : Seminar Nasional Mahasiswa Ilmu Komputer dan Aplikasinya (SENAMIKA), 2022. ISSN.

Diterbitkan

2024-02-03

Cara Mengutip

[1]
A. Afiyati, R. F. Ningrum, dan F. Naima, “Toothpaste Brand Prediction Based on Analysis of Teeth Condition and Price Preferences Using the Random Forest Algorithm”, Collabits, vol. 1, no. 1, hlm. 22–27, Feb 2024.

Terbitan

Bagian

Articles

Artikel paling banyak dibaca berdasarkan penulis yang sama