OPTIMISASI REGRESI BINOMIAL NEGATIF LASSO BERBASIS AIC PADA FITUR TEKSTUAL PROMOSI DI PLATFORM X (STUDI KASUS: @SHOPEEID)

Dea Iswari, NIM.: 22106010078 (2026) OPTIMISASI REGRESI BINOMIAL NEGATIF LASSO BERBASIS AIC PADA FITUR TEKSTUAL PROMOSI DI PLATFORM X (STUDI KASUS: @SHOPEEID). Skripsi thesis, UIN SUNAN KALIJAGA YOGYAKARTA.

[img]
Preview
Text (OPTIMISASI REGRESI BINOMIAL NEGATIF LASSO BERBASIS AIC PADA FITUR TEKSTUAL PROMOSI DI PLATFORM X (STUDI KASUS: @SHOPEEID))
22106010078_BAB-I_IV-atau-V_DAFTAR-PUSTAKA.pdf - Published Version

Download (2MB) | Preview
[img] Text (OPTIMISASI REGRESI BINOMIAL NEGATIF LASSO BERBASIS AIC PADA FITUR TEKSTUAL PROMOSI DI PLATFORM X (STUDI KASUS: @SHOPEEID))
22106010078_BAB-II_sampai_SEBELUM-BAB-TERAKHIR.pdf
Restricted to Registered users only

Download (4MB) | Request a copy

Abstract

Overdispersion in count data leads to a violation of the assumption of equidispersion, meaning that the Poisson distribution is no longer capable of adequately modeling the variability of the data. Negative Binomial regression is used as an alternative approach by adding a dispersion parameter to accommodate variance that exceeds the mean. However, modeling becomes complex when it involves predictor variables in the form of textual features extracted via TF-IDF, which may lead to redundancy and multicollinearity among features. To produce a parsimonious model, LASSO regularization with an L1 penalty is applied, which shrinks the coefficients of variables with small contributions to exactly zero. The penalty parameter λ is determined by minimizing the AIC criterion to achieve a balance between model complexity and performance. The implementation of this method on textual features from the @ShopeeID account’s promotional posts on the X platform demonstrates that AIC-based Negative Binomial LASSO regression effectively reduces model dimensionality by eliminating 30 redundant variables. Although the model becomes more compact, its explanatory power remains relatively consistent, as indicated by a very small decrease in McFadden’s Pseudo R2, specifically, 0.0013 compared to the full model. The research results show that the integration of Negative Binomial regression and LASSO regularization is effective in improving model interpretability without significantly sacrificing statistical quality.

Item Type: Thesis (Skripsi)
Additional Information / Supervisor: Sri Utami Zuliana, S.Si., M.Sc., Ph.D.
Uncontrolled Keywords: binomial negatif; overdispersi; regularisasi LASSO; AIC; TF-IDF
Subjects: 500 Sains Murni > 510 Mathematics (Matematika)
Divisions: Fakultas Sains dan Teknologi > Matematika (S1)
Depositing User: Muchti Nurhidaya [muchti.nurhidaya@uin-suka.ac.id]
Date Deposited: 03 Jul 2026 11:08
Last Modified: 03 Jul 2026 11:08
URI: http://digilib.uin-suka.ac.id/id/eprint/77432

Share this knowledge with your friends :

Actions (login required)

View Item View Item
Chat Kak Imum