slot maxwin slot gacor slot Thailand slot gacor maxwin rekomendasi slot gacor jpterus66 slot maxwin slot gacor malam ini slot gacor SLOT ONLINE slot bet 200 888slot slot777 slot terbaru slot88 slot gacor malam ini slot maxwin Situs Slot Gacor 888slot slot777 slot terbaru slot88 slot gacor malam ini slot maxwin Situs Slot Gacor slot gacor malam ini slot maxwin Situs Slot Gacor 888slot slot777 slot terbaru slot88 slot gacor malam ini slot maxwin Situs Slot Gacor slot88 rtp slot gacor slot online slot gacor maxwin slot bet 200 slot gacor slot maxwin SLOT THAILAND Slot Gacor Maxwin slot maxwin slot gacor slot Thailand slot gacor maxwin rekomendasi slot gacor jpterus66 slot maxwin slot gacor malam ini slot gacor SLOT ONLINE slot bet 200 888slot slot777 slot terbaru slot88 slot gacor malam ini slot maxwin Situs Slot Gacor 888slot slot777 slot terbaru slot88 slot gacor malam ini slot maxwin Situs Slot Gacor slot gacor malam ini slot maxwin Situs Slot Gacor 888slot slot777 slot terbaru slot88 slot gacor malam ini slot online slot maxwin link slot gacor
@article{Pujiyanta_Noviyanto_Ismail_2025, place={Purwokerto}, title={Stacking-Based Support Vector Machine and Multilayer Perceptron for Dysarthria Detection Using MFCC Features}, volume={6}, url={https://jutif.if.unsoed.ac.id/index.php/jurnal/article/view/5199}, DOI={10.52436/1.jutif.2025.6.4.5199}, abstractNote={<p>The manual diagnosis of dysarthria is often time-consuming and requires the expertise of trained specialists, which can delay early intervention and treatment. This study aims to develop an automated detection system to improve diagnostic accuracy and efficiency. Mel-Frequency Cepstral Coefficients (MFCC) are used as the primary features, and three classification models are evaluated: Support Vector Machine (SVM), Multilayer Perceptron (MLP), and a stacking ensemble that combines both. The evaluation is conducted on a dataset of 240 audio samples. Experimental results show that the stacking ensemble achieves the highest performance, with an accuracy of 97.92%, surpassing SVM (95.83%) and MLP (93.75%). These findings highlight the significant potential of voice-based classification to accelerate dysarthria diagnosis, thus supporting clinical screening and speech therapy applications.</p>}, number={4}, journal={Jurnal Teknik Informatika (Jutif)}, author={Pujiyanta, Ardi and Noviyanto, Fiftin and Ismail, Taufiq}, year={2025}, month={Sep.}, pages={2795–2810} }