BAB V KESIMPULAN DAN SARAN
5.2 Saran
Berdasarkan penelitian ini, peneliti berharap agar penelitian ini dapat dikembangkan lebih lanjut dengan beberapa saran berikut:
a. Memperbaiki kualitas dataset dan juga menambah datanya dengan tempat wisata yang lebih banyak dan beragam.
b. Menambah entitas yang dapat dikenali pada dataset, seperti nama kota, waktu kunjungan, biaya masuk, dan sebagainya.
c. Mencoba membangun versi NER lain seperti nested NER.
d. Menggunakan metode lain pada saat membangun model NER.
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