Journal of Citizenship https://mail.hk-publishing.id/index.php/joc <div style="text-align: justify;"> <p><strong>Journal of Citizenship (JOC)</strong> is an open access journal and peer-reviewed journal. <strong>JOC</strong> try to disseminate current and original articles from researchers and practitioners on various contemporary social and Political issues in Asia: Democratization, citizenship, Comparative politics, environmental issues, digital society and disruption, community welfare, social development, public policy innovation, international politics &amp; security, media, information &amp; literacy, governance, human rights &amp; democracy. <strong>(JOC)</strong> Invites researcher, academician, practitioners, and public to submit their critical writings and to contribute to the development of social and political sciences. Journal of Citizenship Indexed in SINTA 5.</p> </div> <div style="text-align: justify;"> <p><strong><em>Journal of Citizenship has been indexed by:</em></strong></p> <span style="text-align: justify;"><a href="https://sinta.kemdiktisaintek.go.id/journals/profile/14933" target="_blank" rel="noopener"><img src="https://journal.unismuh.ac.id/public/site/images/aharakan/sinta.png" /></a><a href="https://scholar.google.com/citations?user=mu_xuRMAAAAJ&amp;hl=en&amp;authuser=1" target="_blank" rel="noopener"><img src="https://jurnal.unpad.ac.id/public/site/images/idil.akbar/Dimensions.png" alt="" /> <img src="https://journal.unismuh.ac.id/public/site/images/aharakan/Garuda.png" /> <img src="https://journal.unismuh.ac.id/public/site/images/aharakan/googlescholar3.png" /></a></span></div> <div style="text-align: justify;"><span style="text-align: justify;"><img 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HK Publishing en-US Journal of Citizenship 2829-6028 <p>Authors who publish with <strong>Journal of Citizenship (JOC)</strong> agree to the following Open Access terms:</p> <ul> <li>Authors transfer the copyright and grant the journal right of first publication with the work simultaneously licensed under a Creative Commons Attribution- 4.0 International License. that allows others to share the work with an acknowledgment of the work's authorship and initial publication in this journal.</li> </ul> <p><strong>Journal of Citizenship (JOC)</strong> is licensed under a <a href="http://creativecommons.org/licenses/by-sa/4.0/" target="_blank" rel="noopener">Creative Commons Attribution-ShareAlike 4.0 International License.</a></p> <p><a href="https://creativecommons.org/licenses/by-sa/4.0/" target="_blank" rel="noopener"><img src="https://i.creativecommons.org/l/by-sa/4.0/88x31.png" alt="" width="71" height="25" /></a></p> Transformasi Demokrasi Indonesia: Refleksi Kritis, Tantangan Multidimensi, dan Agenda Penguatan Peradaban Politik https://mail.hk-publishing.id/index.php/joc/article/view/696 <p>Pasca-Reformasi, demokrasi Indonesia telah berhasil membangun fondasi prosedural yang kokoh, namun saat ini tengah menghadapi tantangan serius berupa gejala regresi demokrasi (<em>democratic backsliding</em>). Penelitian ini bertujuan untuk mendeskripsikan secara sistemik problematika demokrasi Indonesia kontemporer serta merumuskan strategi penguatan demokrasi berbasis nilai dan partisipasi publik yang substansial. Dengan menggunakan pendekatan kualitatif melalui metode studi kepustakaan (<em>library research</em>), penelitian ini melakukan analisis tematik terhadap berbagai literatur ilmiah, dokumen kebijakan, serta fenomena politik terkini. Hasil penelitian mengungkapkan bahwa problematika demokrasi Indonesia bersifat multidimensi, yang mencakup rendahnya literasi demokrasi, dominasi proseduralisme elektoral, krisis etika publik di tingkat elite, polarisasi sosial yang tajam, hingga menyempitnya ruang ekspresi warga akibat regulasi yang problematik. Kondisi ini diperparah oleh dominasi oligarki dan lemahnya akuntabilitas politik yang menjauhkan demokrasi dari esensi keterwakilan rakyat. Sebagai langkah transformatif, studi ini merumuskan enam strategi penguatan demokrasi: (1) revitalisasi <em>civic education</em> berbasis nilai lokal; (2) reformasi rekrutmen politik dan transparansi legislasi; (3) pelembagaan etika publik sebagai fondasi moral kebijakan; (4) perlindungan terhadap kebebasan sipil dan ruang ekspresi digital; (5) penguatan peran masyarakat sipil melalui sekolah kader demokrasi; serta (6) pembangunan demokrasi yang berkeadilan sosial melalui kebijakan redistributif. Melalui sinergi strategi tersebut, diharapkan demokrasi Indonesia dapat bertransformasi dari sekadar mekanisme elektoral rutin menjadi sebuah proyek peradaban politik yang inklusif, etis, dan berkelanjutan.</p> Agus Sutisna Habib Cahyono Sanen Adiyatama Copyright (c) 2026 Author and Journal of Citizenship https://creativecommons.org/licenses/by-sa/4.0 2026-06-02 2026-06-02 10.37950/joc.v5i2.696 Reinterpretasi Varians Anggaran: Sensemaking Auditee dan Paradoks Akuntabilitas Publik Dalam Perspektif Akuntansi Syariah Pada Dpupr Jember https://mail.hk-publishing.id/index.php/joc/article/view/719 <p>Penelitian ini bertujuan untuk memahami pemaknaan varians anggaran oleh <em>auditee</em>, bagaimana pemaknaan tersebut membentuk praktik akuntabilitas, serta dalam perspektif akuntansi syariah. Penelitian menggunakan pendekatan kualitatif interpretif melalui wawancara mendalam. Hasil penelitian menunjukkan bahwa varians anggaran dimaknai sebagai fenomena yang wajar karena dipengaruhi faktor teknis dan non-teknis seperti hasil lelang, perubahan harga, dan kondisi lapangan. Pemaknaan ini membentuk praktik akuntabilitas yang tidak hanya berbasis angka, tetapi juga narasi yang didukung data untuk memperoleh legitimasi dari auditor. Dalam praktiknya, terdapat kecenderungan <em>symbolic compliance</em>, di mana kepatuhan lebih bersifat administratif. Varians juga memengaruhi penilaian akuntabilitas, di mana kemampuan menjelaskan varians menjadi kunci dalam membangun kepercayaan. Dalam perspektif akuntansi syariah, pengelolaan anggaran dipandang sebagai <em>amanah</em>, namun masih terdapat kesenjangan antara nilai ideal dan praktik. Temuan penelitian ini menunjukkan bahwa varians anggaran merupakan fenomena multidimensional yang mencerminkan aspek teknis, sosial, dan normatif.</p> <p><strong>Kata kunci</strong>: varians anggaran, akuntabilitas, <em>sensemaking, symbolic compliance</em>, akuntansi syariah</p> Andini Risma Ilhami Annisa Zahrotun Hasana Luluk Musfiroh Copyright (c) 2026 Author and Journal of Citizenship https://creativecommons.org/licenses/by-sa/4.0 2026-06-02 2026-06-02 10.37950/joc.v5i2.719 Inflation Persistence and the Limited Impact of Monetary Policy Instruments Evidence from Indonesia https://mail.hk-publishing.id/index.php/joc/article/view/726 <p><em>Inflation is one of the key indicators in maintaining a country’s economic stability. Changes in global economic conditions, the COVID-19 pandemic, and the dynamics of monetary policy have caused inflation in Indonesia to fluctuate during the 2015–2025 period. Monetary policies implemented by Bank Indonesia through the control of interest rates, money supply, and exchange rate stability play an important role in maintaining price stability. In addition, inflation in previous periods is also presumed to influence current inflation through the phenomenon of inflation persistence. This study aims to analyze the effects of interest rates, changes in money supply, exchange rate changes, and inflation lag on inflation in Indonesia during the 2015–2025 period. This study employed a quantitative approach using quarterly time-series data from 2015 to 2025. The data used were secondary data obtained from Bank Indonesia and Statistics Indonesia. The analytical techniques employed included descriptive statistical analysis, multiple linear regression analysis, classical assumption tests, simultaneous significance testing (F-test), and partial significance testing (t-test) using the EViews program. The results indicate that, simultaneously, interest rates, changes in money supply, exchange rate changes, and inflation lag have a significant effect on inflation in Indonesia. Partially, interest rates have a negative and insignificant effect on inflation, changes in money supply have a positive and insignificant effect on inflation, exchange rate changes have a positive and insignificant effect on inflation, while inflation lag has a positive and significant effect on inflation in Indonesia. These findings indicate that inflation in Indonesia tends to be influenced by inflation persistence from previous periods. The implications of this study suggest that inflation control does not solely depend on current monetary policy but also needs to consider the influence of inflation in previous periods. Therefore, Bank Indonesia needs to maintain the consistency of its monetary policy through the control of interest rates, liquidity, and exchange rate stability in order to preserve price stability and support national economic stability.</em></p> <p><strong><em>Keywords: </em></strong><em>monetary policy, interest rates, money supply, exchange rate, inflation lag, inflation</em></p> Wila Delvia Surya Dewi Rustariyuni Copyright (c) 2026 Author and Journal of Citizenship https://creativecommons.org/licenses/by-sa/4.0 2026-06-02 2026-06-02 10.37950/joc.v5i2.726 Analisis Good Governance dalam Implementasi E-Government pada Kebijakan E-KTP di Jakarta Selatan https://mail.hk-publishing.id/index.php/joc/article/view/706 <p>Penerapan e-government melalui program Kartu Tanda Penduduk elektronik (e-KTP) bertujuan untuk memodernisasi sistem administrasi negara dan meningkatkan kualitas pelayanan publik. Penelitian ini bertujuan untuk menganalisis implementasi program e-KTP di Kota Administrasi Jakarta Selatan melalui perspektif good governance serta mengidentifikasi kendala lokal dan keterkaitannya dengan dinamika tata kelola di tingkat nasional. Penelitian ini menggunakan metode kualitatif deskriptif dengan teknik pengumpulan data berupa studi pustaka dan analisis laporan resmi pemerintah. Analisis difokuskan pada empat variabel utama: transparansi, akuntabilitas, efektivitas, dan responsivitas. Hasil penelitian menunjukkan bahwa implementasi e-KTP di Jakarta Selatan telah menunjukkan kemajuan signifikan dalam aspek transparansi dan akuntabilitas, yang dibuktikan dengan kepatuhan prosedural yang tinggi dan kepuasan masyarakat yang positif terhadap integritas aparatur. Namun, penelitian menemukan bahwa efektivitas dan responsivitas masih belum optimal akibat kendala teknis, seperti ketidakstabilan server dan keterbatasan fasilitas fisik. Hambatan lokal tersebut pada dasarnya berkelindan dengan permasalahan sistemik di tingkat nasional, terutama terkait integrasi infrastruktur data dan manajemen rantai pasok blangko e-KTP. Penelitian menyimpulkan bahwa meskipun transformasi digital telah meningkatkan akuntabilitas administratif, keberhasilan akhirnya bergantung pada sinkronisasi kebijakan vertikal antara pemerintah pusat dan daerah untuk memastikan sistem tata kelola yang responsif dan terintegrasi.</p> Najwa Annisa Balqis Fairuz Arkan Fatihah Maizia Hariyanti Zahra Fatkhuri Copyright (c) 2026 Author and Journal of Citizenship https://creativecommons.org/licenses/by-sa/4.0 2026-06-03 2026-06-03 10.37950/joc.v5i2.706 Penelitian ini memberikan analis Implementasi Artificial Intelligence Dalam Prediksi Hasil Panen Petani Di Wilayah Pedesaan Kabupaten Soppeng https://mail.hk-publishing.id/index.php/joc/article/view/723 <p>Penelitian ini memberikan analisis komprehensif mengenai implementasi Artificial Intelligence (AI) untuk prediksi hasil pertanian di pedesaan Kabupaten Soppeng. Menghadapi volatilitas iklim yang meningkat, petani kecil di Soppeng mulai mengadopsi alat presisi digital untuk menstabilkan produktivitas padi dan jagung. Studi ini menggunakan metode deskriptif kualitatif melalui wawancara mendalam, observasi lapangan, dan dokumentasi spasial. Investigasi berfokus pada sinergi antara algoritma machine learning, data meteorologi real-time, dan sensor hara tanah. Temuan mengungkapkan bahwa meskipun platform AI seperti JIVA dan model machine learning lokal secara signifikan meningkatkan akurasi peramalan dan optimalisasi alokasi sumber daya, efektivitasnya terhambat oleh "kesenjangan digital" yang ditandai oleh rendahnya literasi di kalangan petani tua dan infrastruktur internet yang tidak memadai di kecamatan terpencil. Studi ini menekankan perlunya kerangka kebijakan yang mengintegrasikan peningkatan infrastruktur dengan pengembangan modal manusia yang intensif untuk memastikan transformasi digital yang berkelanjutan di pertanian pedesaan.</p> Kasmirandi 2280 Erwin Erwin ZH Nurul Kusumawardhani Chaeruddin Chaeruddin Copyright (c) 2026 Author and Journal of Citizenship https://creativecommons.org/licenses/by-sa/4.0 2026-06-07 2026-06-07 10.37950/joc.v5i2.723 Translasi Falsafah Maja Labo Dahu dalam Mediasi Penal: Paradigma Hukum Restoratif pada Penyelesaian Perkara Pidana di Bima dan Dompu https://mail.hk-publishing.id/index.php/joc/article/view/728 <p>Penelitian ini bertujuan menganalisis translasi falsafah <em>Maja Labo Dahu</em> dalam praktik mediasi penal sebagai paradigma hukum restoratif pada penyelesaian perkara pidana di wilayah Bima dan Dompu. Penelitian menggunakan pendekatan yuridis-empiris dengan fondasi aksiologis-transformatif yang memandang hukum sebagai realitas sosial yang hidup dalam kesadaran budaya masyarakat. Pengumpulan data dilakukan melalui observasi partisipatif, wawancara mendalam, dan studi dokumentasi terhadap praktik mediasi penal yang melibatkan aparat penegak hukum, tokoh adat, tokoh agama, pelaku, korban, dan masyarakat. Analisis data menggunakan teknik analisis tematik dan hermeneutik hukum untuk menafsirkan relasi antara nilai budaya lokal dengan praktik penyelesaian perkara pidana. Hasil penelitian menunjukkan bahwa internalisasi nilai <em>maja</em> (malu) dan <em>dahu</em> (takut moral-spiritual) berfungsi sebagai mekanisme kontrol sosial yang efektif dalam mendorong pengakuan kesalahan, pemulihan hubungan sosial, dan pencegahan konflik lanjutan. Tingkat keberhasilan mediasi mencapai 81,25% dengan mayoritas korban menyatakan puas terhadap proses penyelesaian karena adanya pengakuan moral, pemulihan martabat, dan rekonsiliasi sosial. Penelitian ini menegaskan bahwa mediasi penal berbasis <em>Maja Labo Dahu</em> mampu membentuk paradigma hukum restoratif yang humanistik, partisipatif, dan berakar pada <em>living law</em> masyarakat lokal.</p> <p><strong>Kata Kunci:</strong> <em>Maja Labo Dahu</em>, mediasi penal, hukum restoratif, <em>living law</em>, rekonsiliasi sosial.</p> Renni Sartika Muhammad Nur Nurfarhati Haeril Copyright (c) 2026 Author and Journal of Citizenship https://creativecommons.org/licenses/by-sa/4.0 2026-06-03 2026-06-03 10.37950/joc.v5i2.728 Disonansi Tata Kelola Ekonomi Biru, Insekuritas Pangan Pesisir, dan Kegagalan Ekologi Agro-Maritim di Nusa Tenggara Barat https://mail.hk-publishing.id/index.php/joc/article/view/716 <p>Penelitian ini bertujuan menganalisis disonansi tata kelola ekonomi biru terhadap meningkatnya insekuritas pangan pesisir dan kegagalan ekologi agro-maritim di Nusa Tenggara Barat (NTB) melalui dua indikator utama, yakni <em>Coastal Household Food Insecurity</em> dan degradasi ekologi agro-maritim. Penelitian menggunakan pendekatan deskriptif kualitatif dengan desain studi kasus yang dipadukan melalui kerangka <em>political ecology</em>, ekonomi politik pesisir, dan analisis tata kelola kebijakan. Tahapan penelitian dilakukan melalui analisis bibliometrik terhadap 400 artikel terindeks Scopus periode 2010–2025 menggunakan VOSviewer, penelusuran dokumen kebijakan makro dan meso, penentuan informan secara <em>purposive sampling</em>, pengumpulan data lapangan melalui observasi partisipatif dan wawancara mendalam, serta analisis tematik-kritis terhadap relasi antara investasi maritim, kebijakan ekonomi biru, dan kerentanan sosial-ekologis masyarakat pesisir. Hasil penelitian menunjukkan bahwa ekonomi biru di NTB mengalami reduksi teknokratis yang lebih berorientasi pada pertumbuhan investasi dibanding perlindungan sosial-ekologis masyarakat pesisir. Indikator <em>Coastal Household Food Insecurity</em> memperlihatkan tingginya kemiskinan, dominasi pengeluaran pangan rumah tangga di atas 60 persen, fluktuasi pendapatan nelayan, serta meningkatnya stunting dan ketergantungan pangan luar daerah. Sementara itu, indikator degradasi ekologi agro-maritim ditunjukkan melalui kerusakan mangrove, penurunan tutupan terumbu karang, abrasi pantai, intrusi air laut, sedimentasi, dan eksploitasi sumber daya laut yang memperlemah produktivitas perikanan tradisional. Penelitian ini menegaskan bahwa ekonomi biru di NTB belum mampu mentransformasikan kelimpahan sumber daya pesisir menjadi keadilan ekologis, ketahanan pangan, dan keberlanjutan penghidupan masyarakat pesisir.</p> <p><strong>Kata kunci: Disonansi, Ekonomi Biru, Pangan Pesisir, Ekologi, Agro maritim.</strong></p> Arman Nike Ardiansyah Junaidin Haeril Copyright (c) 2026 Author and Journal of Citizenship https://creativecommons.org/licenses/by-sa/4.0 2026-02-02 2026-02-02 10.37950/joc.v5i2.716 Rekonfigurasi Tata Kelola Maritim dan Kesejahteraan melalui Integrasi Hak Asasi Laut dan Pekerjaan Manusiawi di Pesisir Nusa Tenggara https://mail.hk-publishing.id/index.php/joc/article/view/724 <p>Penelitian ini bertujuan menganalisis rekonfigurasi tata kelola maritim melalui integrasi hak asasi laut, ekonomi biru, dan pekerjaan manusiawi dalam meningkatkan kesejahteraan masyarakat pesisir di Nusa Tenggara Barat dan Nusa Tenggara Timur. Penelitian menggunakan pendekatan kualitatif kritis-interpretatif dengan desain studi kasus multi-situs untuk memahami relasi kuasa, ketimpangan distribusi manfaat, serta dinamika sosial-ekologis dalam pembangunan maritim. Tahapan penelitian meliputi telaah literatur kritis dan analisis regulasi maritim, pemetaan aktor melalui purposive dan theoretical sampling, pengumpulan data melalui wawancara mendalam, observasi partisipatif, serta analisis dokumen kebijakan yang divalidasi melalui triangulasi sumber dan metode. Hasil penelitian menunjukkan bahwa kebijakan ekonomi biru masih didominasi orientasi pertumbuhan dan investasi sehingga mempersempit akses ruang tangkap masyarakat pesisir, memperkuat marginalisasi nelayan kecil, serta menciptakan ketimpangan distribusi manfaat ekonomi. Selain itu, dominasi pekerjaan informal, lemahnya perlindungan sosial, rendahnya partisipasi substantif komunitas lokal, dan terbatasnya akses pendidikan serta kesehatan memperlihatkan bahwa pembangunan maritim belum mampu mentransformasikan pertumbuhan ekonomi menjadi kesejahteraan sosial-ekologis yang berkeadilan dan berkelanjutan bagi masyarakat pesisir.</p> <p><strong>Kata kunci</strong>: ekonomi biru, hak asasi laut, tata kelola maritim, pekerjaan manusiawi, kesejahteraan pesisir.</p> Wawan Mulyawan Yuli Yanti Daaris Sadrul Imam Haeril Copyright (c) 2026 Author and Journal of Citizenship https://creativecommons.org/licenses/by-sa/4.0 2026-06-02 2026-06-02 10.37950/joc.v5i2.724 Dampak Pembangunan Jalan KSB terhadap Aksesibilitas dan Aktivitas Masyarakat Kota Serang: Analisis dalam Perspektif Teori Pembangunan Dusseldorp https://mail.hk-publishing.id/index.php/joc/article/view/735 <p style="font-weight: 400;">Penelitian ini bertujuan menganalisis dampak pembangunan Jalan KSB terhadap aksesibilitas dan aktivitas masyarakat Kota Serang. Pembangunan jalan merupakan salah satu bentuk intervensi infrastruktur yang diharapkan mampu meningkatkan mobilitas masyarakat serta mendukung aktivitas sosial dan ekonomi. Penelitian ini menggunakan pendekatan kualitatif dengan metode studi kasus. Data dikumpulkan melalui wawancara, observasi, dan dokumentasi, kemudian dianalisis menggunakan model interaktif Miles, Huberman, dan Saldaña. Hasil penelitian menunjukkan bahwa pembangunan Jalan KSB memberikan dampak positif terhadap peningkatan aksesibilitas masyarakat, ditandai dengan kemudahan mobilitas, meningkatnya kenyamanan perjalanan, serta lebih mudahnya akses menuju fasilitas publik. Pembangunan jalan juga berkontribusi terhadap peningkatan aktivitas ekonomi melalui kelancaran distribusi barang dan jasa serta munculnya peluang usaha baru. Dari aspek sosial, peningkatan konektivitas wilayah mendorong interaksi masyarakat yang lebih luas. Namun demikian, pembangunan jalan juga berpotensi menimbulkan dampak lingkungan berupa peningkatan volume kendaraan dan perubahan penggunaan lahan. Berdasarkan Teori Pembangunan Dusseldorp, keberhasilan pembangunan tidak hanya ditentukan oleh kualitas infrastruktur yang dibangun, tetapi juga oleh partisipasi masyarakat dan keberlanjutan pengelolaan hasil pembangunan.</p> <p style="font-weight: 400;"><strong>Kata Kunci:</strong>&nbsp;aksesibilitas, pembangunan jalan, aktivitas masyarakat.</p> Yordanius Yusuf Hutabarat Muhammad Jaddan Muhammad Satrio A W Rachel Aulia Prilly Sakinah Copyright (c) 2026 Author and Journal of Citizenship https://creativecommons.org/licenses/by-sa/4.0 2026-06-02 2026-06-02 10.37950/joc.v5i2.735