Mohon tunggu...
Asep Setiawan
Asep Setiawan Mohon Tunggu... Membahasakan fantasi. Menulis untuk membentuk revolusi. Dedicated to the rebels.

Nalar, Nurani, Nyali. Curious, Critical, Rebellious. Mindset, Mindmap, Mindful

Selanjutnya

Tutup

Inovasi

Adaptive Relational Zoning: a CAS Framework for Modelling Strategic Social Interaction

13 Juni 2025   13:09 Diperbarui: 13 Juni 2025   19:29 371
+
Laporkan Konten
Laporkan Akun
Kompasiana adalah platform blog. Konten ini menjadi tanggung jawab bloger dan tidak mewakili pandangan redaksi Kompas.
Lihat foto
Bagikan ide kreativitasmu dalam bentuk konten di Kompasiana | Sumber gambar: Freepik

C. Integration with AI-Based Relational Intelligence

The integration of the Six-Zone Relational Model with AI systems opens a frontier for hybrid relational intelligence, where human emotional nuance and machine-scale analysis co-evolve to support more ethical, adaptive, and strategic social decision-making.

1. Towards Empathic Machines: Encoding Relational Zones

At its core, the model provides a structured yet adaptive language for classifying relational states---white (harmonious), green (cooperative), yellow (ambiguous), red (critical), black (toxic), and clear (resolved neutrality). This categorical system, grounded in temporally weighted variables and dynamically shifting scores, allows AI to interpret, track, and respond to relational signals more granularly than traditional sentiment analysis or affect detection systems.

By embedding zone thresholds and scoring functions into AI cognitive architectures (e.g., relational agents, negotiation bots, therapeutic AI, HR co-pilots), machines can move beyond binary (trust/distrust) or static role-based interactions toward situationally responsive behaviors that adjust in real-time based on evolving patterns of intent, reciprocity, and emotional volatility.

2. Dynamic Learning and Strategic Adjustment

AI agents that model human interactions as adaptive, non-zero-sum exchanges will require learning mechanisms that can interpret strategic ambiguity, micro-shifts in intent, and historical emotional debt. The model's structure supports such learning by allowing machines to track relational trajectories over time, updating zone classifications through reinforcement learning, Bayesian inference, or meta-learning frameworks.

This enables the development of AI agents capable of complex moral positioning, not only executing instructions or optimizing predefined goals, but also modulating behavior according to relational dynamics, including forgiveness thresholds, betrayal resilience, or cautious cooperation.

3. Human-in-the-Loop Calibration

Despite the promise of autonomy, the integration of this model into AI systems must retain human interpretive authority. The semantic ambiguity and moral complexity inherent in relational zones---especially yellow and red---demand human-in-the-loop governance to oversee how AI assigns risk, intent, or emotional proximity. This ensures that machine inferences do not become opaque judgments, but instead serve as augmented perspectives co-evolving with human sensemaking.

In practice, this could mean explainable relational AI dashboards, in which zone transitions are justified by traceable shifts in relational variables, allowing humans to audit, contest, or reinterpret AI-derived classifications and recommendations.

Mohon tunggu...

Lihat Konten Inovasi Selengkapnya
Lihat Inovasi Selengkapnya
Beri Komentar
Berkomentarlah secara bijaksana dan bertanggung jawab. Komentar sepenuhnya menjadi tanggung jawab komentator seperti diatur dalam UU ITE

Belum ada komentar. Jadilah yang pertama untuk memberikan komentar!
LAPORKAN KONTEN
Alasan
Laporkan Konten
Laporkan Akun