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28
Februariruary 2026

Evolutionary Psychology of Risk Assessment in AI Development

  • 86 tayangan
  • 28 Februari 2026
Evolutionary Psychology of Risk Assessment in AI Development Human responses to low-probability high-consequence events, known as Dread Risk behavior, have deep evolutionary roots that AI systems must understand. This research explores how seemingly irrational human risk responses actually represent sophisticated survival mechanisms that challenge purely logical AI approaches.

Dread Risk and Evolutionary Survival Mechanisms

The Biological Basis of Irrational Risk Responses

Human risk assessment often appears illogical from purely mathematical perspectives. Yet recent research provides evolutionary explanations for these patterns. Scientists have identified that people often respond to low-probability, high-consequence events8 in ways that seem disproportionate to actual statistical risks. This so-called Dread Risk response has deep biological roots.

The evolutionary framework clarifies why humans prioritize certain threats over others regardless of probability calculations. Our ancestors who overreacted to potential catastrophic dangers survived more reliably than those who made purely rational risk assessments. A tiger attack might have low probability but absolute consequence. Modern humans inherited these threat-detection systems.

AI systems designed for traffic environments must account for these evolved responses. A human process involves instinct, intuition, and variables that don't necessarily reflect the book and may not even consider existing data1 becomes critical when drivers make split-second decisions. Their choices reflect millions of years of evolutionary programming, not traffic school lessons.

Rational Versus Evolved Decision Frameworks

The tension between rational optimization and evolved heuristics creates fundamental challenges for AI integration with human systems. A process is rational if it always does the right thing based on current information, given ideal performance measurement1 defines computational logic. Human brains operate on different principles entirely.

Behavioral finance research demonstrates these divergences clearly in investment contexts. Studies show investors making decisions based on psychological factors rather than pure data analysis.9 Similarly, traffic participants respond to perceived rather than calculated risks. A speeding vehicle triggers visceral reactions that bypass conscious analysis.

Understanding these mechanisms matters for autonomous system design. When traffic is not rational1 because human participants use evolved rather than optimized decision-making, AI must model these psychological realities. Indonesian research on AI usage behavior reveals that ethical and privacy concerns shape technology adoption more than efficiency metrics alone.10 People prioritize emotional comfort over optimal outcomes.

Integrating Evolutionary Understanding Into AI Systems

Modeling Irrational Behavior for Better Predictions

Contemporary AI development increasingly incorporates psychological and evolutionary insights into algorithmic design. The Wright Brothers analogy applies here too. The Wright Brothers succeeded by understanding processes, not by imitation. Similarly, self-driving cars must understand human driving patterns1 extends to understanding why those patterns exist.

Machine learning traders demonstrate potential advantages of rational systems in specific domains. Research indicates that machines are less susceptible to irrational exuberance11 in financial markets, producing fewer speculative bubbles. Yet traffic environments require the opposite approach, where understanding irrational exuberance becomes essential for safe navigation.

The Total Turing Test framework acknowledges this complexity. The newer Total Turing Test includes physical contact and perceptual capability interrogation, meaning computers must also use computer vision and robotics to succeed1 demands that AI systems perceive and respond to human emotional states and evolved threat responses, not just logical traffic patterns.

Practical Applications in Autonomous Navigation

Implementing evolutionary psychology insights requires sophisticated sensor systems and behavioral models. For a self-driving car to be successful, it must act humanly, not rationally, because traffic is not rational1 necessitates understanding passenger and pedestrian psychology alongside other drivers.

Educational initiatives recognize the importance of behavioral understanding from early development. Indonesian traffic safety programs emphasize instilling proper behavioral patterns in students before they become drivers.12 This approach acknowledges that rational instruction alone cannot override evolved threat responses without proper behavioral conditioning.

Digital enforcement systems like ETLE Mobile (Electronic Traffic Law Enforcement) demonstrate attempts to shape behavior through consistent monitoring.13 Interestingly, these systems also monitor police officer behavior, recognizing that all humans including enforcement personnel operate with evolved rather than purely rational decision frameworks. The goal shifts from expecting rational behavior to understanding and gradually shaping behavioral patterns through consistent feedback mechanisms.

Daftar Pustaka

  1. Santoso, J. T., Sholikan, M., & Caroline, M. (2021). Kecerdasan buatan (Artificial intelligence). Universitas Sains & Teknologi Komputer.
  2. EurekAlert. (2025). Scientists find evolutionary explanation for "irrational" Dread Risk behavior. Retrieved from eurekalert.org
  3. Equities.com. (2018). Behavioral Finance: Profiting from Irrational Behavior… Yours and Others. Retrieved from equities.com
  4. Kumparan. (2025). Riset Perilaku Penggunaan AI dalam Aktivitas Digital Masyarakat. Retrieved from kumparan.com
  5. Investment Executive. (2025). AI traders more rational, less herd-like. Retrieved from investmentexecutive.com
  6. Berita Satu. (2025). 100 Pelajar SMA Jakarta Disaring Jadi Pelopor Keselamatan Lalu Lintas. Retrieved from beritasatu.com
  7. Berita Satu. (2021). ETLE Mobile Juga Pantau Perilaku Anggota Polisi di Lapangan. Retrieved from beritasatu.com
PROFIL PENULIS
Swante Adi Krisna
Penggemar musik Ska, Reggae dan Rocksteady sejak 2004. Gooner sejak 1998. Blogger dan SEO spesialis paruh waktu sejak 2014. Perancang Grafis otodidak sejak 2001. Pemrogram Website otodidak sejak 2003. Tukang Kayu otodidak sejak 2024. Sarjana Hukum Pidana dari Universitas Negeri di Surakarta, Jawa Tengah, Indonesia. Magister Hukum Pidana dalam bidang kejahatan dunia maya dari Universitas Swasta di Surakarta, Jawa Tengah, Indonesia. Magister Kenotariatan dalam bidang hukum teknologi, khususnya cybernotary dari Universitas Negeri di Surakarta, Jawa Tengah, Indonesia. Bagian dari Keluarga Kementerian Pertahanan Republik Indonesia.