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DEPARTMENT

Physics

Statistical Mechanics of Emergence

Study phase transitions, critical phenomena, and self-organized criticality in a perfectly measurable complex system.

For Physicists

A Complex System You Can Actually Measure


You Study Systems Where Simple Rules Create Complex Behavior

Spin glasses. Neural networks. Flocking birds. Financial markets.

The mathematics of complexity: phase transitions, critical phenomena, universality, power laws.

Here’s a new system to study.


The Colony as Physical System

101 agents traversing a graph. Each agent:

  • Samples pheromone at current node
  • Transitions to adjacent node with probability ∝ exp(-βE), where E is effective cost
  • Deposits pheromone on traversed edge if successful

This is a stochastic dynamical system with:

  • Discrete state space (pheromone configurations)
  • Continuous-time dynamics (Poisson agent arrivals)
  • Feedback loops (pheromone → behavior → pheromone)
  • Multiple interacting “particles” (agents)

Statistical mechanics applies.


Observed Phenomena

Power-Law Distribution

In simulations:

  • 0.4% of edges carry 94.9% of total pheromone
  • Pheromone levels follow P(p) ∝ p^(-γ) for large p

This is Zipf’s law. Same distribution as:

  • Word frequencies
  • City sizes
  • Wealth distribution
  • Neural firing rates

Question: What generates this universality?

Phase Transition (Hypothesized)

We observe qualitative change in behavior:

  • Early: Random exploration, uniform pheromone
  • Late: Concentrated highways, power-law distribution

This looks like a phase transition:

  • Order parameter: Pheromone concentration ratio
  • Control parameter: Time (or agent density)

Question: Is this a genuine phase transition? What universality class?

Self-Organized Criticality (Possible)

The system might be self-organizing to criticality:

  • Deposit drives system toward order
  • Decay drives system toward disorder
  • Balance point = critical state

Signature: Avalanches (cascades of pheromone changes) with power-law sizes.


Physics Questions

1. What’s the Order Parameter?

Candidates:

  • Gini coefficient of pheromone distribution
  • Largest eigenvalue of pheromone adjacency matrix
  • Entropy of pheromone landscape

Challenge: Define and measure the order parameter that captures the exploration→exploitation transition.

2. What’s the Universality Class?

If there’s a phase transition:

  • Mean-field? (infinite-range interactions via environment)
  • Percolation? (trail connectivity)
  • Directed percolation? (information flows one way)

Challenge: Measure critical exponents, identify universality class.

3. What’s the Entropy?

The pheromone landscape encodes information about past successful paths.

  • Shannon entropy of pheromone distribution?
  • Kolmogorov complexity of the landscape?
  • Mutual information between regions?

Challenge: Quantify information content, measure entropy production rate.

4. Is There a Free Energy?

Can we write:

F = E - TS

Where:

  • E = some energy function of pheromone configuration
  • S = entropy
  • T = effective temperature (related to randomness in agent behavior)

Challenge: Derive a free energy functional, predict equilibrium states.

5. What’s the Relaxation Dynamics?

After perturbation (remove agents, reset pheromone):

  • How does the system relax?
  • What’s the relaxation timescale?
  • Are there multiple timescales (fast/slow modes)?

Connection to: Mode-coupling theory, glassy dynamics.


The Model

State Space

Pheromone configuration: p = {p_e} for all edges e ∈ E

Dynamics

Deposit: When agent successfully traverses path π:

p_e → p_e + Δ    for e ∈ π

Decay: Continuous:

dp_e/dt = -κ p_e

Or discrete:

p_e(t+1) = τ p_e(t)    where τ = e^(-κΔt)

Agent Transition Probabilities

From node i, probability of transitioning to adjacent node j:

P(i→j) = exp(-β w_ij / (1 + p_ij α)) / Z

Where Z is normalization, β is inverse temperature, α is sensitivity.

Stationary State

Fixed point where expected deposit = decay.

Question: Does a unique stationary state exist? Is it globally attracting?


Experimental Advantages

Perfect Observability

You can measure everything:

  • Exact pheromone levels (not proxies)
  • Complete agent trajectories
  • All transition events

No sampling error. No measurement noise.

Controllable Parameters

You can vary:

  • Number of agents (particle density)
  • Decay rate (effective temperature)
  • Sensitivity distribution (disorder)
  • Graph topology (lattice, random, scale-free)

Systematic parameter sweeps are trivial.

Reproducibility

Same initial conditions → Same random seed → Same evolution.

Perfect replication.


What We Provide

Data

  • Complete pheromone time series
  • Agent trajectory data
  • Transition matrices
  • Correlation functions

Infrastructure

  • Spawn custom agent populations
  • Modify system parameters
  • Run large-scale simulations
  • Real-time monitoring

Collaboration

  • Access to mathematicians (for proofs)
  • Access to biologists (for biological validation)
  • Co-authorship opportunities

Hackathon Challenges for Physicists

Challenge: Identify the Phase Transition

Is there a genuine phase transition? What kind?

Approach:

  • Define order parameter
  • Measure as function of control parameter
  • Look for scaling, critical exponents

Prize bonus: $1,000

Challenge: Measure Critical Exponents

If there’s a phase transition, what universality class?

Approach:

  • Finite-size scaling analysis
  • Measure multiple exponents
  • Compare to known universality classes

Challenge: Entropy Analysis

Quantify information content of pheromone landscape.

Approach:

  • Define appropriate entropy measure
  • Track entropy over time
  • Relate to colony “intelligence”

Challenge: Free Energy Derivation

Derive a free energy functional for the system.

Approach:

  • Identify energy function
  • Define effective temperature
  • Predict equilibrium from minimization

Your Heroes Studied Similar Systems

Per Bak invented self-organized criticality. Is the colony SOC?

Giorgio Parisi solved the spin glass. The pheromone landscape might be a spin glass.

Leo Kadanoff developed renormalization. What are the relevant scales?

Ilya Prigogine studied dissipative structures. The colony is a dissipative structure far from equilibrium.


Publication Opportunities

JournalAngle
Physical Review EStatistical mechanics of stigmergic systems
Physical Review LettersNovel phase transition discovery
Journal of Statistical PhysicsRigorous analysis
Physica AComplex systems
EntropyInformation-theoretic analysis
Nature PhysicsCross-disciplinary breakthrough

Why Physics?

Other disciplines see the behavior. Physics sees the mathematics.

You have tools they don’t:

  • Statistical mechanics
  • Field theory
  • Scaling analysis
  • Universality concepts

These tools were made for this system.


Register Your Team

[REGISTER NOW]

Include at least one non-physics team member (we recommend Math or CS).

The best physics comes from unexpected applications.


“More is different.”

— Philip Anderson


You’ve studied spin glasses, neural networks, and flocking.

Now study the physics of emergence.

[JOIN THE HACKATHON]

Ready to Join?

Assemble a cross-disciplinary team and register for the hackathon. Build something that matters.