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🎨 Mixing Between Distributions While Training

A mathematical framework for smoothly interpolating between data distributions during training using an annealing schedule.

Sam Foreman 2025-10-06

Motivation

When training on multiple data sources or domains, it is often desirable to smoothly interpolate between two distributions rather than switching abruptly. This ensures stable optimization and avoids sudden shifts in gradient statistics.

We can achieve this with an annealing schedule that gradually shifts probability mass from one distribution to another.

Mathematical Framework

We introduce an annealing schedule during the mixing phase:

{Ξ³t}t=0N={Ξ³0,Ξ³1,…,Ξ³Nβˆ’1,Ξ³N}\{\gamma_t\}_{t=0}^N = \{\gamma_0, \gamma_1, \ldots, \gamma_{N-1}, \gamma_N\}

where

0<Ξ³0<Ξ³1<β‹―<Ξ³N<1∣γt+1βˆ’Ξ³t∣β‰ͺ1.\begin{aligned} 0 < \gamma_0 < \gamma_1 &< \cdots < \gamma_N < 1 \\ \quad |\gamma_{t+1} &- \gamma_t| \ll 1. \end{aligned}

We also define a complementary schedule:

{Ξ·t}t=0N={Ξ·0,Ξ·1,…,Ξ·N},withΒ Ξ³i+Ξ·i=1β€…β€ŠβŸΉβ€…β€ŠΞ·i=1βˆ’Ξ³i.\{\eta_t\}_{t=0}^N = \{\eta_0, \eta_1, \ldots, \eta_N\}, \quad \text{with } \gamma_i + \eta_i = 1 \implies \eta_i = 1 - \gamma_i.

Mixing Definition

For t=0,1,…,Nt = 0, 1, \ldots, N, define the interpolated distribution

Bi=Ξ³iX+(1βˆ’Ξ³i)Y,B_i = \gamma_i X + (1 - \gamma_i) Y,

where XX and YY are two underlying distributions (or datasets, or losses).

Incremental Difference

The change between successive mixtures is:

Bi+1βˆ’Bi=Ξ³i+1X+(1βˆ’Ξ³i+1)Yβˆ’[Ξ³iX+(1βˆ’Ξ³i)Y]=(Ξ³i+1βˆ’Ξ³i)(Xβˆ’Y).\begin{aligned} B_{i+1} - B_i &= \gamma_{i+1} X + (1 - \gamma_{i+1}) Y - \left[ \gamma_i X + (1 - \gamma_i) Y \right] \\ &= (\gamma_{i+1} - \gamma_i)(X - Y). \end{aligned}

Thus,

∣Bi+1βˆ’Bi∣=∣γi+1βˆ’Ξ³iβˆ£β€‰βˆ£Xβˆ’Y∣.|B_{i+1} - B_i| = |\gamma_{i+1} - \gamma_i| \, |X - Y|.

If we set ∣γi+1βˆ’Ξ³i∣=Ξ΅β‰ͺ1|\gamma_{i+1} - \gamma_i| = \varepsilon \ll 1, then

∣Bi+1βˆ’Biβˆ£β‰€Ξ΅β€‰βˆ£Xβˆ’Y∣,|B_{i+1} - B_i| \leq \varepsilon \, |X - Y|,

meaning the transition between XX and YY is arbitrarily smooth.

Interpretation

  • This is a linear interpolation (convex combination) between two distributions.
  • The annealing schedule ensures that the interpolation is smooth in small increments.
  • Useful in:
    • Curriculum learning: start from an easier distribution and anneal to a harder one.
    • Domain adaptation: gradually shift from source domain XX to target domain YY.
    • Robust training: maintain a mixture for diversity and stability.

Implementation

Below is a simple Python implementation of such a schedule and a sampler that mixes between two datasets.

import math, random
from typing import List, Sequence, Any, Iterator, Tuple

def make_schedule(n_steps: int, start: float = 0.0, end: float = 1.0, kind: str = "linear") -> List[float]:
    """Generate an annealing schedule."""
    if kind == "linear":
        return [start + (end - start) * (t / (n_steps - 1)) for t in range(n_steps)]
    elif kind == "cosine":
        return [
            start + (end - start) * (1 - math.cos(math.pi * t / (n_steps - 1))) / 2
            for t in range(n_steps)
        ]
    else:
        raise ValueError(f"Unknown schedule kind: {kind}")

class MixtureSampler:
    """Probabilistic mixture of two datasets using gamma_t schedule."""
    def __init__(self, X: Sequence[Any], Y: Sequence[Any], schedule: Sequence[float]):
        self.X, self.Y = X, Y
        self.schedule = schedule
        self.rng = random.Random(0)

    def __iter__(self) -> Iterator[Tuple[int, Any]]:
        for t, gamma_t in enumerate(self.schedule):
            if self.rng.random() < gamma_t:
                yield t, self.X[self.rng.randrange(len(self.X))]
            else:
                yield t, self.Y[self.rng.randrange(len(self.Y))]

# Example usage
if __name__ == "__main__":
    X = [("X", i) for i in range(5)]
    Y = [("Y", i) for i in range(5)]
    sched = make_schedule(10, start=0.1, end=0.9, kind="cosine")
    mix = MixtureSampler(X, Y, sched)

    for t, ex in mix:
        print(f"t={t:02d}, gamma={sched[t]:.2f}, sample={ex}")

Original Notes

FigureΒ 1: Original Notes

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