discrete_gaussian.rs 2.2 KB

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  1. use rand::distributions::WeightedIndex;
  2. use rand::prelude::Distribution;
  3. use rand::{rngs::ThreadRng, thread_rng};
  4. use crate::params::*;
  5. use crate::poly::*;
  6. use std::f64::consts::PI;
  7. pub const NUM_WIDTHS: usize = 8;
  8. pub struct DiscreteGaussian {
  9. choices: Vec<i64>,
  10. dist: WeightedIndex<f64>,
  11. rng: ThreadRng,
  12. }
  13. impl DiscreteGaussian {
  14. pub fn init(params: &Params) -> Self {
  15. let max_val = (params.noise_width * (NUM_WIDTHS as f64)).ceil() as i64;
  16. let mut choices = Vec::new();
  17. let mut table = vec![0f64; 0];
  18. for i in -max_val..max_val + 1 {
  19. let p_val = f64::exp(-PI * f64::powi(i as f64, 2) / f64::powi(params.noise_width, 2));
  20. choices.push(i);
  21. table.push(p_val);
  22. }
  23. let dist = WeightedIndex::new(&table).unwrap();
  24. Self {
  25. choices,
  26. dist,
  27. rng: thread_rng(),
  28. }
  29. }
  30. // FIXME: not constant-time
  31. pub fn sample(&mut self) -> i64 {
  32. self.choices[self.dist.sample(&mut self.rng)]
  33. }
  34. pub fn sample_matrix(&mut self, p: &mut PolyMatrixRaw) {
  35. let modulus = p.get_params().modulus;
  36. for r in 0..p.rows {
  37. for c in 0..p.cols {
  38. let poly = p.get_poly_mut(r, c);
  39. for z in 0..poly.len() {
  40. let mut s = self.sample();
  41. s += modulus as i64;
  42. s %= modulus as i64; // FIXME: not constant time
  43. poly[z] = s as u64;
  44. }
  45. }
  46. }
  47. }
  48. }
  49. #[cfg(test)]
  50. mod test {
  51. use super::*;
  52. use crate::util::*;
  53. #[test]
  54. fn dg_seems_okay() {
  55. let params = get_test_params();
  56. let mut dg = DiscreteGaussian::init(&params);
  57. let mut v = Vec::new();
  58. let trials = 10000;
  59. let mut sum = 0;
  60. for _ in 0..trials {
  61. let val = dg.sample();
  62. v.push(val);
  63. sum += val;
  64. }
  65. let mean = sum as f64 / trials as f64;
  66. let std_dev = params.noise_width / f64::sqrt(2f64 * std::f64::consts::PI);
  67. let std_dev_of_mean = std_dev / f64::sqrt(trials as f64);
  68. assert!(f64::abs(mean) < std_dev_of_mean * 5f64);
  69. }
  70. }