first trial of obilandmark

Former-commit-id: 00a50bdbf407b03dfdc385a848a536559f5966a5
This commit is contained in:
2023-08-25 23:23:23 +02:00
parent 2a11adb346
commit 077f3b5bb5
5 changed files with 388 additions and 0 deletions

176
pkg/obistats/kmeans.go Normal file
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@ -0,0 +1,176 @@
package obistats
import (
"git.metabarcoding.org/lecasofts/go/obitools/pkg/obiutils"
log "github.com/sirupsen/logrus"
"math"
)
// AssignToClass applies the nearest neighbor algorithm to assign data points to classes.
//
// Parameters:
// - data: a 2D slice of float64 representing the data points to be assigned.
// - centers: a 2D slice of float64 representing the center points for each class.
//
// Return:
// - classes: a slice of int representing the assigned class for each data point.
func AssignToClass(data, centers *obiutils.Matrix[float64]) []int {
classes := make([]int, len(*data))
for i, rowData := range *data {
minDist := math.MaxFloat64
for j, centerData := range *centers {
dist := 0.0
for d, val := range rowData {
dist += math.Pow(val-centerData[d], 2)
}
if dist < minDist {
minDist = dist
classes[i] = j
}
}
}
return classes
}
// ComputeCenters calculates the centers of clusters for a given data set.
//
// Parameters:
// - data: a pointer to a matrix of float64 values representing the data set.
// - k: an integer representing the number of clusters.
// - classes: a slice of integers representing the assigned cluster for each data point.
//
// Returns:
// - centers: a pointer to a matrix of float64 values representing the centers of the clusters.
func ComputeCenters(data *obiutils.Matrix[float64], k int, classes []int) *obiutils.Matrix[float64] {
centers := obiutils.Make2DArray[float64](k, len((*data)[0]))
centers.Init(0.0)
ns := make([]int, k)
for i := range ns {
ns[i] = 0
}
for i, row := range *data {
ns[classes[i]]++
for j, val := range row {
centers[classes[i]][j] += val
}
}
for i := range centers {
for j := range centers[i] {
centers[i][j] /= float64(ns[i])
}
}
return &centers
}
// ComputeInertia computes the inertia of the given data and centers.
//
// Parameters:
// - data: A pointer to a Matrix of float64 representing the data.
// - centers: A pointer to a Matrix of float64 representing the centers.
//
// Return type:
// - float64: The computed inertia.
func ComputeInertia(data *obiutils.Matrix[float64], classes []int, centers *obiutils.Matrix[float64]) float64 {
inertia := 0.0
for i, row := range *data {
for j, val := range row {
inertia += math.Pow(val-(*centers)[classes[i]][j], 2)
}
}
return inertia
}
// Kmeans performs the k-means clustering algorithm on the given data.
//
// if centers and *center is not nil, centers is considered as initialized
// and the number of classes (k) is set to the number of rows in centers.
// overwise, the number of classes is defined by the value of k.
//
// Parameters:
// - data: A pointer to a matrix containing the input data.
// - k: An integer representing the number of clusters.
// - centers: A pointer to a matrix representing the initial cluster centers.
//
// Returns:
// - A slice of integers representing the assigned class labels for each data point.
// - A pointer to a matrix representing the final cluster centers.
func Kmeans(data *obiutils.Matrix[float64],
k int,
// Kmeans performs the K-means clustering algorithm on the given data.
//
// if centers and *center is not nil, centers is considered as initialized
// and the number of classes (k) is set to the number of rows in centers.
// overwise, the number of classes is defined by the value of k.
//
// Parameters:
// - data: A pointer to a Matrix[float64] that represents the input data.
// - k: An integer that specifies the number of clusters to create.
// - threshold: A float64 value that determines the convergence threshold.
// - centers: A pointer to a Matrix[float64] that represents the initial cluster centers.
//
// Returns:
// - classes: A slice of integers that assigns each data point to a cluster.
// - centers: A pointer to a Matrix[float64] that contains the final cluster centers.
// - inertia: A float64 value that represents the overall inertia of the clustering.
// - converged: A boolean value indicating whether the algorithm converged.
threshold float64,
centers *obiutils.Matrix[float64]) ([]int, *obiutils.Matrix[float64], float64, bool) {
if centers == nil || *centers == nil {
*centers = obiutils.Make2DArray[float64](k, len((*data)[0]))
center_ids := SampleIntWithoutReplacemant(k, len(*data))
for i, id := range center_ids {
(*centers)[i] = (*data)[id]
}
} else {
k = len(*centers)
}
classes := AssignToClass(data, centers)
centers = ComputeCenters(data, k, classes)
inertia := ComputeInertia(data, classes, centers)
delta := threshold * 100.0
for i := 0; i < 100 && delta > threshold; i++ {
classes = AssignToClass(data, centers)
centers = ComputeCenters(data, k, classes)
newi := ComputeInertia(data, classes, centers)
delta = inertia - newi
inertia = newi
log.Debugf("Inertia: %f, delta: %f", inertia, delta)
}
return classes, centers, inertia, delta < threshold
}
// KmeansBestRepresentative finds the best representative among the data point of each cluster.
//
// It takes a matrix of data points and a matrix of centers as input.
// The best representative is the data point that is closest to the center of the cluster.
// Returns an array of integers containing the index of the best representative for each cluster.
func KmeansBestRepresentative(data *obiutils.Matrix[float64], centers *obiutils.Matrix[float64]) []int {
best_dist_to_centers := make([]float64, len(*centers))
best_representative := make([]int, len(*centers))
for i := range best_dist_to_centers {
best_dist_to_centers[i] = math.MaxFloat64
}
for i, row := range *data {
for j, center := range *centers {
dist := 0.0
for d, val := range row {
dist += math.Pow(val-center[d], 2)
}
if dist < best_dist_to_centers[j] {
best_dist_to_centers[j] = dist
best_representative[j] = i
}
}
}
return best_representative
}

25
pkg/obistats/random.go Normal file
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@ -0,0 +1,25 @@
package obistats
import "math/rand"
func SampleIntWithoutReplacemant(n, max int) []int {
draw := make(map[int]int, n)
for i := 0; i < n; i++ {
y := rand.Intn(max)
x, ok := draw[y]
if ok {
y = x
}
draw[y] = max - 1
max--
}
res := make([]int, 0, n)
for i := range draw {
res = append(res, i)
}
return res
}

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@ -0,0 +1,139 @@
package obilandmark
import (
"math"
"os"
"sort"
"sync"
"git.metabarcoding.org/lecasofts/go/obitools/pkg/obialign"
"git.metabarcoding.org/lecasofts/go/obitools/pkg/obiiter"
"git.metabarcoding.org/lecasofts/go/obitools/pkg/obioptions"
"git.metabarcoding.org/lecasofts/go/obitools/pkg/obiseq"
"git.metabarcoding.org/lecasofts/go/obitools/pkg/obistats"
"git.metabarcoding.org/lecasofts/go/obitools/pkg/obiutils"
"github.com/schollz/progressbar/v3"
log "github.com/sirupsen/logrus"
)
func MapOnLandmarkSequences(library obiseq.BioSequenceSlice, landmark_idx []int, sizes ...int) obiutils.Matrix[float64] {
nworkers := obioptions.CLIParallelWorkers()
if len(sizes) > 0 {
nworkers = sizes[0]
}
library_size := len(library)
n_landmark := len(landmark_idx)
todo := make(chan int, 0)
seqworld := obiutils.Make2DArray[float64](library_size, n_landmark)
pbopt := make([]progressbar.Option, 0, 5)
pbopt = append(pbopt,
progressbar.OptionSetWriter(os.Stderr),
progressbar.OptionSetWidth(15),
progressbar.OptionShowCount(),
progressbar.OptionShowIts(),
progressbar.OptionSetDescription("[Sequence mapping]"),
)
bar := progressbar.NewOptions(library_size, pbopt...)
waiting := sync.WaitGroup{}
waiting.Add(nworkers)
compute_coordinates := func() {
buffer := make([]uint64, 1000)
for i := range todo {
seq := library[i]
coord := seqworld[i]
for j := 0; j < n_landmark; j++ {
landmark := library[landmark_idx[j]]
match, lalign := obialign.FastLCSScore(landmark, seq, -1, &buffer)
coord[j] = float64(lalign - match)
}
bar.Add(1)
}
waiting.Done()
}
for i := 0; i < nworkers; i++ {
go compute_coordinates()
}
for i := 0; i < library_size; i++ {
todo <- i
}
close(todo)
waiting.Wait()
return seqworld
}
func CLISelectLandmarkSequences(iterator obiiter.IBioSequence) obiiter.IBioSequence {
library := iterator.Load()
library_size := len(library)
n_landmark := NCenter()
landmark_idx := obistats.SampleIntWithoutReplacemant(n_landmark, library_size)
log.Infof("Library contains %d sequence", len(library))
var seqworld obiutils.Matrix[float64]
for loop := 0; loop < 5; loop++ {
sort.IntSlice(landmark_idx).Sort()
log.Infof("Selected indices : %v", landmark_idx)
seqworld = MapOnLandmarkSequences(library, landmark_idx)
initialCenters := obiutils.Make2DArray[float64](n_landmark, n_landmark)
for i, seq_idx := range landmark_idx {
initialCenters[i] = seqworld[seq_idx]
}
// classes, centers := obistats.Kmeans(&seqworld, n_landmark, &initialCenters)
_, centers, inertia, converged := obistats.Kmeans(&seqworld, n_landmark, 0.001, &initialCenters)
dist_centers := 0.0
for i := 0; i < n_landmark; i++ {
for j := 0; j < n_landmark; j++ {
dist_centers += math.Pow((*centers)[i][j]-initialCenters[i][j], 2)
}
}
landmark_idx = obistats.KmeansBestRepresentative(&seqworld, centers)
log.Infof("Inertia: %f, Dist centers: %f, converged: %t", inertia, dist_centers, converged)
}
sort.IntSlice(landmark_idx).Sort()
log.Infof("Selected indices : %v", landmark_idx)
seqworld = MapOnLandmarkSequences(library, landmark_idx)
seq_landmark := make(map[int]int, n_landmark)
for i, val := range landmark_idx {
seq_landmark[val] = i
}
initialCenters := obiutils.Make2DArray[float64](n_landmark, n_landmark)
for i, seq_idx := range landmark_idx {
initialCenters[i] = seqworld[seq_idx]
}
classes := obistats.AssignToClass(&seqworld, &initialCenters)
for i, seq := range library {
seq.SetAttribute("landmark_coord", seqworld[i])
seq.SetAttribute("landmark_class", classes[i])
if i, ok := seq_landmark[i]; ok {
seq.SetAttribute("landmark_id", i)
}
}
return obiiter.IBatchOver(library, obioptions.CLIBatchSize())
}

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@ -0,0 +1,29 @@
package obilandmark
import (
"git.metabarcoding.org/lecasofts/go/obitools/pkg/obitools/obiconvert"
"github.com/DavidGamba/go-getoptions"
)
var _nCenter = 200
// ObilandmarkOptionSet sets the options for Obilandmark.
//
// options: a pointer to the getoptions.GetOpt struct.
// Return type: none.
func ObilandmarkOptionSet(options *getoptions.GetOpt) {
options.IntVar(&_nCenter, "center", _nCenter,
options.Alias("n"),
options.Description("Maximum numbers of differences between two variant sequences (default: %d)."))
}
func OptionSet(options *getoptions.GetOpt) {
obiconvert.InputOptionSet(options)
obiconvert.OutputOptionSet(options)
ObilandmarkOptionSet(options)
}
func NCenter() int {
return _nCenter
}

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@ -22,6 +22,17 @@ func Make2DArray[T any](rows, cols int) Matrix[T] {
return matrix
}
// Init initializes the Matrix with the given value.
//
// value: the value to initialize the Matrix elements with.
func (matrix *Matrix[T]) Init(value T) {
data := (*matrix)[0]
data = data[0:cap(data)]
for i := range data {
data[i] = value
}
}
// Row returns the i-th row of the matrix.
//
// Parameters:
@ -38,3 +49,11 @@ func (matrix *Matrix[T]) Column(i int) []T {
}
return r
}
// Dim returns the dimensions of the Matrix.
//
// It takes no parameters.
// It returns two integers: the number of rows and the number of columns.
func (matrix *Matrix[T]) Dim() (int, int) {
return len(*matrix), len((*matrix)[0])
}