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#pragma once
#include "data.h"
namespace NAnalytics {
template <class TSkip, class TX, class TY>
inline TTable Histogram(const TTable& in, TSkip skip,
const TString& xn_out, TX x_in,
const TString& yn_out, TY y_in,
double x1, double x2, double dx)
{
long buckets = (x2 - x1) / dx;
TTable out;
TString yn_sum = yn_out + "_sum";
TString yn_share = yn_out + "_share";
double ysum = 0.0;
out.resize(buckets);
for (size_t i = 0; i < out.size(); i++) {
double lb = x1 + dx*i;
double ub = lb + dx;
out[i].Name = "[" + ToString(lb) + ";" + ToString(ub) + (ub==x2? "]": ")");
out[i][xn_out] = (lb + ub) / 2;
out[i][yn_sum] = 0.0;
}
for (const auto& row : in) {
if (skip(row)) {
continue;
}
double x = x_in(row);
long i = (x - x1) / dx;
if (x == x2) { // Special hack to include right edge
i--;
}
double y = y_in(row);
ysum += y;
if (i >= 0 && i < buckets) {
out[i][yn_sum] = y + out[i].GetOrDefault(yn_sum, 0.0);
}
}
for (TRow& row : out) {
if (ysum != 0.0) {
row[yn_share] = row.GetOrDefault(yn_sum, 0.0) / ysum;
}
}
return out;
}
inline TTable HistogramAll(const TTable& in, const TString& xn, double x1, double x2, double dx)
{
long buckets = (dx == 0.0? 1: (x2 - x1) / dx);
TTable out;
THashMap<TString, double> colSum;
out.resize(buckets);
TSet<TString> cols;
for (auto& row : in) {
for (auto& kv : row) {
cols.insert(kv.first);
}
}
cols.insert("_count");
cols.erase(xn);
for (const TString& col : cols) {
colSum[col] = 0.0;
}
for (size_t i = 0; i < out.size(); i++) {
double lb = x1 + dx*i;
double ub = lb + dx;
TRow& row = out[i];
row.Name = "[" + ToString(lb) + ";" + ToString(ub) + (ub==x2? "]": ")");
row[xn] = (lb + ub) / 2;
for (const TString& col : cols) {
row[col + "_sum"] = 0.0;
}
}
for (const TRow& row_in : in) {
double x;
if (!row_in.Get(xn, x)) {
continue;
}
long i = (dx == 0.0? 0: (x - x1) / dx);
if (x == x2 && dx > 0.0) { // Special hack to include right edge
i--;
}
for (const auto& kv : row_in) {
const TString& yn = kv.first;
if (yn == xn) {
continue;
}
double y;
if (!row_in.Get(yn, y)) {
continue;
}
colSum[yn] += y;
if (i >= 0 && i < buckets) {
out[i][yn + "_cnt"] = out[i].GetOrDefault(yn + "_cnt") + 1;
out[i][yn + "_sum"] = out[i].GetOrDefault(yn + "_sum") + y;
if (out[i].contains(yn + "_min")) {
out[i][yn + "_min"] = Min(y, out[i].GetOrDefault(yn + "_min"));
} else {
out[i][yn + "_min"] = y;
}
if (out[i].contains(yn + "_max")) {
out[i][yn + "_max"] = Max(y, out[i].GetOrDefault(yn + "_max"));
} else {
out[i][yn + "_max"] = y;
}
}
}
colSum["_count"]++;
if (i >= 0 && i < buckets) {
out[i]["_count_sum"] = out[i].GetOrDefault("_count_sum") + 1;
}
}
for (TRow& row : out) {
for (const TString& col : cols) {
double ysum = colSum[col];
if (col != "_count") {
if (row.GetOrDefault(col + "_cnt") != 0.0) {
row[col + "_avg"] = row.GetOrDefault(col + "_sum") / row.GetOrDefault(col + "_cnt");
}
}
if (ysum != 0.0) {
row[col + "_share"] = row.GetOrDefault(col + "_sum") / ysum;
}
}
}
return out;
}
inline TMatrix CovarianceMatrix(const TTable& in)
{
TSet<TString> cols;
for (auto& row : in) {
for (auto& kv : row) {
cols.insert(kv.first);
}
}
struct TAggregate {
size_t Idx = 0;
double Sum = 0;
size_t Count = 0;
double Mean = 0;
};
THashMap<TString, TAggregate> colAggr;
size_t colCount = 0;
for (const TString& col : cols) {
TAggregate& aggr = colAggr[col];
aggr.Idx = colCount++;
}
for (const TRow& row : in) {
for (const auto& kv : row) {
const TString& xn = kv.first;
double x;
if (!row.Get(xn, x)) {
continue;
}
TAggregate& aggr = colAggr[xn];
aggr.Sum += x;
aggr.Count++;
}
}
for (auto& kv : colAggr) {
TAggregate& aggr = kv.second;
aggr.Mean = aggr.Sum / aggr.Count;
}
TMatrix covCount(cols.size(), cols.size());
TMatrix cov(cols.size(), cols.size());
for (const TRow& row : in) {
for (const auto& kv1 : row) {
double x;
if (!row.Get(kv1.first, x)) {
continue;
}
TAggregate& xaggr = colAggr[kv1.first];
for (const auto& kv2 : row) {
double y;
if (!row.Get(kv2.first, y)) {
continue;
}
TAggregate& yaggr = colAggr[kv2.first];
covCount.Cell(xaggr.Idx, yaggr.Idx)++;
cov.Cell(xaggr.Idx, yaggr.Idx) += (x - xaggr.Mean) * (y - yaggr.Mean);
}
}
}
for (size_t idx = 0; idx < cov.size(); idx++) {
cov[idx] /= covCount[idx];
}
return cov;
}
}
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