I would like to draw a histogram that explains how the data is distributed. My problem is that most of the data have very small values. Hence, if you use 10 bins, it won't be so descriptive; most of the data squeeze in 0.0-0.1 bin. If you use 1000 bins, then histogram does not look good because of the xlabels and some bins overlap the others since we have too much bins.
I tried to use such as log-scale, normalized version as well but still I couldn't get an informative histogram. I have already calculated the (1000) bins and the counts. The code for reading the data is below. You can run it:
./sub-histogram.py hist-data.txt 2500 0. 0 means you use the raw counts (first line). The last line contains the bin values.
First idea is to merge counts and bins with some threshold. If the counts smaller than some threshold, accumulate this count and skip this bin. I don't have any further idea right now, but I am sure that if you use histogram you've come across this issue. Is there any solution for such cases? Data and everything is here.
import sys from itertools import izip import matplotlib.pyplot as plt import numpy as np lines = open(sys.argv).readlines() threshold = float(sys.argv) count_type = int(sys.argv) # 0 for raw counts, 1 for normalized counts, 2 for log counts # reading C = map(float, lines[count_type][1:-2].replace(",", "").split()) B = map(float, lines[1:-2].replace(",", '').split()) # merging method. # accumulate the counts with respect to threshold. counts =  bins =  ct = 0 for c, b in izip(C,B): ct += c if ct >= threshold: counts.append(ct) bins.append(b) ct = 0 if ct > 0: counts.append(ct) bins.append(b) ct = 0 print counts print bins bar_width= 0.005 plt.xticks(np.linspace(0,2,41)) plt.bar(bins, counts, bar_width) plt.show()