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%wsj_lengths = load([ 'wsj_lengths.dat']);
%save([ 'wsj_lengths.mat'],'wsj_lengths');
load wsj
load wsj_lengths
figure(1)
clf
hold on
for i = 3:6
b = 10^(i-1)
% plot lines for CRP exact prediction using summation
[logbins predicted dummy] = logbinmean(counts, crppred(counts,b),20,20);
ph = plot(log10(logbins),log10(predicted),'r');
set(ph,'color',[0.7 0.7 0.7],'linewidth',1.5)
% plot lines for CRP Antoniak prediction
[logbins predicted dummy] = logbinmean(counts, antoniakpred(counts,b),20,20);
ph = plot(log10(logbins),log10(predicted),'r');
set(ph,'color',[0.7 0.7 0.7],'linewidth',1.5,'linestyle','--')
% plot lines for CRP Cohn prediction
%[logbins predicted dummy] = logbinmean(counts, cohnpred(counts,b),20,20);
%ph = plot(log10(logbins),log10(predicted),'r');
%set(ph,'color',[0.2 0.2 1],'linewidth',1.5,'linestyle','.')
disp(['Loading results for b = ' num2str(b) ]);
%%% uncomment these lines if .mat file is not yet generated. %%%
%typecountrecord= load([ 'outputs/typecountrecordwsjflat0.0.' num2str(b) '.0.dat']);
%typecountrecordmean = mean(typecountrecord(:,:));
%save([ 'outputs/typecountrecordmeanwsjflat0.0.' num2str(b) '.0.mat'],'typecountrecordmean');
load([ 'outputs/typecountrecordmeanwsjflat0.0.' num2str(b) '.0.mat']);
%plot emprical counts with error bars
[logbins meanval seval] = logbinmean(counts,typecountrecordmean,20,20);
plot(log10(logbins),log10(meanval),'k*');
%errorbar(log10(logbins),log10(meanval),log10(meanval+seval)-log10(meanval),log10(meanval-seval)-log10(meanval),'k.');
disp(['Loading results for b = ' num2str(b) ]);
%%% uncomment these lines if .mat file is not yet generated. %%%
%typecountrecord= load([ 'outputs/typecountrecordwsjpeak0.0.' num2str(b) '.0.dat']);
%typecountrecordmean = mean(typecountrecord(:,:));
%save([ 'outputs/typecountrecordmeanwsjpeak0.0.' num2str(b) '.0.mat'],'typecountrecordmean');
load([ 'outputs/typecountrecordmeanwsjpeak0.0.' num2str(b) '.0.mat']);
%plot emprical counts with error bars
[logbins meanval seval] = logbinmean(counts,typecountrecordmean,20,20);
plot(log10(logbins),log10(meanval),'ko');
%errorbar(log10(logbins),log10(meanval),log10(meanval+seval)-log10(meanval),log10(meanval-seval)-log10(meanval),'ko');
end
set(gca,'xtick',log10([1:10 20:10:100 200:100:1000 2000:1000:5000]))
set(gca,'ytick',log10([.1:.1:1 2:10 20:10:100 200:100:1000 2000:1000:5000]))
set(gca,'xlim',[-0.1 3.5])
set(gca,'ylim',[-1.1 2.5])
set(gca,'FontSize',14)
set(gca,'xticklabel', {'1',' ', ' ', ' ', ' ', ' ', ' ', ' ', ' ', ...
'10',' ', ' ', ' ', ' ', ' ', ' ', ' ', ' ', '100', ...
' ', ' ', ' ', ' ', ' ', ' ', ' ', ' ', '1000', ...
' ', ' ', ' ', ' '});
set(gca,'yticklabel', {'0.1',' ', ' ', ' ', ' ', ' ', ' ', ' ', ' ', ...
'1',' ', ' ', ' ', ' ', ' ', ' ', ' ', ' ', ...
'10',' ', ' ', ' ', ' ', ' ', ' ', ' ', ' ', '100', ...
' ', ' ', ' ', ' ', ' ', ' ', ' ', ' ', '1000', ...
' ', ' ', ' ', ' '});
%title('Chinese restaurant process adaptor')
ylabel('Mean number of lexical entries')
xlabel('Word frequency (n_w)')
legend('Expectation','Antoniak approx.','Empirical, fixed base','Empirical, inferred base','Location','NorthWest')
box on
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