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similarity measure 9.937190000000001E-4
several similarity 9.64773E-4
mwc similarity 9.35829E-4
future work 9.307320000000001E-4
common words 9.27112E-4
recommender systems 9.25527E-4
same movies 9.230379999999999E-4
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past ratings 9.12657E-4
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pearson similarity 9.05082E-4
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natural language 8.80331E-4
domain concepts 8.786779999999999E-4
users 8.75415E-4
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matching words 8.63567E-4
large catalog 8.6241E-4
corrected similarity 8.62248E-4
rating prediction 8.612030000000001E-4
recommendation systems 8.573369999999999E-4
count words 8.544080000000001E-4
heterogenous ratings 8.527739999999999E-4
good rating 8.521010000000001E-4
semantic knowledge 8.492440000000001E-4
key point 8.42969E-4
ommended item 8.374869999999999E-4
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dynamic adaptation 8.25002E-4
semantic level 8.15985E-4
social network 8.14997E-4
mean square 8.077900000000001E-4
absolute error 8.01869E-4
following formula 7.98335E-4
pea figure 7.97491E-4
root mean 7.97475E-4
online experiments 7.97027E-4
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square error 7.889380000000001E-4
qualitative point 7.86111E-4
textual recommendation 7.800540000000001E-4
adaptation mna 7.797710000000001E-4
semantic recommender 7.78313E-4
social net 7.772850000000001E-4
wbs methods 7.714060000000001E-4
algorithm complexity 7.685999999999999E-4
following assumption 7.641659999999999E-4
mendation systems 7.57701E-4
following assump 7.5674E-4
adaptation scheme 7.5197E-4
fast adaptation 7.49718E-4
next section 7.49616E-4
standard vocabularies 7.48327E-4
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innovative way 7.45518E-4
adaptive framework 7.44787E-4
function 7.4349E-4
possible thanks 7.41104E-4
quick adaptation 7.38485E-4
adaptation delay 7.37431E-4
rating predictions 7.32354E-4
recommender engine 7.21178E-4
cabulary set 7.18538E-4
