AD Teaching Wiki:

Results for Exercise Sheet 2 (Ranking)

These results should be based on the file movies-benchmark.test.tsv. Click "Edit" in the upper bar of this page and add your row to the table below, following the examples already there. Please write down all values with exactly two digits of precision. In the first column, write your account name.

Name

MP@3

MP@R

MAP

BM25 Parameters

Refinements

np151

0.65

0.51

0.49

b=0.1, k=1

Removed common words and weighted number of ratings logarithmically

sw1169

0.62

0.43

0.43

b=0.1, k=0.75

None (baseline)

pw194

0.70

0.50

0.47

b=0.1, k=0.75

Weighted in popularity through use of combining imdb_score and imdb_ratings as a single bonus score factor

os141

0.56

0.33

0.32

b=0.75, k=1.75

Weighted by IMDB popularity

le123

0.63

0.44

0.44

b=0.1 k=0.6

removed the most common english words from the queries

jk867

0.58

0.44

0.42 

b=0.01 k=0.8

removed most frequent words from the queries

br124

0.62

0.43

0.44

b=0, k=1

removed some common words, adjusted evaluation based on other provided metrics

ts669

0.62

0.42

0.43

b=0, k=0.9

Documents including all words of a query are boosted

lk249

0.58

0.44

0.40

b=0.1, k=0.75

some small words like "with" or "an" are not considered

ab1561

0.62

0.43

0.43

b = 0.1, k =1

Filtered out common filler words and general nonvalue added words

rs476

0.63

0.42

0.39

b = 0.0, k =1.5

Filtered out "movie" words. Gave score boost to long words

jk1308

0.60

0.45

0.43

b = 0.0, k =0.35

Used nltk corpus to remove stopwords

AD Teaching Wiki: InformationRetrievalWS2324/ResultsES2 (last edited 2024-02-14 10:25:58 by 141)