AD Teaching Wiki:

Results for Exercise Sheet 2 (Ranking)

These results should be based on the file movies.test-benchmark.tsv. Click "Edit (Text)" 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, or name1+name2 if you work in a group.

Name

MP@3

MP@R

MAP

BM25 Parameters

Refinements

pb1042

0.67

0.67

0.68

b=0.2, k=0.8

None (baseline)

mi81-mk1357

0.83

0.77

0.75

b=0, k=0

queries changed

hc63

0.83

0.74

0.63

b=0, k=0

Query changes

ar479-ss1736

0.83

0.71

0.70

b=0.04, k=0.7

None (baseline)

ew98

0.77

0.71

0.70

b=0.1, k=0.2

Query changes

tl109

0.72

0.69

0.67

b=0.01, k=0.22

Random search for parameters, hardcoded some simple English grammar rules (actually hurt the performance)

lg377

0.78

0.70

0.69

b=0, k=0

Query changes

bw63

0.77

0.70

0.70

b=0, k=0

Trying to interpret context (.01 diffrence :D)

ls720

0.83

0.71

0.69

b=0, k=0.71

None (baseline)

sr463

0.61

0.51

0.5

b=0, k=0

Remove most common words from query - reduced performance

oa49

0.77

0.70

0.69

b=0, k=0

None (baseline)

tb305

0.56

0.37

0.36

b=0, k=1.75

results with words together boosted

mb925

0.77

0.63

0.67

b=0.048, k=0.011

minor query change + nevergrad for b, k

kk486

0.79

0.72

0.7

b=0, k=1

Query change

jm408-ms946

0.77

0.70

0.69

b = k = 0

None (baseline)

ak482

0.77

0.7

0.69

b=1 k=0

None (baseline)

pm187

0.77

0.70

0.69

b=0 k=0

Only optimized b,k on training set. Adding synonyms with nltk to query and/or removing common english words have decreased evaluation performance.

sw540

0.78

0.71

0.69

b=0.56, k=0

pso for optimizing b and k, remove stop words in keywords using a dictionary

ie15

0.83

0.74

0.72

b=0.11, k=0.23

query changes and giving more popular movies a bonus factor

rk268-ss1731

0.5

0.57

0.64

b=0.02, k=0.7

Slight query changes

us58

0.89

0.73

0.72

b=0.05, k=0.65

Removed the keywords "films", "movies", "with" and "for" from the queries.

jo120-tb350

0.83

0.63

0.61

b=k=0

b and k were optimized on training set

mn228

0.83

0.73

0.72

b=0 k=1

tested using multiple values of b and k. Also removed some common stop words

ek247

0.83

0.72

0.71

b=0.1 k=0.85

Removed some unspecific words from queries and added Zipf's law refinement

rt53

0.666

0.662

0.680

b=0.18 k = 0.70

None. Actually turned out better than expected (I expected < 0.5)

ll190

0.78

0.70

0.68

b=0.05, k=0.2

None (baseline)

ds565

0.88

0.753

0.728

b=0 k=0

modified queries

hd103-sa285

0.89

0.75

0.72

b=0.04, k=0.7

Made changes in the queries.

rr186

0.78

0.70

0.68

b=0, k=0.01

None (baseline)

am802-jb978

0.78

0.66

0.68

b=0.1, k=0.1

Used BM25+ and played around with b, k on the training set

sb655

0.89

0.72

0.71

b=0.1, k=0.8

Removed some keywords from queries.

js1662-kp152

0.94

0.75

0.72

b=0.0, k=1

Changed the queries and also used optimal b and k values as derived from training benchmark.

al453

0.88

0.52

0.49

b=0.41, k=0.31

None (baseline)

pr218

0.56

0.45

0.48

b=0.3, k=0.5

Made changes in the Queries.

fm213

0.78

0.70

0.68

b=0, k=0.4

None (baseline)

mr427

0.78

0.71

0.77

b=0.0, k=0.0

None (baseline)

ha86-kb368

0.83

0.71

0.71

b=0.0, k=0.0

modified queries

mr716

0.77

0.70

0.61

b=0, k=0

Removes some stop words

mk1243

0.72

0.71

0.70

b=0.0, k=0.0

None (baseline)

ma441

0.78

0.60

0.65

b=0.0, k=0.0

Removed stopwords in query and gave more importance to movies occurrence order in movies2.txt

hg132

0.77

0.71

0.63

b=0.0, k=0.0

Using Stem words to optimize the search results

ba102

0.83

0.68

0.69

b=0.1, k=0.1

Changed all occurrences of 'films' to 'film'

AD Teaching Wiki: InformationRetrievalWS1920/ResultsES2 (last edited 2021-11-05 11:27:56 by 141)