Comments (2)
Another Comparison with SCALING_SCALE 50
Iter 117
... (same with above)
SCALING_SCALE 50
word allocation 1347/516/735
Path 2 1 1 1 1 1
Final Scaore and Sampling Results:
Score 24579
ETA 0.7133 1.459 1.4565
GEM 0.595 8.466
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Experiment with SCALING_SHAPE 0.2
ETA 0.2 2.5 0.5
SAMPLE ETA 1
SAMPLE GEM 1
SAMPLE_SHAPE 1.0
SAMPLE_SCALE 50
word allocation 1458/463/677
Path 2 1 1 1 1 1 1
Final Score and Sampling Results:
Score -2145
ETA 0.69 1.445 1.457
GEM 0.568 4.238
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Related Issues (9)
- Same GEM_MEAN and GEM_SCALE settings with different other parameters. HOT 1
- Relation between GEM_MEAN, GEM_SCALE and mode.levels file
- How ETA and GEM parameters influenced the Word allocation and mode.levels files
- Experiment with Differ Pi for word allocation.
- Sampling with Differ Initial values HOT 4
- ETA influence on topic numbers and doc_no, word_no in every level.
- Experiment with Differ Gamma HOT 5
- Experiment with GEM
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