svlandeg
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dd691d0053
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debugging
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2019-05-17 17:44:11 +02:00 |
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svlandeg
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400b19353d
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simplify architecture and larger-scale test runs
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2019-05-17 01:51:18 +02:00 |
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svlandeg
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d51bffe63b
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clean up code
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2019-05-16 18:36:15 +02:00 |
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svlandeg
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b5470f3d75
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various tests, architectures and experiments
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2019-05-16 18:25:34 +02:00 |
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svlandeg
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9ffe5437ae
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calculate gradient for entity encoding
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2019-05-15 02:23:08 +02:00 |
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svlandeg
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2713abc651
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implement loss function using dot product and prob estimate per candidate cluster
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2019-05-14 22:55:56 +02:00 |
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svlandeg
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09ed446b20
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different architecture / settings
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2019-05-14 08:37:52 +02:00 |
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svlandeg
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4142e8dd1b
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train and predict per article (saving time for doc encoding)
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2019-05-13 17:02:34 +02:00 |
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svlandeg
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3b81b00954
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evaluating on dev set during training
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2019-05-13 14:26:04 +02:00 |
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svlandeg
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b6d788064a
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some first experiments with different architectures and metrics
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2019-05-10 12:53:14 +02:00 |
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svlandeg
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9d089c0410
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grouping clusters of instances per doc+mention
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2019-05-09 18:11:49 +02:00 |
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svlandeg
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c6ca8649d7
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first stab at model - not functional yet
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2019-05-09 17:23:19 +02:00 |
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svlandeg
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9f33732b96
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using entity descriptions and article texts as input embedding vectors for training
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2019-05-07 16:03:42 +02:00 |
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