TinyBlack
Oct 15, 2020(5y)
Oct 15, 2026(140d)
Combat
Kills113
Losses22
Efficiency84%
ISK
Destroyed86.01b
Lost19.90b
ISK Eff.81%
Solo
Solo Kills0
Solo Ratio0%
Final Blows13
Points113
Other
NPC Losses1
NPC Loss Ratio5%
Avg Kills/Day0.06
ActivityInactive
TinyBlack
Birthday
Oct 15, 2020 (5 years old)
Next Birthday
Oct 15, 2026 (140 days)
Combat
Kills113
Losses22
Efficiency84%
Danger Ratio95%
ISK
Destroyed86.01b
Lost19.90b
ISK Efficiency81%
Balance+66.11b
Solo
Solo Kills0
Solo Ratio0%
Final Blows13
Points113
Other
NPC Losses1
NPC Loss Ratio5%
Avg Kills/Day0.06
ActivityInactive
No data available
Bio
Generalized linear models with nonlinear feature transformations are widely used for large-scale regression and classification problems with sparse inputs. Memorization of feature interactions through a wide set of cross-product feature
transformations are effective and interpretable, while generalization requires more feature engineering effort. With less
feature engineering, deep neural networks can generalize better to unseen feature combinations through low-dimensional
dense embeddings learned for the sparse features. However,
deep neural networks with embeddings can over-generalize
and recommend less relevant items when the user-item interactions are sparse and high-rank. In this paper, we present
Wide & Deep learning—jointly trained wide linear models
and deep neural networks—to combine the benefits of memorization and generalization for recommender systems. We
productionized and evaluated the system on Google Play,
a commercial mobile app store with over one billion active
users and over one million apps. Online experiment results
show that Wide & Deep significantly increased app acquisitions compared with wide-only and deep-only models. We
have also open-sourced our implementation in TensorFlow.
transformations are effective and interpretable, while generalization requires more feature engineering effort. With less
feature engineering, deep neural networks can generalize better to unseen feature combinations through low-dimensional
dense embeddings learned for the sparse features. However,
deep neural networks with embeddings can over-generalize
and recommend less relevant items when the user-item interactions are sparse and high-rank. In this paper, we present
Wide & Deep learning—jointly trained wide linear models
and deep neural networks—to combine the benefits of memorization and generalization for recommender systems. We
productionized and evaluated the system on Google Play,
a commercial mobile app store with over one billion active
users and over one million apps. Online experiment results
show that Wide & Deep significantly increased app acquisitions compared with wide-only and deep-only models. We
have also open-sourced our implementation in TensorFlow.
Dashboard
Stats
Kills0
Losses0
Efficiency0%
ISK Destroyed0
ISK Lost0
ISK Efficiency0%
Solo Kills0
Solo Losses0
NPC Losses0
Blob Factor0
Active TimezoneUSTZ
Final Blows0
Points0
Activity Heat Map (EVE Time)
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Intel Profile
PlaystyleSolo (0 kills)
Avg Fleet: -