Large-Scale Sequential Learning for Recommender and Engineering Systems
- URL: http://arxiv.org/abs/2205.06893v1
- Date: Fri, 13 May 2022 21:09:41 GMT
- Title: Large-Scale Sequential Learning for Recommender and Engineering Systems
- Authors: Aleksandra Burashnikova
- Abstract summary: In this thesis, we focus on the design of an automatic algorithms that provide personalized ranking by adapting to the current conditions.
For the former, we propose novel algorithm called SAROS that take into account both kinds of feedback for learning over the sequence of interactions.
The proposed idea of taking into account the neighbour lines shows statistically significant results in comparison with the initial approach for faults detection in power grid.
- Score: 91.3755431537592
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this thesis, we focus on the design of an automatic algorithms that
provide personalized ranking by adapting to the current conditions. To
demonstrate the empirical efficiency of the proposed approaches we investigate
their applications for decision making in recommender systems and energy
systems domains. For the former, we propose novel algorithm called SAROS that
take into account both kinds of feedback for learning over the sequence of
interactions. The proposed approach consists in minimizing pairwise ranking
loss over blocks constituted by a sequence of non-clicked items followed by the
clicked one for each user. We also explore the influence of long memory on the
accurateness of predictions. SAROS shows highly competitive and promising
results based on quality metrics and also it turn out faster in terms of loss
convergence than stochastic gradient descent and batch classical approaches.
Regarding power systems, we propose an algorithm for faulted lines detection
based on focusing of misclassifications in lines close to the true event
location. The proposed idea of taking into account the neighbour lines shows
statistically significant results in comparison with the initial approach based
on convolutional neural networks for faults detection in power grid.
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