Search Results for author: Pablo Loyola

Found 10 papers, 2 papers with code

Exploring 360-Degree View of Customers for Lookalike Modeling

no code implementations17 Apr 2023 Md Mostafizur Rahman, Daisuke Kikuta, Satyen Abrol, Yu Hirate, Toyotaro Suzumura, Pablo Loyola, Takuma Ebisu, Manoj Kondapaka

Lookalike models are based on the assumption that user similarity plays an important role towards product selling and enhancing the existing advertising campaigns from a very large user base.

Towards Federated Graph Learning for Collaborative Financial Crimes Detection

no code implementations19 Sep 2019 Toyotaro Suzumura, Yi Zhou, Natahalie Baracaldo, Guangnan Ye, Keith Houck, Ryo Kawahara, Ali Anwar, Lucia Larise Stavarache, Yuji Watanabe, Pablo Loyola, Daniel Klyashtorny, Heiko Ludwig, Kumar Bhaskaran

Advances in technology used in this domain, including machine learning based approaches, can improve upon the effectiveness of financial institutions' existing processes, however, a key challenge that most financial institutions continue to face is that they address financial crimes in isolation without any insight from other firms.

Federated Learning Graph Learning

An Edit-centric Approach for Wikipedia Article Quality Assessment

no code implementations WS 2019 Edison Marrese-Taylor, Pablo Loyola, Yutaka Matsuo

We propose an edit-centric approach to assess Wikipedia article quality as a complementary alternative to current full document-based techniques.

Content Aware Source Code Change Description Generation

no code implementations WS 2018 Pablo Loyola, Edison Marrese-Taylor, Jorge Balazs, Yutaka Matsuo, Fumiko Satoh

We propose to study the generation of descriptions from source code changes by integrating the messages included on code commits and the intra-code documentation inside the source in the form of docstrings.

Machine Translation Text Generation

A Neural Architecture for Generating Natural Language Descriptions from Source Code Changes

1 code implementation ACL 2017 Pablo Loyola, Edison Marrese-Taylor, Yutaka Matsuo

We propose a model to automatically describe changes introduced in the source code of a program using natural language.

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