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Publications

Publications by HumanISE

2022

O MÉTODO CARTOGRÁFICO DE PESQUISA INTERVENÇÃO E O MÉTODO SCRUM: UMA APROXIMAÇÃO POSSÍVEL NO DESENVOLVIMENTO DE SOFTWARE?

Authors
Lehnemann, RM; Coelho, AAB; Schlemmer, E;

Publication
O HABITAR DO ENSINAR E DO APRENDER: Desafios para/na/da Educação OnLIFE

Abstract

2022

PROJETOS DE APRENDIZAGEM GAMIFICADOS EM ESCOLAS MUNICIPAIS DE ENSINO FUNDAMENTAL NA CIDADE DE SÃO LEOPOLDO

Authors
Berlezi, E; Bartelle, LB; Guedes, AL; Schlemmer, E;

Publication
O HABITAR DO ENSINAR E DO APRENDER: Desafios para/na/da Educação OnLIFE

Abstract

2022

COnectaKaT: UMA REDE EM PROCESSO DE COCRIAÇÃO DE VIVÊNCIAS DE EDUCAÇÃO OnLIFE CIDADÃ

Authors
Schuster, BE; Rosa, GSd; Schlemmer, E;

Publication
O HABITAR DO ENSINAR E DO APRENDER: Desafios para/na/da Educação OnLIFE

Abstract

2022

EDUCAÇÃO OnLIFE: DESAFIOS CONTEMPORÂNEOS

Authors
Schlemmer, E; Backes, L; Palagi, AMM; Guedes, AL;

Publication
O HABITAR DO ENSINAR E DO APRENDER: Desafios para/na/da Educação OnLIFE

Abstract

2022

O HABITAR DO ENSINAR E DO APRENDER: Desafios para/na/da Educação OnLIFE

Authors
Schlemmer, E;

Publication

Abstract

2022

Leveraging email marketing: Using the subject line to anticipate the open rate

Authors
Paulo, M; Migueis, VL; Pereira, I;

Publication
EXPERT SYSTEMS WITH APPLICATIONS

Abstract
Despite being one of the most cost-effective methods, email marketing remains challenging due to the low rate of opened emails and the high percentage of unsubscribed campaigns. Since the sender and the subject line are the only information that the recipient sees at first when receiving an email, the decision to open an email critically depends on these two factors, which should stand out and catch the recipient's attention. Therefore, the motivation behind this study is to support email campaign editors in choosing a subject line based on its potential quality. We propose and compare several models to measure the quality of a subject line, considering its potential to promote the email opening. The subject lines' structure and content are explored together with different machine learning techniques (Random Forest, Decision Trees, Neural Networks, Naive Bayes, Support Vector Machines, and Gradient Boosting). To validate the proposed model, a data set of 140,000 emails' subject lines was used. The results revealed that the models proposed are very promising to support the definition of the email marketing subject lines and show that the combination of data regarding the structure, the content of the subject lines, and senders characteristics leads to more accurate classifications of the potential of the subject line.

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