Predicting the Intention to Adopt Innovation in Supply Chain Finance

Author:

Figueiredo Ronnie1ORCID,Camargo Maria Emilia2,Ferreira João J.3ORCID,Zhang Justin Zuopeng4ORCID,Liu Yulong David5ORCID

Affiliation:

1. Centre of Applied Research in Management and Economics (CARME), School of Technology and Management (ESTG), Polytechnic of Leiria, Leiria & Research Center in Business Sciences, NECE (UBI), Covilhã, Portugal

2. Federal University of Santa Maria, Santa Maria, Brazil

3. Universidade da Beira Interior & NECE - Research Center in Business Sciences, Covilhã, Portugal & QUT ACER – Australian Centre for Entrepreneurship Research, Brisbane, Australia

4. University of North Florida, USA

5. Massey University, New Zealand

Abstract

Based on the mixed model unified technology acceptance and utilization theory (UTAUT) and spinner innovation model (SPINNER), a theoretical model is suggested to explain the determinant of behavioral intention to predict innovation in the context of a financial sector firm. A questionnaire was developed to collect primary data, which was subsequently processed through the artificial intelligence technique (deep learning). The constructs (performance expectancy, effort expectancy, social influence, facilitating conditions, behavioral intention, public knowledge, private knowledge, and innovation) supported the model, including mediating hypotheses. It was observed that the mixed methodological approach (SEM and ANN) can help to find the linear and non-linear relationships better, being that the error of the predicted model is 0.104, that is, 10.4% relatively low, which evidences that ANN can be used to predict the dependent variable innovation safely.

Publisher

IGI Global

Subject

Strategy and Management,Computer Science Applications,Human-Computer Interaction

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