This paper investigates the ability of neural network models to predict the post-merger performance of mergers and acquisitions (M&As) in US banking industry. As we known, this is probably the first empirical study applying neural networks in this topic. The aim is to offer an alternative tool for making M&A decision from the view of potential synergy effect and improve the rate of success on M&As deals. This study first provides a detailed discuss from synergy effect and strategic fit. It then develops and compares the forecasting performance of regression and neural network models. The results show that the ability of neural network models to catch nonlinear relationships and complex interactions between amounts of data and factors is pot...
The efficiency of a market has been a longstanding topic for research. On one side, researchers have...
Merger and acquisitions (M&A) are important business activities in economic markets. The purpose of ...
This study attempts to contribute to a handful of research on the impact of strategic relatedness on...
This paper investigates the ability of neural network models to predict the post-merger performance ...
This paper is designed to investigate why previous researches fail to detect the synergies and benef...
Cataloged from PDF version of article.A merger proposal discloses a bidder firm's desire to purchase...
This article deals with the usefulness of neuronal networks in the area of corporate finance. Firstl...
This study investigates the impacts of mergers and acquisitions (M&As) on banks’ performance. The fo...
Artificial neural networks are a robust, effective complement to traditional statistical methods in ...
This Paper introduces a neural-net approach to perform discriminant analysis in business research. A...
The purpose of this study is to examine the relationship between realised performance gains and shor...
Due to a number of weaknesses of the mathematical models found in use in the banking industry, the a...
This paper considers whether neural networks might be used to analyse firm activity and the evolutio...
University spin-outs (USOs), creating businesses from university intellectual property, are a relati...
In recent years, merger and acquisition activities have rapidly increased among financial institutio...
The efficiency of a market has been a longstanding topic for research. On one side, researchers have...
Merger and acquisitions (M&A) are important business activities in economic markets. The purpose of ...
This study attempts to contribute to a handful of research on the impact of strategic relatedness on...
This paper investigates the ability of neural network models to predict the post-merger performance ...
This paper is designed to investigate why previous researches fail to detect the synergies and benef...
Cataloged from PDF version of article.A merger proposal discloses a bidder firm's desire to purchase...
This article deals with the usefulness of neuronal networks in the area of corporate finance. Firstl...
This study investigates the impacts of mergers and acquisitions (M&As) on banks’ performance. The fo...
Artificial neural networks are a robust, effective complement to traditional statistical methods in ...
This Paper introduces a neural-net approach to perform discriminant analysis in business research. A...
The purpose of this study is to examine the relationship between realised performance gains and shor...
Due to a number of weaknesses of the mathematical models found in use in the banking industry, the a...
This paper considers whether neural networks might be used to analyse firm activity and the evolutio...
University spin-outs (USOs), creating businesses from university intellectual property, are a relati...
In recent years, merger and acquisition activities have rapidly increased among financial institutio...
The efficiency of a market has been a longstanding topic for research. On one side, researchers have...
Merger and acquisitions (M&A) are important business activities in economic markets. The purpose of ...
This study attempts to contribute to a handful of research on the impact of strategic relatedness on...