Algorithmic forecasts outperform human forecasts in many tasks. State-of-the-art machine learning (ML) algorithms have even widened that gap. Since sales forecasting plays a key role in business profitability, ML based sales forecasting can have significant advantages. However, individuals are resistant to use algorithmic forecasts. To overcome this algorithm aversion, explainable AI (XAI), where an explanation interface (XI) provides model predictions and explanations to the user, can help. However, current XAI techniques are incomprehensible for laymen. Despite the economic relevance of sales forecasting, there is no significant research effort towards aiding non-expert users make better decisions using ML forecasting systems by designing...
Modern Artificial Intelligence (AI) models offer high predictive accuracy but often lack interpretab...
Advanced AI models are powerful in making accurate predictions for complex problems. However, these ...
Modern-day firms face the predicament of blending the comparative advantages of their two core resou...
Algorithmic forecasts outperform human forecasts by 10% on average. State-of-the-art machine learnin...
The primary objective of this study was to design and implement a machine learning-based sales forec...
Explainable artificial intelligence is a growing field which is becoming increasingly important as m...
Explainable AI (XAI) holds great potential to reveal the patterns in black-box AI models and to supp...
Technology has enabled usage of different advanced technological applications and has shaped and wil...
At Ahold Delhaize, there is an interest in using more complex machine learning techniques for sales ...
Sales prediction in food market is a complex issue that has been addressed in the recent past with m...
Machine learning (ML) sales forecasting applications occupy a special position in industry and retai...
The advance of Machine Learning (ML) has led to a strong interest in this technology to support deci...
Retail companies, as production systems, must use their resources efficiently and make strategic dec...
Due to expected positive impacts on business, the application of artificial intelligence has been wi...
YesThe rapid rise of many e-commerce platforms for individual consumers has generated a large amount...
Modern Artificial Intelligence (AI) models offer high predictive accuracy but often lack interpretab...
Advanced AI models are powerful in making accurate predictions for complex problems. However, these ...
Modern-day firms face the predicament of blending the comparative advantages of their two core resou...
Algorithmic forecasts outperform human forecasts by 10% on average. State-of-the-art machine learnin...
The primary objective of this study was to design and implement a machine learning-based sales forec...
Explainable artificial intelligence is a growing field which is becoming increasingly important as m...
Explainable AI (XAI) holds great potential to reveal the patterns in black-box AI models and to supp...
Technology has enabled usage of different advanced technological applications and has shaped and wil...
At Ahold Delhaize, there is an interest in using more complex machine learning techniques for sales ...
Sales prediction in food market is a complex issue that has been addressed in the recent past with m...
Machine learning (ML) sales forecasting applications occupy a special position in industry and retai...
The advance of Machine Learning (ML) has led to a strong interest in this technology to support deci...
Retail companies, as production systems, must use their resources efficiently and make strategic dec...
Due to expected positive impacts on business, the application of artificial intelligence has been wi...
YesThe rapid rise of many e-commerce platforms for individual consumers has generated a large amount...
Modern Artificial Intelligence (AI) models offer high predictive accuracy but often lack interpretab...
Advanced AI models are powerful in making accurate predictions for complex problems. However, these ...
Modern-day firms face the predicament of blending the comparative advantages of their two core resou...