Javascript must be enabled to continue!
AI-powered investment recommendations in the agri-food sector
View through CrossRef
Purpose
This study aims to develop an intelligent, personalized investment recommender system for the agri-food sector by integrating adaptive neuro-fuzzy inference system (ANFIS) with behavioral finance. It focuses on aligning farmers’ financial management traits (FFMT) with suitable agricultural technology (agri-tech) investments, particularly drone technology. The system provides tailored guidance to enhance farmers’ financial decision-making and supports artificial intelligence (AI)-driven food marketing strategies.
Design/methodology/approach
This study applies a hybrid methodology that integrates fuzzy logic with machine learning. The dataset originates from an online investment questionnaire conducted in Hungary in 2019 (n = 1,542), made available to the authors under the framework of the 1.3.1-VKE-2018–00,007 project. Data were analyzed using JMP (K-means clustering) and MATLAB (for ANFIS modeling). Six financial management traits (FMTs) served as input variables, while investment types were used as outputs to define recommendation classes. After preprocessing, 79 valid input–output pairs were obtained for ANFIS, with 55 allocated for training and 24 for testing.
Findings
The K-means algorithm grouped investment options into three clusters: Cluster 1 (n = 592, 38.4%, cautious traditionalists), Cluster 2 (n = 610, 39.6%, passive moderates) and Cluster 3 (n = 340, 22.0%, active aggressive). The model generated personalized recommendations based on inputs such as safety perception, excess cash use and saving strategies. Among farmer participants (5.1% of the sample), 56.25% were male and 43.75% female, with 50% residing in Budapest. The FFMT–ANFIS model achieved robust performance on the training set (Root mean square error (RMSE) = 0.78) with ten-fold cross-validation (mean RMSE = 0.80, SD = 0.05). On the held-out test set, the model achieved an RMSE of 0.79 and an R2 of 0.875. After preprocessing and generating 729 fuzzy rules, the model’s effectiveness in producing accurate, behavior-driven recommendations was confirmed.
Research limitations/implications
The study is limited to self-reported behavioral data from Hungarian respondents and focused on drone investment scenarios. The relatively small share of farmers in the sample (5.1%) also limits external validity, which future research should address through stratified or field-based sampling. Broader validation across geographies and agri-tech domains is recommended. Future work should integrate real-time financial behavior and market responsiveness to increase system adaptability and generalizability.
Practical implications
This is the first study to integrate FMTs and ANFIS for investment decision support in the agri-food domain. It bridges gaps between behavioral finance, AI and food marketing, offering a replicable framework for behavior-driven agri-tech adoption. The model contributes to smart, data-informed and inclusive agricultural investment ecosystems.
Social implications
By promoting personalized investment literacy and tech adoption among farmers, this model fosters digital inclusion and supports sustainable food systems. It enables better access to decision-making tools, particularly for smallholders, reducing inequality and enhancing trust in AI systems used in agricultural finance and marketing.
Originality/value
This study presents a novel framework that integrates financial management traits (FMTs) and ANFIS for investment decision support in the agri-food domain. Although the previous research has explored similar adaptive and fuzzy-logic-based recommender systems in financial and agricultural settings, this research introduces an integrated FFMT–ANFIS framework tailored for investment decision support in the agri-food sector. It bridges gaps between behavioral finance, AI and food marketing, offering a replicable framework for behavior-driven agri-tech adoption. The model contributes to smart, data-informed and inclusive agricultural investment ecosystems.
Title: AI-powered investment recommendations in the agri-food sector
Description:
Purpose
This study aims to develop an intelligent, personalized investment recommender system for the agri-food sector by integrating adaptive neuro-fuzzy inference system (ANFIS) with behavioral finance.
It focuses on aligning farmers’ financial management traits (FFMT) with suitable agricultural technology (agri-tech) investments, particularly drone technology.
The system provides tailored guidance to enhance farmers’ financial decision-making and supports artificial intelligence (AI)-driven food marketing strategies.
Design/methodology/approach
This study applies a hybrid methodology that integrates fuzzy logic with machine learning.
The dataset originates from an online investment questionnaire conducted in Hungary in 2019 (n = 1,542), made available to the authors under the framework of the 1.
3.
1-VKE-2018–00,007 project.
Data were analyzed using JMP (K-means clustering) and MATLAB (for ANFIS modeling).
Six financial management traits (FMTs) served as input variables, while investment types were used as outputs to define recommendation classes.
After preprocessing, 79 valid input–output pairs were obtained for ANFIS, with 55 allocated for training and 24 for testing.
Findings
The K-means algorithm grouped investment options into three clusters: Cluster 1 (n = 592, 38.
4%, cautious traditionalists), Cluster 2 (n = 610, 39.
6%, passive moderates) and Cluster 3 (n = 340, 22.
0%, active aggressive).
The model generated personalized recommendations based on inputs such as safety perception, excess cash use and saving strategies.
Among farmer participants (5.
1% of the sample), 56.
25% were male and 43.
75% female, with 50% residing in Budapest.
The FFMT–ANFIS model achieved robust performance on the training set (Root mean square error (RMSE) = 0.
78) with ten-fold cross-validation (mean RMSE = 0.
80, SD = 0.
05).
On the held-out test set, the model achieved an RMSE of 0.
79 and an R2 of 0.
875.
After preprocessing and generating 729 fuzzy rules, the model’s effectiveness in producing accurate, behavior-driven recommendations was confirmed.
Research limitations/implications
The study is limited to self-reported behavioral data from Hungarian respondents and focused on drone investment scenarios.
The relatively small share of farmers in the sample (5.
1%) also limits external validity, which future research should address through stratified or field-based sampling.
Broader validation across geographies and agri-tech domains is recommended.
Future work should integrate real-time financial behavior and market responsiveness to increase system adaptability and generalizability.
Practical implications
This is the first study to integrate FMTs and ANFIS for investment decision support in the agri-food domain.
It bridges gaps between behavioral finance, AI and food marketing, offering a replicable framework for behavior-driven agri-tech adoption.
The model contributes to smart, data-informed and inclusive agricultural investment ecosystems.
Social implications
By promoting personalized investment literacy and tech adoption among farmers, this model fosters digital inclusion and supports sustainable food systems.
It enables better access to decision-making tools, particularly for smallholders, reducing inequality and enhancing trust in AI systems used in agricultural finance and marketing.
Originality/value
This study presents a novel framework that integrates financial management traits (FMTs) and ANFIS for investment decision support in the agri-food domain.
Although the previous research has explored similar adaptive and fuzzy-logic-based recommender systems in financial and agricultural settings, this research introduces an integrated FFMT–ANFIS framework tailored for investment decision support in the agri-food sector.
It bridges gaps between behavioral finance, AI and food marketing, offering a replicable framework for behavior-driven agri-tech adoption.
The model contributes to smart, data-informed and inclusive agricultural investment ecosystems.
Related Results
Funding patterns and financial viability of agricultural startups under the RKVY-RAFTAAR scheme in the states of Andhra Pradesh and Telangana, India
Funding patterns and financial viability of agricultural startups under the RKVY-RAFTAAR scheme in the states of Andhra Pradesh and Telangana, India
The emergence of agri-startups in India has reshaped agricultural entrepreneurship by addressing inefficiencies in supply chains, input distribution and technology adoption. Howeve...
Investing: The Concept and Classification of Schemes with Legal Significance
Investing: The Concept and Classification of Schemes with Legal Significance
Introduction: the theme of investment and investing invisibly but tangibly accompanies a person in modern life. The desire to increase their funds is becoming an urgent need of the...
ACTUAL ISSUES OF ASSESSMENT OF THE INVESTMENT ENVIRONMENT
ACTUAL ISSUES OF ASSESSMENT OF THE INVESTMENT ENVIRONMENT
One of the most important factors of the sustainable and safe development of the national economy is the availability of investment resources in the economy, the establishment of a...
Cash‐based approaches in humanitarian emergencies: a systematic review
Cash‐based approaches in humanitarian emergencies: a systematic review
This Campbell systematic review examines the effectiveness, efficiency and implementation of cash transfers in humanitarian settings. The review summarises evidence from five studi...
British Food Journal Volume 53 Issue 9 1951
British Food Journal Volume 53 Issue 9 1951
In a recent edition of the Ministry's Bulletin, Mr. F. T. Willey, M.P., Parliamentary Secretary to the Ministry of Food, urged that the utmost effort should be made by local author...
Capacity of Ontario municipal planning departments to support local and regional agri- food systems
Capacity of Ontario municipal planning departments to support local and regional agri- food systems
Municipalities play an important role in supporting and facilitating agri-food system growth that is economically sound, environmentally sustainable, and aligned with provincial pr...
Food hygiene and safety practices of food vendors at a University of Technology in Durban
Food hygiene and safety practices of food vendors at a University of Technology in Durban
Introduction: Food vending is becoming a very important and a useful service. Moreover, socioeconomic factors and lifestyle changes forces customers to buy food from street vendors...
Sistemas agroalimentarios sostenibles en América Latina y el Caribe
Sistemas agroalimentarios sostenibles en América Latina y el Caribe
One of the critical issues in economic development is understanding the relationship between hunger, food, and the management of agri-food systems to advance towards more just, equ...

