TRG-DAtt: The Target Relational Graph and Double Attention Network Based Sentiment Analysis and Prediction for Supporting Decision Making

2022 ◽  
Vol 13 (1) ◽  
pp. 1-25
Author(s):  
Fan Chen ◽  
Jiaoxiong Xia ◽  
Honghao Gao ◽  
Huahu Xu ◽  
Wei Wei

The management of public opinion and the use of big data monitoring to accurately judge and verify all kinds of information are valuable aspects in the enterprise management decision-making process. The sentiment analysis of reviews is a key decision-making tool for e-commerce development. Most existing review sentiment analysis methods involve sequential modeling but do not focus on the semantic relationships. However, Chinese semantics are different from English semantics in terms of the sentence structure. Irrelevant contextual words may be incorrectly identified as cues for sentiment prediction. The influence of the target words in reviews must be considered. Thus, this paper proposes the TRG-DAtt model for sentiment analysis based on target relational graph (TRG) and double attention network (DAtt) to analyze the emotional information to support decision making. First, dependency tree-based TRG is introduced to independently and fully mine the semantic relationships. We redefine and constrain the dependency and use it as the edges to connect the target and context words. Second, we design dependency graph attention network (DGAT) and interactive attention network (IAT) to form the DAtt and obtain the emotional features of the target words and reviews. DGAT models the dependency of the TRG by aggregating the semantic information. Next, the target emotional enhancement features obtained by the DGAT are input to the IAT. The influence of each target word on the review can be obtained through the interaction. Finally, the target emotional enhancement features are weighted by the impact factor to generate the review's emotional features. In this study, extensive experiments were conducted on the car and Meituan review data sets, which contain consumer reviews on cars and stores, respectively. The results demonstrate that the proposed model outperforms the existing models.

2015 ◽  
Vol 49 (3/4) ◽  
pp. 467-490 ◽  
Author(s):  
Karise Hutchinson ◽  
Lisa Victoria Donnell ◽  
Audrey Gilmore ◽  
Andrea Reid

Purpose – The purpose of this paper is to understand how small to medium-sized enterprise (SME) retailers adopt and implement a loyalty card programme as a marketing management decision-making tool. Design/methodology/approach – A qualitative and longitudinal case study research design is adopted. Data were collected from multiple sources, incorporating semi-structured interviews and analysis of company documents and observation within a retail SME. Findings – The findings presented focus on the loyalty card adoption process to reflect both the organisational issues and impact upon marketing management decision-making. Research limitations/implications – This research is restricted to one region within the UK, investigating loyalty card adoption within a specific industry sector. Practical implications – SME retailers operate in an industry environment whereby there is a competitive demand for loyalty card programmes. SME retailers need to carefully consider how to match the firm’s characteristics with customer relationship management (CRM) operational requirements as highlighted in this case. Originality/value – The evidence presented extends current knowledge of retail loyalty card programmes beyond the context of large organisations to encompass SMEs. The study also illustrates the value of a structured, formal CRM system to help SME retailers compete in a complex, competitive and omni-channel marketplace, adding new insights into the retail literature.


Author(s):  
H. Li ◽  
W. Huang ◽  
Z. Zha ◽  
J. Yang

Abstract. With the wide application of Big Data, Artificial Intelligence and Internet of Things in geographic information technology and industry, geospatial big data arises at the historic moment. In addition to the traditional "5V" characteristics of big data, which are Volume, Velocity, Variety, Veracity and Valuable, geospatial big data also has the characteristics of "Location Attribute". At present, the study of geospatial big data are mainly concentrated in: knowledge mining and discovery of geospatial data, Spatiotemporal big data mining, the impact of geospatial big data on visualization, social perception and smart city, geospatial big data services for government decision-making support four aspects. Based on the connotation and extension of geospatial big data, this paper comprehensively defines geospatial big data comprehensively. The application of geospatial big data in location visualization, industrial thematic geographic information comprehensive service and geographic data science and knowledge service is introduced in detail. Furthermore, the key technologies and design indicators of the National Geospatial Big Data Platform are elaborated from the perspectives of infrastructure, functional requirements and non-functional requirements, and the design and application of the National Geospatial Public Service Big Data Platform are illustrated. The challenges and opportunities of geospatial big data are discussed from the perspectives of open resource sharing, management decision support and data security. Finally, the development trend and direction of geospatial big data are summarized and prospected, so as to build a high-quality geospatial big data platform and play a greater role in social public application services and administrative management decision-making.


Author(s):  
Вікторія Костянтинівна Макарович ◽  
Олена Олександрівна Григоревська ◽  
Наталія Степанівна Стойка

The purpose of the article is to develop theoretical provisions and develop guidelines for improving approaches to accounting for risks of exposure to COVID-19 and disclosure of information about them in the reporting of economic entities. In the process of research the methods of observation, comparison, analysis, synthesis, generalization were used. The study is based on the hypothesis that high-quality accounting and information support will increase the validity, efficiency and analytical information about the risks of COVID-19 and their impact on business activities in accordance with modern management requirements, strengthening the responsibility of performers, improving management accounting. The article summarizes the approaches to the impact of uncertainty and risk on the accounting and analytical system of enterprises, which are considered in scientific circles by domestic researchers. The risks of the enterprise’s activity that are relevant in the conditions of the COVID-19 pandemic are highlighted: risks caused by restrictions by legislative and regulatory acts; risks due to the occurrence of obligations related to the production and sale of products, goods, works, services; risks of asset impairment; risks to the recognition and measurement of liabilities; risks of possible bankruptcy; investment risks. to identify risk and assess it, you can use the «triple method». It is established that the accounting and information support of risk management in the conditions of influence of COVID-19 includes: methodical support of risk accounting, analytical support, documentary support; display of information on risks in the reporting, which allowed developing a report on the risks of the impact of COVID-19 on the activities of the enterprise. The obtained results are the basis for bringing the system of accounting and analytical support to a qualitatively new level and will generate useful, truthful and relevant information for enterprise management in decision-making to minimize the impact of risks on business activities through COVID-19.


2012 ◽  
Vol 1 (1) ◽  
pp. 68-72
Author(s):  
Muthuvelayutham C ◽  
Sugantha lakshm T

An Enterprise Resource Planning (ERP) system is composed of a basic transactional system and a management control system. Sammon et al. (2003) describesthese 2 components of ERP systems as the solution to “operational” integration problems and “informational” requirements of managers. Thus, the extreme standardisation of business process inherent in ERP systems creates huge volumes of data without providing a clue for how to exploit it and may therefore not beneficial from a decision-making point of view. In this paper, decision-making theory and models are reviewed, focusing on how an ERP implementation might impact on these constructs. This paper is an analysis about centralisation of decision making in an organisation and its impact on performance at a local level.


2020 ◽  
Vol 73 ◽  
pp. 01006
Author(s):  
Radim Dušek

The aim of the paper is to introduce method which allows to calculate the estimation of the total consumer spending for 2019 in different regions of the Czech Republic. Presented method is based on combination of publicly available consumer spending data sets and geomarketing information. It can be applied to estimate consumer spending in total or for example only in one specific consumption expenditure group. Thus obtained findings, that can be visualized on a map with the use of GIS software, can be considered as a basis for more effective SMEs‘ marketing and management decision-making process concerning Czech Republic local consumer goods markets‘ size and characteristics as well as for forecasting future growth rate.


2015 ◽  
Vol 10 (3) ◽  
pp. 30-34
Author(s):  
Фасхутдинова ◽  
Milyausha Faskhutdinova ◽  
Садриева ◽  
Elvira Sadrieva

This article discusses the essence of the analysis, required for management decision-making in the enterprise. Management analysis is the observation of the dynamics of the internal and external changes, that will respond quickly to changing external and internal factors and adjust the irrelevant goals and strategies, forecast the situation for the future. On the one hand, the management analysis can be a type of economic analysis and, on the other hand, it can be integrated with management accounting and is designed to provide the information needs of administration in the analytical information for management decision-making. The The statement, organization and content of the information of management accounting and analysis is individual for each enterprise, unlike financial accounting and financial analysis.


Author(s):  
Jie Guo ◽  
Dong Wang

With the continuous development of China's economy, the level of science and technology has been improved to a great extent. The advent of the era of Internet and cloud computing has brought a major change to China. However, with the advent of the era of big data, a bigger technological change is coming. The arrival of the era of big data has brought a certain impact on China's enterprise management and decision-making, and put forward higher requirements for China's enterprise management and decision-making. Therefore, enterprises need to constantly strive to improve themselves so as to better adapt to the era of big data. In order to keep pace with the development of The Times, major companies and enterprises need to constantly change their internal management methods in order to achieve sustainable and stable development in their own fields and make their management decisions smoother. Among them, optimization and reform of the application of big data are particularly important. Starting from the characteristics of big data and its role in enterprise management decisions, this paper analyzes the current situation of big data management within enterprises and discusses the influence of big data on enterprise management decisions from five aspects, namely, environment, data, participants, organization and technology. And this paper analyzes the construction method and design idea of enterprise decision support system based on artificial intelligence.


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