attribute type
Recently Published Documents


TOTAL DOCUMENTS

24
(FIVE YEARS 9)

H-INDEX

5
(FIVE YEARS 0)

2021 ◽  
Vol ahead-of-print (ahead-of-print) ◽  
Author(s):  
Kenneth Eunhan Kim

Purpose This study aims to examine how the relative importance of a search versus a credence attribute, strategically addressed in a flu vaccination advertisement, varies as a function of message sidedness. A search attribute was designed to highlight the affordability of flu shots, and a credence attribute addressed the potential health benefits of flu vaccination. Design/methodology/approach Two experiments were designed to explore how the relative persuasiveness of search versus credence attributes varies as a function of message sidedness in the context of flu vaccination advertising. In Experiment 1, the search–credence attribute type was manipulated by addressing either the affordability (e.g. “Get free flu shots”) or indirect health benefits of flu vaccines (e.g. “Improve herd immunity/community health”). In Experiment 2, an individual-level credence attribute (e.g. “Strengthen your immune system”) was created and compared to the other two attribute conditions used in Experiment 1: a search versus a societal credence versus an individual credence attribute. Findings Experiment 1 (N = 114) revealed the relative advantage of a search attribute (free flu shots) in the two-sided persuasion. Experiment 2 (N = 193) indicated that the persuasive impact of a societal credence attribute (herd immunity/community health) was greater in the two-sided message condition (vs one-sided message condition). Originality/value Relatively little research has examined how consumers respond to strategic flu prevention and vaccination messages promoting either credence or search attributes. Motivated by the need to investigate the relative effectiveness of stressing “herd immunity” versus “free flu shots” in flu vaccination advertising, this study examines how the effects of these distinct attributes on flu vaccination judgments differ between two-sided (e.g. “No vaccine is 100% effective”) and one-sided persuasion.


2021 ◽  
Vol 4 (2) ◽  
pp. 14
Author(s):  
Raka Adji Setiawan ◽  
Fauziah Fauziah ◽  
Ratih Titi Komala Sari

This study aims to compare the selection of private homeschool teachers using the Simple Additive Weighting (SAW) and Weight Product (WP) algorithms, the criteria that have been taken by the author to calculate their weight in selecting private teachers who excel and provide convenience with an assessment based on criteria. In this effort, the authors can build a private teacher selection system with the Simple Additive Weighting (SAW) algorithm to find the total weights of the teacher performance rating for each alternative on all attributes and compare it to the Weight Product (WP) algorithm using the multiplication technique to link the attribute rating. where the attribute type rating must be ranked first with the associated weight attribute. From the results of this study, the authors have described how the design and application of SAW and WP in making a Decision Support System in selecting private homeschooling teachers.Keywords:Simple Additive Weighting (SAW), Weight Product (WP), Decision Support Systems, Teacher Selection, Homeschooling.


2020 ◽  
Vol 24 (6) ◽  
pp. 1403-1439
Author(s):  
Marvin Meeng ◽  
Harm de Vries ◽  
Peter Flach ◽  
Siegfried Nijssen ◽  
Arno Knobbe

Subgroup Discovery is a supervised, exploratory data mining paradigm that aims to identify subsets of a dataset that show interesting behaviour with respect to some designated target attribute. The way in which such distributional differences are quantified varies with the target attribute type. This work concerns continuous targets, which are important in many practical applications. For such targets, differences are often quantified using z-score and similar measures that compare simple statistics such as the mean and variance of the subset and the data. However, most distributions are not fully determined by their mean and variance alone. As a result, measures of distributional difference solely based on such simple statistics will miss potentially interesting subgroups. This work proposes methods to recognise distributional differences in a much broader sense. To this end, density estimation is performed using histogram and kernel density estimation techniques. In the spirit of Exceptional Model Mining, the proposed methods are extended to deal with multiple continuous target attributes, such that comparisons are not restricted to univariate distributions, but are available for joint distributions of any dimensionality. The methods can be incorporated easily into existing Subgroup Discovery frameworks, so no new frameworks are developed.


2020 ◽  
Vol 18 (4) ◽  
pp. 17-30
Author(s):  
Luis Naito Mendes Bezerra ◽  
Márcia Terra Silva

In the current context of distance learning, learning management systems (LMSs) make it possible to store large volumes of data on web browsing and completed assignments. To understand student behavior patterns in this type of environment, educators and managers must rethink conventional approaches to the analysis of these data and use appropriate computational solutions, such as educational data mining (EDM). Previous studies have tested the application of EDM on small datasets. The main contribution of the present study is the application of EDM algorithms and the analysis of the results in a massive course delivered by a Brazilian University to 181,677 undergraduate students enrolled in different fields. The use of key algorithms in educational contexts, such as decision trees and clustering, can reveal relevant knowledge, including the attribute type that most significantly contributes to passing a course and the behavior patterns of groups of students who fail.


Author(s):  
Sergey Andreyev

The article studies the degree of description nominality in fiction based on the usage of the two most frequent attributes: adjectival and nominal ones. The former are adnominals, expressed by adjectives or adjectival phrases (adjectives with dependent words), the latter are of-N constructions (in English texts) and genitive case of nouns (in Russian texts). The data-base includes extracts from highly popular English and Russian women authors: R. Galbraith, S. Kinsella, A. Marinina and T. Ustinova.The research is based on a quantitative analysis of data with the use of a number of statistical measures. The Busemann coefficient is used to study the relationship of adjectival and nominal attributes and the power function is necessary for fitting the distribution of distances of attributes counted within separate sentences.The analysis has demonstrated that the frequency of adjectival attributes as expected exceeds that of nominal attributes. However, the relationship of these types of attributes is highly different for the abovementioned authors. The results have proved that there is no difference in the proportion of these two attribute types between English and Russian texts whereas this feature distinguishes the styles of R.Galbraith and A. Marinina on the one hand, and S. Kinsella and T. Ustinova on the other hand.The research of the distance dynamics of the two given attributes from the beginning to the end of the works has shown big differences in the style of the authors, too. In a number of cases the tendency for compensation is observed while a drop in the frequency of one attribute type correlates with the rise in frequency of the other one.


2019 ◽  
Vol 3 (1) ◽  
pp. 11-20
Author(s):  
Katon Wijana

To insert new data into a database table using a web-based application, a graphical user interface in the form of HTML Form is required. Each table field / attribute requires an appropriate form control in order to minimize data errors that will be entered. There is a relation between the data type of a field in the table with the type of form control to be used, therefore the graphical user interface in the form of HTML Form can be created automatically.  There are various control forms of HTML in the form of tags, generally in the form of input tags. What distinguishes the form control from one to another is the attribute: type, size, value therefore to determine the type and content of form controls can be given through parameters.  HTML Form can be regarded as an object which has many other objects in the form of form controls. Object Oriented Programming (OOP) paradigm it can be implemented to build HTML Form.  Through meta data from a table, it will be able to obtain the appropriate HTML form control, but for each specific data type it can have the appropriate form control candidate, therefore before Form HTML is created by the generator, there should be a little user intervention to get the interface The desired HTML form.


2019 ◽  
Vol 3 (1) ◽  
pp. 11-20
Author(s):  
Katon Wijana

To insert new data into a database table using a web-based application, a graphical user interface in the form of HTML Form is required. Each table field / attribute requires an appropriate form control in order to minimize data errors that will be entered. There is a relation between the data type of a field in the table with the type of form control to be used, therefore the graphical user interface in the form of HTML Form can be created automatically.  There are various control forms of HTML in the form of tags, generally in the form of input tags. What distinguishes the form control from one to another is the attribute: type, size, value therefore to determine the type and content of form controls can be given through parameters.  HTML Form can be regarded as an object which has many other objects in the form of form controls. Object Oriented Programming (OOP) paradigm it can be implemented to build HTML Form.  Through meta data from a table, it will be able to obtain the appropriate HTML form control, but for each specific data type it can have the appropriate form control candidate, therefore before Form HTML is created by the generator, there should be a little user intervention to get the interface The desired HTML form.


2018 ◽  
Vol 7 (3.31) ◽  
pp. 121
Author(s):  
N Konda Reddy ◽  
K Murali Krishna ◽  
A V.N. Murty

The classical inventory model assumes that the quality of the items received matches with the quality required. In many cases the deviation in quality results in additional costs to the stockiest and sometimes lead to rejection of the received lot. The cost of inspection along with the other inventory costs can be unified into a single model by embedding an acceptance sampling plan into the inventory model. When the lot is accepted there is a possibility of unseen defectives, which may reach the customer leading to loss of goodwill. If the lot is rejected on inspection, the model suggests rectification and removal of non-confirming units. In this paper a model is developed to determine (i) the Economic Order Quantity and (ii) a single sample plan of the attribute type, which minimizes the Average Total Inspection. The model utilizes spreadsheet solutions to handle statistical functions.  


Sign in / Sign up

Export Citation Format

Share Document