Predicting the Relationship Between the Size of Training Sample and the Predictive Power of Classifiers

Author(s):  
Natthaphan Boonyanunta ◽  
Panlop Zeephongsekul
Author(s):  
Aya Hussein ◽  
Sondoss Elsawah ◽  
Hussein A. Abbass

Objective This work aims to further test the theory that trust mediates the interdependency between automation reliability and the rate of human reliance on automation. Background Human trust in automation has been the focus of many research studies. Theoretically, trust has been proposed to impact human reliance on automation by mediating the relationship between automation reliability and the rate of human reliance. Experimentally, however, the results are contradicting as some confirm the mediating role of trust, whereas others deny it. Hence, it is important to experimentally reinvestigate this role of trust and understand how the results should be interpreted in the light of existing theory. Method Thirty-two subjects supervised a swarm of unmanned aerial vehicles (UAVs) in foraging missions in which the swarm provided recommendations on whether or not to collect potential targets, based on the information sensed by the UAVs. By manipulating the reliability of the recommendations, we observed changes in participants’ trust and their behavioral responses. Results A within-subject mediation analysis revealed a significant mediation role of trust in the relationship between swarm reliability and reliance rate. High swarm reliability increased the rate of correct acceptances, but decreased the rate of correct rejections. No significant effect of reliability was found on response time. Conclusion Trust is not a mere by-product of the interaction; it possesses a predictive power to estimate the level of reliance on automation. Application The mediation role of trust confirms the significance of trust calibration in determining the appropriate level of reliance on swarm automation.


2021 ◽  
Vol 31 ◽  
Author(s):  
Giuliana Violeta Vasquez Varas ◽  
Juliane Callegaro Borsa

Abstract This study aimed to analyze the relationships between positive (PCM), negative (NCM) childbearing motivations and psychological, sociodemographic, family of origin and partner relationship variables in a sample of 1969 Brazilians (83.6% female), aged 18 to 50 years (M = 29.27; SD = 5.97). Spearman correlations, Mann-Whitney and Kruskal Wallis U-tests, and multiple regressions were performed. The results of the correlations and multiple regressions verified the relationship between both motivations and the various variables postulated. It was also verified that religiosity was the variable with greater predictive power for PCM and having or not having children was the variable with greater predictive power for NCM. In the group difference analysis, significant differences were found for PCM according to occupation, type of relationship, and presence/absence of a partner. As for the NCM, significant differences were found according to sex.


2014 ◽  
Author(s):  
◽  
Njabulo Samson Melusi Shongwe

This study reports on the application of decision making core technology adoption theory to empirically examine youth preferences for Human Immunodeficiency Virus (HIV) preventive actions. In order to contribute to the open discourse on whether technology adoption rate is higher for male or female, goal desire, goal intention, action desire and action intention elements of decision making core theory were tested. A mobile health information system was implemented as an HIV information disseminating tool and used for experimentation to determine adoption by youths. A dataset of 118 pupils from two high schools was used for pilot investigation. A dataset of 292 undergraduate youths aged 10-24 years from two universities in South Africa was generated to validate the research model. The Partial Least Square (PLS) analytic modelling technique was used to determine the predictive power of decision making core model from the input dataset. Results of experimentation show that regardless of the gender youth accepts to use mobile information system to access HIV information. The predictive power of the decision making core model was found to be independent of gender factor, which was also not found to moderate the relationship between Perceived Behavioural Control (PBC) and action intention. In addition, gender was not found to moderate the order of importance in factors that predict youth preferences for HIV preventive action. PBC, action desire and goal desire were selected as the most important predictors of HIV preventive actions. The factor of action desire was found to mediate the relationship between PBC and action intention such that the mediation effect was stronger for male youth (68%) than for female youth (19%). Finally, the decision making core model better predicted youth preferences for HIV preventive actions as compared to two models based on Theory of Reason Action (TRA) and Theory of Planned Behaviour (TPB)


2021 ◽  
pp. 125-130
Author(s):  
Francesco D. d'Ovidio ◽  
Angela Maria D'Uggento ◽  
Rossana Mancarella ◽  
Ernesto Toma

It is well known that, in classification problems, the predictive capacity of any decision-making model decreases rapidly with increasing asymmetry of the target variable (Sonquist et al., 1973; Fielding 1977). In particular, in segmentation analysis with a categorical target variable, very poor improvements of purity are obtained when the least represented modality counts less than 1/4 of the cases of the most represented modality. The same problem arises with other (theoretically more exhaustive) techniques such as Artificial Neural Networks. Actually, the optimal situation for classification analyses is the maximum uncertainty, that is, equidistribution of the target variable. Some classification techniques are more robust, by using, for example, the less sensitive logit transformation of the target variable (Fabbris & Martini 2002); however, also the logit transformation is strongly affected by the distributive asymmetry of the target variable. In this paper, starting from the results of a direct survey in which the target (binary) variable was extremely asymmetrical (10% vs. 90%, or greater asymmetry), we noted that also the logit model with the most significant parameters had very reduced fitting measures and almost zero predictive power. To solve this predictive issue, we tested post-stratification techniques, artificially symmetrizing a training sample. In this way, a substantially increase of fitting and predictive capacity was achieved, both in the symmetrized sample and, above all, in the original sample. In conclusion of the paper, an application of the same technique to a dataset of very different nature and size is described, demonstrating that the method is stable even in the case of analysis executed with all data of a population.


2019 ◽  
Vol 30 (1) ◽  
pp. 5-13
Author(s):  
Veerasamy Ravichandran ◽  
Rajak Harish

Abstract The main objective of the present study was to establish significant and validated QSAR models for imidazoles and sulfonamides to explore the relationship between their physicochemical properties and antidiabetic activity. Two dimensional QSAR models had been developed by multiple linear regression and partial least square analysis methods, and then validated for internal and external predictions. The established 2D QSAR models were statistically significant and highly predictive. The validation methods provided significant statistical parameters with q2 > 0.5 and pred_r2 > 0.6, which proved the predictive power of the models. The developed 2D QSAR models revealed the significance of SlogP and T_N_O_5, and Mol.Wt and SsBrE-index properties of imidazoles and sulfonamides on their antidiabetic activity, respectively. These results should prove to be an essential guide for the further design and development of new imidazoles and sulfonamides having better antidiabetic activity.


1974 ◽  
Vol 5 (3) ◽  
pp. 155-166
Author(s):  
Fred Eugene Cromer

The purpose of this investigation was to explore the relationship between problem characteristics and problem difficulty in simple, 2-factor multiplication problems and to determine whether an objective, parametric measure of problem difficulty could be found.The difficulty levels of 168 randomly generated multiplication problems were obtained by testing 238 fifth-grade children. Variables concerning the number of operations, digits carried, and magnitude of the digits were defined, and a least-squares procedure was used to construct several structural models. The predictive power was quite good, with these models accounting for 60-78% of the observed variance of problem difficulty.Possibilities for extension of this technique to other types of problems were also discussed.


2018 ◽  
Vol 9 (2) ◽  
pp. 87-96
Author(s):  
Melinda Sabo ◽  
Ioan Mihnea Marinescu

The present study investigated if values and social axioms predict prosocial behavior, as well as the incremental validity of social axioms, beyond values in the prediction of prosocial behavior. Considering that there is no evidence in the scientific literature for studies that explore the relationship of these three variables, the aim of the study was to fill in this gap. Initially 177 participants took part in the study; in the final analysis, data from 155 participants was included. Participants could access the questionnaires on social networks where they had to complete four trials of the Ultimatum and Dictator Game, the Prosocialness Scale (Caprara et. al, 2005), the Romanian version of the second edition of Social Axioms Survey (SAS-II; Leung et al., 2012) and the Value Survey of Schwartz (1992). Results showed that social axioms have incremental validity over and beyond values in the prediction of prosocial behavior – measured objective and subjective. These results bring evidence for values and social axioms explaining a significant part of the variance of the prosocial behavior. In addition, social axioms have a significant predictive power beyond values. This study has a theoretical and a practical contribution, as well. It contributes to the development of the culture, as a concept by adding the notion of social axioms and has a practical contribution for planning interventions that focus on changing the way people cooperate or modifying the helping tendencies of people.


2003 ◽  
Vol 24 (2) ◽  
pp. 221-234 ◽  
Author(s):  
PAMELA ROSENTHAL ROLLINS

This prospective longitudinal study examined the relationship between caregiver input to 9-month-old infants and their subsequent language. Mother–infant dyads were videotaped at ages 9, 12, and 30 months. Language comprehension (at 12 and 18 months) was measured by parent report and correlated with an independent language measure. Three maternal style variables were reduced from the 9-month data. Only caregivers' contingent comments (CCC) related to infants' later language. These findings held after infants' skill with coordinated joint attention (CJA) was taken into account. The total number of words the mothers used when their infants were 9 months predicted vocabulary; however, the predictive power was encapsulated in the words the mother used during CCC. Because studies have typically examined maternal input once infants' CJA has emerged, this work contributes to current efforts to understand variations in early language development.


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