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Processing Probability Information in Nonnumerical Settings – Teachers’ Bayesian and Non-bayesian Strategies During Diagnostic Judgment
- Source :
- Frontiers in Psychology, Vol 11 (2020), Frontiers in Psychology
- Publication Year :
- 2020
- Publisher :
- Frontiers Media S.A., 2020.
-
Abstract
- A diagnostic judgment of a teacher can be seen as an inference from manifest observable evidence on a student’s behavior to his or her latent traits. This can be described by a Bayesian model of inference: The teacher starts from a set of assumptions on the student (hypotheses), with subjective probabilities for each hypothesis (priors). Subsequently, he or she uses observed evidence (students’ responses to tasks) and knowledge on conditional probabilities of this evidence (likelihoods) to revise these assumptions. Many systematic deviations from this model (biases, e.g., base-rate neglect, inverse fallacy) are reported in the literature on Bayesian reasoning. In a teacher’s situation, the information (hypotheses, priors, likelihoods) is usually not explicitly represented numerically (as in most research on Bayesian reasoning) but only by qualitative estimations in the mind of the teacher. In our study, we ask to which extent individuals (approximately) apply a rational Bayesian strategy or resort to other biased strategies of processing information for their diagnostic judgments. We explicitly pose this question with respect to nonnumerical settings. To investigate this question, we developed a scenario that visually displays all relevant information (hypotheses, priors, likelihoods) in a graphically displayed hypothesis space (called “hypothegon”)–without recurring to numerical representations or mathematical procedures. Forty-two preservice teachers were asked to judge the plausibility of different misconceptions of six students based on their responses to decimal comparison tasks (e.g., 3.39 > 3.4). Applying a Bayesian classification procedure, we identified three updating strategies: a Bayesian update strategy (BUS, processing all probabilities), a combined evidence strategy (CES, ignoring the prior probabilities but including all likelihoods), and a single evidence strategy (SES, only using the likelihood of the most probable hypothesis). In study 1, an instruction on the relevance of using all probabilities (priors and likelihoods) only weakly increased the processing of more information. In study 2, we found strong evidence that a visual explication of the prior–likelihood interaction led to an increase in processing the interaction of all relevant information. These results show that the phenomena found in general research on Bayesian reasoning in numerical settings extend to diagnostic judgments in nonnumerical settings.
- Subjects :
- Bayesian probability
lcsh:BF1-990
Inference
Machine learning
computer.software_genre
Bayesian inference
information processing
050105 experimental psychology
03 medical and health sciences
Naive Bayes classifier
0302 clinical medicine
Prior probability
Psychology
0501 psychology and cognitive sciences
Relevance (information retrieval)
General Psychology
Original Research
business.industry
05 social sciences
judgment under uncertainty
Information processing
Conditional probability
teachers’ diagnostic judgment
visualization of Bayesian update
lcsh:Psychology
Bayesian reasoning strategies
Artificial intelligence
business
computer
030217 neurology & neurosurgery
Subjects
Details
- Language :
- English
- ISSN :
- 16641078
- Volume :
- 11
- Database :
- OpenAIRE
- Journal :
- Frontiers in Psychology
- Accession number :
- edsair.doi.dedup.....328caa84f8ec0f0da0e130f5561b9011
- Full Text :
- https://doi.org/10.3389/fpsyg.2020.00678/full