| Literature DB >> 26283976 |
Eric D Johnson1, Elisabet Tubau1.
Abstract
Humans have long been characterized as poor probabilistic reasoners when presented with explicit numerical information. Bayesian word problems provide a well-known example of this, where even highly educated and cognitively skilled individuals fail to adhere to mathematical norms. It is widely agreed that natural frequencies can facilitate Bayesian inferences relative to normalized formats (e.g., probabilities, percentages), both by clarifying logical set-subset relations and by simplifying numerical calculations. Nevertheless, between-study performance on "transparent" Bayesian problems varies widely, and generally remains rather unimpressive. We suggest there has been an over-focus on this representational facilitator (i.e., transparent problem structures) at the expense of the specific logical and numerical processing requirements and the corresponding individual abilities and skills necessary for providing Bayesian-like output given specific verbal and numerical input. We further suggest that understanding this task-individual pair could benefit from considerations from the literature on mathematical cognition, which emphasizes text comprehension and problem solving, along with contributions of online executive working memory, metacognitive regulation, and relevant stored knowledge and skills. We conclude by offering avenues for future research aimed at identifying the stages in problem solving at which correct vs. incorrect reasoners depart, and how individual differences might influence this time point.Entities:
Keywords: Bayesian reasoning; individual differences; mathematical problem solving; numeracy; set-subset reasoning; text comprehension
Year: 2015 PMID: 26283976 PMCID: PMC4515557 DOI: 10.3389/fpsyg.2015.00938
Source DB: PubMed Journal: Front Psychol ISSN: 1664-1078
Figure 1Examples of the medical diagnosis problem, presented with . If not otherwise indicated, other tables, figures, and examples in the text refer to the numerical information in this figure.
Figure 2Representations of the Bayesian tasks presented in Figure .
Key dimensions along which a Bayesian word problem may vary.
| Numerical format | The format of the presented numerical information: |
| Question format | The format of the requested response, typically: |
| Number of events | |
| Sampling structure | The particular categorical-numerical information used to express the hit rate and false-positive rate, typically: |
| Natural frequencies | A problem format which presents |
| Normalized problems | A problem which presents normalized numerical formats (percentages, decimals), a normalized sampling structure (i.e., with conditional or non-conjunctive information), and/or which requests information in a normalized format (a ratio as a single value, not integer pair). |
| Context | Scenario of the problem. For example, medical (infection, test); cab (accident, color). |
| Irrelevant info | Descriptive information that is not relevant for solving the task. Numbers that are not needed for computing the normative response. |
| Mental steps | The number of steps required to compute the response, given the specific numbers presented in the problem. For example, in Figure |
| Compatibility | Correspondence between the presented and requested data, including numerical and question formats, also sample sizes. |
Summary of significant individual differences effects reported in Bayesian word problems presenting normalized information or natural frequencies.
| Chapman and Liu, | No | |||
| Siegrist and Keller, | Yes/No | |||
| Hill and Brase, | No | |||
| Garcia-Retamero and Hoffrage, | Yes | |||
| Johnson and Tubau, | Yes/No | |||
| Lesage et al., | No | |||
| Sirota et al., | Yes | No | Yes/No | |
| Ayal and Beyth-Marom, | Yes | |||
| McNair and Feeney, | Yes/No | Yes | No | |
| Brase et al., | Yes | |||
| Chapman and Liu, | Yes | |||
| Sirota and Juanchich, | Yes | Yes | ||
| Siegrist and Keller, | Yes/No | |||
| Hill and Brase, | Yes | |||
| Garcia-Retamero and Hoffrage, | Yes | |||
| Johnson and Tubau, | Yes/No | |||
| Lesage et al., | Yes | |||
| Sirota et al., | Yes | Yes | Yes/No | |
Note that variation exists between the specific context and numbers used across studies, as well as specific measures and criteria used to determine low vs. high performers (see text for additional details, and original articles for full problems and explanations).
It is important to note that YES with normalized versions does not imply “good” reasoning, with most higher ability participants typically below 30% correct response.
CRT, Cognitive Reflection Test (Frederick, .
YES with simple versions; NO with complex versions (floor effect).
YES with REI (rational-experiential inventory; rational thinking); NO with CAOMTS (actively open-minded thinking).
Information was normalized, but problems manipulated to require only simple single-step arithmetic.
Higher numerate benefited more from causal manipulation used in Krynski and Tenenbaum (.
NO with REI.
YES in study 1; NO in study 2 (though clear trend).
YES with complex text; NO with short, simple text.
Figure 3Framework for understanding Bayesian word problem solving. The task (left) is conceived as the presented data and the requested question. A text comprehension process gives rise to an initial internal model of the data (including inferences not directly in the text; see Table 3). The comprehension of the question “(H|D)” initiates a goal-oriented search (though internal representation and problem text) for the requested relations, along with logical and numerical computations aimed at deriving information not directly available in the text. The processing of the task also activates metacognitive dispositions as well as potentially relevant stored knowledge and skills, both of which can influence both what information is processed and how that information is processed. A continuously updated working memory also provides reciprocal feedback to metacognition and calls for additional stored knowledge if needed. The final response given will depend on a complex interaction of the task formulation, metacognition, available knowledge and skills, and the efficiency of an executive working memory. For example, metacognition can influence the effort invested into the task, while stored knowledge can influence the relative effort required for a given individual.
Examples of inferences and levels of encoding generated while reading a Bayesian word problem.
| Prior knowledge or beliefs | → | Infections cause positive tests. | |
| Forward categorical | → | Some people are infected. | |
| Backward categorical | → | Some of the positives are infected. | |
| Non-integrated categorical-numerical association | → | Infected [10%] | Total [100] |
| Forward quantitative | → | 60% of 10% = 6% are both inf and pos | 6 people are both inf and pos |
| Backward quantitative | → | Of 24% pos, 6% are infected | Of 24 positive, 6 are infected |
Inferences may be spontaneously generated during text comprehension, or prompted as a result of the question, and may be either implicit or explicit (or not present at all) within a reasoner's model of the problem. A variety of biased responses are possible based on erroneous or irrelevant prior knowledge or beliefs, non-integrated representations, or attention to inappropriate levels of information. Inf, infected; Pos, positive test.