Asia-Pacific Forum on Science Learning and Teaching, Volume 8, Issue 2, Article 4 (Dec., 2007)
Joan Josep SOLAZ-PORTOLÉS & Vicent Sanjosé LOPEZ

Representations in problem solving in science: Directions for practice

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Mental models, problem solving, and cognitive variables: Directions for practice

The construction of a mental model results from links made between the elements of the problem description and the underlying knowledge base (Heyworth, 1998). Expert performance seems to lie in the organization of the experts’ domain knowledge. Experts possess a large knowledge base that is organized into elaborate, integrated structures, whereas novices tend to possess less domain knowledge and a less coherent organization of it (Zajchowski & Martin, 1993). The way knowledge is organised allows optimised access to the long-term memory. The borders between long-term memory and working memory of experts become fluent so that the capacity of the working memory in comparison to a novices’ memory is considerably expanded (Ericsson & Kintsch, 1995). Humans chunk content pieces together such that very large amount of content are concurrently accessible. Experts make use of big chunks that were developed over those years which they became experts (Brooks & Shell, 2006).

According to Kempa’s studies (Kempa, 1991; Kempa and Nicholls, 1983) a direct connection emerges between cognitive structure (long-term memory structure) and problem-solving difficulties. These difficulties are usually attributable to one or more of the following factors.

The knowledge needed to solve problems in a complex domain is composed of many principles, examples, technical details, generalizations, heuristics, and other pieces of relevant information (Stevens & Palacio-Cayetano, 2003). The development of a knowledge base is important both in terms of its extent and its structural organisation. To be useful, students need to be able to access and apply this knowledge, but the knowledge must be there in the first place. Any claim that is not so, or that knowledge can always be found from others sources when it is needed, is naive (Dawson, 1993).

Shavelson, Ruiz-Primo and Wiley (2005) present a conceptual framework for characterizing science goals and student achievement that includes declarative knowledge (knowing that, domain-specific content: facts, definitions and descriptions), procedural knowledge (knowing how, production rules/sequences), schematic knowledge (knowing why, principles/schemes) and strategic knowledge (knowing when, where and how our knowledge applies, strategies/domain-specific heuristics). For each combination of knowledge type and characteristic (extent-how much?; structure –how it is organized?; and others), Li and Shavelson (2001) have begun to identify assessment methods. However, while we can conceptually distinguish knowledge types, in practice they are difficult to distinguish and assessment methods do not line up perfectly with knowledge types and characteristics.

Ferguson-Hessler and de Jong (1990) distinguished four major types of knowledge for the content of an adequate knowledge base with regard to its importance for problem solving.

Working memory capacity plays an important role in many different types of problem solving (Welsh, Satterlee-Cartmell, & Stine, 1999). The ability to maintain information in a highly activated state via controlled attention may be important for integrating information from successive problem-solving steps, including the construction and manipulation of mental models. Working memory capacity may also be involved in a number of well-documented problem solving “difficulties” (Solaz-Portolés & Sanjosé, 2007c). Studies on the association between limited working memory capacity and information load in problem-solving provided support for the positive relationship between working memory and science achievement. Because working memory capacity limits the amount of information which can be concurrently processed, performance on science problem-solving tasks is expected to drop when the information load exceeds students’ working memory capacity (Johnstone & El-Banna, 1986). Opdenacker, Fierens, Brabant, Sevenants, and Slootamekers (1990) study reported that students gradually decreased their chemistry problem-solving performances when the amount of information to be processed exceed their working memory capacity. This phenomena is also consistent with Sweller’s (1994) cognitive overload theory, which posits that learning processes will be negatively affected if the cognitive load exceeds the limit of working memory capacity.

In science, mental capacity (M-space) is associated with students’ ability to deal with problem-solving (Níaz, 1987; Tsaparlis, Kousathana & Níaz, 1998). Gathercole (2004) found a strong relationship between working memory capacity and science achievement: the correlation coefficients between working memory measure and science achievement ranged from 0.32 to 0.5. Danili and Reid (2004) found that students with high and low working memory capacity differed significantly in their performance on chemistry tests. Tsaparlis (2005) examined the correlation between working memory capacity and performance on chemistry problem-solving and the correlations ranged between 0.28 and 0.74.

From Anderson’s cognitive perspective, the components of science knowledge required to solve problems can be broadly grouped into factual (declarative), reasoning (procedural), and regulatory (metacognitive) knowledge/skills, and all play complementary roles (Anderson, 1980). According to O’Neil and Schacter (1999), to be a successful problem solver, one must know something (content knowledge), possess intellectual tricks (problem-solving strategies), be able to plan and monitor one’s progress towards solving the problem (metacognition), and be motivated to perform. Mayer (1998) examined the role of cognitive, metacognitive and motivational skills in problem solving, and concluded that all three kinds of skills are required for successful problem solving in academic settings.

Artz and Armour-Thomas (1992) suggest the importance of metacognitive processes in mathematical problem solving in a small-group setting. A continuous interplay of cognitive and metacognitive behaviours appears to be necessary for successful problem solving and maximum student involvement. Similarly, Teong (2003) demonstrated how explicit metacognitive training influences the mathematical word-problem solving. Results from his study revealed that experimental students outperformed control students on ability to solve word-problems. Experimental students developed the ability to ascertain when to make metacognitive decisions, and elicit better regulated metacognitive decisions than control students. Longo, Anderson and Wicht (2002) used an experimental design to test the efficacy of a new generation of knowledge representation and metacognitive learning strategies called visual thinking networking (VTN). In these strategies, students constructed network diagrams that contained words and figural elements connected by lines and other representations of linkages to represent knowledge relationships. Students who used the VTN strategies had a significantly higher mean gain score on the problem solving criterion test items than students who used the writing strategy for learning science (students used other strategies of learning including writing assignments). To get an overview of the characteristics of good and innovative problem-solving teaching strategies, Taconis, Fergusson-Hessler and Broekkamp (2001) performed an analysis of a number of articles published between 1985 and 1995 in high-standard international journals, describing experimental research into the effectiveness of a wide variety of teaching strategies for science problem solving. As for learning conditions, both providing the learners with guidelines and criteria they can use in judging their own problem-solving process and products, and providing immediate feedback were found to be important prerequisites for the acquisition of problem-solving skills. Abdullah (2006) indicated that there are only a few studies looking specifically into the role of metacognitive skills in physics despite the fact these skills appear to be relevant in problem solving. This researcher has investigated the patterns of physics problem-solving through the lens of metacognition.

Based on the overview on problem solving presented here, a number of instructional measures that will assist teachers are suggested below.

 

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