(The following is from the IB Online Curriculum Center (occ.ibo.org). It provides information on the criteria and aspects by which Internal Assessment reports will be assessed.)
There are five assessment criteria that are used by IB to assess the work of both SL and HL students.
Design—D
Data collection and processing—DCP
Conclusion and evaluation—CE
Manipulative skills—MS
Personal skills—PS
The first three criteria—design (D), data collection and processing (DCP) and conclusion and evaluation (CE)—are each assessed twice over the course of the two years..
Manipulative skills (MS) is assessed summatively over the whole course and the assessment should be based on a wide range of manipulative skills.
Personal skills (PS) is assessed once only and this will be during the group 4 project.
Each of the assessment criteria can be separated into three aspects as shown in the following sections. Descriptions are provided to indicate what is expected in order to meet the requirements of a given aspect completely (c) and partially (p). A description is also given for circumstances in which the requirements are not satisfied, not at all (n).
A “complete” is awarded 2 marks, a “partial” 1 mark and a “not at all” 0 marks.
The maximum mark for each criterion is 6 (representing three “completes”).
D
× 2 = 12
DCP
× 2 = 12
CE
× 2 = 12
MS
× 1 = 6
PS
× 1 = 6
This makes a total mark out of 48.
The marks for each of the criteria are added together to determine the final mark out of 48 for the IA component. This is then scaled at IBCA to give a total out of 24%. The external exam in May of the second year will be scaled to 76% and added to the IA component to determine the final mark.
Design
Levels/marks
Aspect 1
Aspect 2
Aspect 3
Defining the problem and selecting variables
Controlling variables
Developing a method for collection of data
Complete/2
Formulates a focused problem/research question and identifies the relevant variables.
Designs a method for the effective control of the variables.
Develops a method that allows for the collection of sufficient relevant data.
Partial/1
Formulates a problem/research question that is incomplete or identifies only some relevant variables.
Designs a method that makes some attempt to control the variables.
Develops a method that allows for the collection of insufficient relevant data.
Not at all/0
Does not identify a problem/research question and does not identify any relevant variables.
Designs a method that does not control the variables.
Develops a method that does not allow for any relevant data to be collected.
Data collection and processing
Levels/marks
Aspect 1
Aspect 2
Aspect 3
Recording raw data
Processing raw data
Presenting processed data
Complete/2
Records appropriate quantitative and associated qualitative raw data, including units and uncertainties where relevant.
Processes the quantitative raw data correctly.
Presents processed data appropriately and, where relevant, includes errors and uncertainties.
Partial/1
Records appropriate quantitative and associated qualitative raw data, but with some mistakes or omissions.
Processes quantitative raw data, but with some mistakes and/or omissions.
Presents processed data appropriately, but with some mistakes and/or omissions.
Not at all/0
Does not record any appropriate quantitative raw data or raw data is incomprehensible.
No processing of quantitative raw data is carried out or major mistakes are made in processing.
Presents processed data inappropriately or incomprehensibly.
Conclusion and evaluation
Levels/marks
Aspect 1
Aspect 2
Aspect 3
Concluding
Evaluating procedure(s)
Improving the investigation
Complete/2
States a conclusion, with justification, based on a reasonable interpretation of the data.
Evaluates weaknesses and limitations.
Suggests realistic improvements in respect of identified weaknesses and limitations.
Partial/1
States a conclusion based on a reasonable interpretation of the data.
Identifies some weaknesses and limitations, but the evaluation is weak or missing.
Suggests only superficial improvements.
Not at all/0
States no conclusion or the conclusion is based on an unreasonable interpretation of the data.
Identifies irrelevant weaknesses and limitations.
Suggests unrealistic improvements.
Manipulative skills (assessed summatively)
This criteria is assessed once at the end of the two year course.
Levels/marks
Aspect 1
Aspect 2
Aspect 3
Following instructions*
Carrying out techniques
Working safely
Complete/2
Follows instructions accurately, adapting to new circumstances (seeking assistance when required).
Competent and methodical in the use of a range of techniques and equipment.
Pays attention to safety issues.
Partial/1
Follows instructions but requires assistance.
Usually competent and methodical in the use of a range of techniques and equipment.
Usually pays attention to safety issues.
Not at all/0
Rarely follows instructions or requires constant supervision.
Rarely competent and methodical in the use of a range of techniques and equipment.
Rarely pays attention to safety issues.
*Instructions may be in a variety of forms: oral, written worksheets, diagrams, photographs, videos, flow charts, audio tapes, models, computer programs, and so on, and need not originate from the teacher.
Personal skills (assessed during the Group 4 Project only)
This criterion is assessed once for the Group 4 Project only.
The group 4 project is to be assessed for the personal skills criterion only and this will be the only place where this criterion is assessed.
Levels/marks
Aspect 1
Aspect 2
Aspect 3
Self-motivation and perseverance
Working within a team
Self-reflection
Complete/2
Approaches the project with self-motivation and follows it through to completion.
Collaborates and communicates in a group situation and integrates the views of others.
Shows a thorough awareness of their own strengths and weaknesses and gives thoughtful consideration to their learning experience.
Partial/1
Completes the project but sometimes lacks self-motivation.
Exchanges some views but requires guidance to collaborate with others.
Shows limited awareness of their own strengths and weaknesses and gives some consideration to their learning experience.
Not at all/0
Lacks perseverance and motivation.
Makes little or no attempt to collaborate in a group situation.
Shows no awareness of their own strengths and weaknesses and gives no consideration to their learning experience.
Clarifications of the Internal Assessment Criteria
Design
Aspect 1: defining the problem and selecting variables
It is essential that teachers give an open-ended problem to investigate, where there are several independent variables from which a student could choose one that provides a suitable basis for the investigation. This should ensure that a range of plans will be formulated by students and that there is sufficient scope to identify both independent and controlled variables.
Although the general aim of the investigation may be given by the teacher, students must identify a focused problem or specific research question. Commonly, students will do this by modifying the general aim provided and indicating the variable(s) chosen for investigation.
The teacher may suggest the general research question only. Asking students to investigate some physical property of a bouncing ball, where no variables are given, would be an acceptable teacher prompt. This could be focused by the student as follows: “I will investigate the relationship between the rebound height and the drop height of a bouncing ball.”
Alternatively, the teacher may suggest the general research question and specify the dependent variable. An example of such a teacher prompt would be to ask the student to investigate the deflection of a cantilever. This could then be focused by the student as follows: “I propose to investigate how the deflection of a cantilever is affected by the load attached to one end.” It is not sufficient for the student merely to restate the research question provided by the teacher.
Variables are factors that can be measured and/or controlled. Independent variables are those that are manipulated, and the result of this manipulation leads to the measurement of the dependent variable. A controlled variable is one that should be held constant so as not to obscure the effect of the independent variable on the dependent variable.
The variables need to be explicitly identified by the student as the dependent (measured), independent (manipulated) and controlled variables (constants). Relevant variables are those that can reasonably be expected to affect the outcome. For example, in the investigation of the bouncing ball, the drop height would be the independent variable and the rebound height would be the dependent variable. Controlled variables would include using the same ball and the same surface for all measurements.
Students should not be:
given a focused research question
told the outcome of the investigation
told which independent variable to select
told which variables to hold constant.
Aspect 2: controlling variables
“Control of variables” refers to the manipulation of the independent variable and the attempt to maintain the controlled variables at a constant value. The method should include explicit reference to how the control of variables is achieved. If the control of variables is not practically possible, some effort should be made to monitor the variable(s).
Students should not be told:
which apparatus to select
the experimental method.
Aspect 3: developing a method for collection of data
The definition of “sufficient relevant data” depends on the context. The planned investigation should anticipate the collection of sufficient data so that the aim or research question can be suitably addressed and an evaluation of the reliability of the data can be made.
The collection of sufficient relevant data usually implies repeating measurements. For example, to find the period of a pendulum, the time for a number of oscillations is measured in order to find the time for one oscillation. Measuring the time for just one oscillation for a given pendulum length would not earn a “complete”. Or, for example, measuring the time for a ball to roll a given distance down an inclined plane can be repeated a number of times and then an average time can be determined.
The data range and the amount of data in that range are also important. For example, in the pendulum experiment, a length range of 10 cm to 100 cm might be used, but measuring the period for only three points within that range would not be appropriate. Similarly, measuring the period for 10 data points in a range from 80 cm to 90 cm would also be inappropriate.
Students should not be told:
how to collect the data
how much data to collect.
Data collection and processing
Ideally, students should work on their own when collecting data.
When data collection is carried out in groups, the actual recording and processing of data should be independently undertaken if this criterion is to be assessed.
Aspect 1: recording raw data
Raw data is the actual data measured. This may include associated qualitative data. It is permissible to convert handwritten raw data into word-processed form. The term “quantitative data” refers to numerical measurements of the variables associated with the investigation. Associated qualitative data are considered to be those observations that would enhance the interpretation of results.
Uncertainties are associated with all raw data and an attempt should always be made to quantify uncertainties. For example, when students say there is an uncertainty in a stopwatch measurement because of reaction time, they must estimate the magnitude of the uncertainty. Within tables of quantitative data, columns should be clearly annotated with a heading, units and an indication of the uncertainty of measurement. The uncertainty need not be the same as the manufacturer’s stated precision of the measuring device used. Significant digits in the data and the uncertainty in the data must be consistent. This applies to all measuring devices, for example, digital meters, stopwatches, and so on. The number of significant digits should reflect the precision of the measurement.
There should be no variation in the precision of raw data. For example, the same number of decimal places should be used. For data derived from processing raw data (for example, means), the level of precision should be consistent with that of the raw data.
Students should not be told how to record the raw data. For example, they should not be given a pre-formatted table with any columns, headings, units or uncertainties.
Aspect 2: processing raw data
Data processing involves, for example, combining and manipulating raw data to determine the value of a physical quantity (such as adding, subtracting, squaring, dividing), and taking the average of several measurements and transforming data into a form suitable for graphical representation. It might be that the data is already in a form suitable for graphical presentation, for example, light absorbance readings plotted against time readings. If the raw data is represented in this way and a best-fit line graph is drawn and the gradient determined, then the raw data has been processed. Plotting raw data (without a graph line) does not constitute processing data.
The recording and processing of data may be shown in one table provided they are clearly distinguishable.
Most processed data will result in the drawing of a graph showing the relationship between the independent and dependent variables.
Students should not be told:
how to process the data
what quantities to graph/plot.
Aspect 3: presenting processed data
When data is processed, the uncertainties associated with the data must also be considered. If the data is combined and manipulated to determine the value of a physical quantity (for example, specific heat capacity), then the uncertainties in the data must be propagated (see Uncertainties for how to do this). Calculating the percentage difference between the measured value and the literature value does not constitute error analysis. The uncertainties associated with the raw data must be taken into account.
Graphs need to have appropriate scales, labeled axes with units, and accurately plotted data points with a suitable best-fit line or curve (not a scattergraph with data-point to data-point connecting lines).
In order to fulfill aspect 3 completely, students should include a treatment of uncertainties and errors with their processed data.
The complete fulfillment of aspect 3 requires the students to:
include uncertainty bars where significant
explain where uncertainties are not significant
draw lines of minimum and maximum gradients
determine the uncertainty in the best straight-line gradient.
Conclusion and evaluation
Aspect 1: concluding
Conclusions that are supported by the data are acceptable even if they appear to contradict accepted theories. However, the conclusion must take into account any systematic or random errors and uncertainties. A percentage error should be compared with the total estimated random error as derived from the propagation of uncertainties.
In justifying their conclusion, students should discuss whether systematic error or further random errors were encountered. The direction of any systematic errors should be appreciated. Analysis may include comparisons of different graphs or descriptions of trends shown in graphs. The explanation should contain observations, trends or patterns revealed by the data.
When measuring an already known and accepted value of a physical quantity, students should draw a conclusion as to their confidence in their result by comparing the experimental value with the textbook or literature value. The literature consulted should be fully referenced.
Aspect 2: evaluating procedure(s)
The design and method of the investigation must be commented upon as well as the quality of the data. The student must not only list the weaknesses but must also appreciate how significant the weaknesses are. Comments about the precision and accuracy of the measurements are relevant here. When evaluating the procedure used, the student should specifically look at the processes, use of equipment and management of time.
Aspect 3: improving the investigation
Suggestions for improvement should be based on the weaknesses and limitations identified in aspect 2. Modifications to the experimental techniques and the data range can be addressed here. The modifications should address issues of precision, accuracy and reproducibility of the results. Students should suggest how to reduce random error, remove systematic error and/or obtain greater control of variables. The modifications proposed should be realistic and clearly specified. It is not sufficient to state generally that more precise equipment should be used.
Manipulative skills
(This criterion must be assessed summatively at the end of the course.)
Aspect 1: following instructions
Indications of manipulative ability are the amount of assistance required in assembling equipment, the orderliness of carrying out the procedure(s) and the ability to follow the instructions accurately. The adherence to safe working practices should be apparent in all aspects of practical activities.
A wide range of complex tasks should be included in the scheme of work.
Aspect 2: carrying out techniques
It is expected that students will be exposed to a variety of different investigations during the course that enables them to experience a variety of experimental situations.
Aspect 3: working safely
The student’s approach to safety during investigations in the laboratory or in the field must be assessed.
The teacher should judge what is acceptable and legal under local regulations and with the facilities available.