Drawing scientific conclusions - OCR 21st CenturyEvaluating data
It is important to process and present data in a way that makes it easy to analyse. It is also important to evaluate the quality of data before drawing a conclusion.
The quality of any data should be evaluated before making any conclusions.
Precision, repeatability and reproducibility
Term
Meaning
Precision
Measurements are in close agreement
Repeatable
Measurements are very similar when repeated by the same person or group, using the same equipment and method
Reproducible
Measurements are very similar when repeated by a different person or group, using different equipment and/or methods
Term
Precision
Meaning
Measurements are in close agreement
Term
Repeatable
Meaning
Measurements are very similar when repeated by the same person or group, using the same equipment and method
Term
Reproducible
Meaning
Measurements are very similar when repeated by a different person or group, using different equipment and/or methods
Precision and repeatability can be seen easily from a table of results containing repeat measurement. If the repeat measurements are close together, the data is precise and repeatable.
Accuracy
Evaluation of the data should also consider accuracyHow close a numerical result is to the true value.. A measurement is accurate if it is close to the true valueThe actual value that a measurement should be..
To ensure the data is as accurate as possible, work out the best estimate of the true value.
Identify any outlierA measurement that appears very different to other repeat measurements. It should be included in the data unless a reason is found to explain it. (anomalous results) in the data. These are results that are very different to the others. For example, 2.2 and 0.1 are outliers:
0.9
1.0
1.2
0.9
1.1
2.2
1.1
0.8
0.1
1.2
0.9
1.0
1.2
0.9
1.1
2.2
1.1
0.8
0.1
1.2
Try to explain why the outlier is different. An outlier may be removed if there is a good reason to do so. For example, if there is a measurement or recording error.
Find the meanThe mean is calculated by adding all of the data and dividing by the number of items of data. of the remaining results. To find the mean add together the results and divide by the number of measurements.
Sometimes, outliers are not obvious until a graph is plotted.
If a data point does not fit into a trend then it is an outlier. The result should be circled in the graph and labelled as an outlier.