Students’ Ability of Statistical Reasoning in Descriptive Statistics
Problem Solving
Nila Kesumawati
Universitas PGRI Palembang, Jl.Jend. A. Yani, Lrg. Gotong Royong 9/10 Ulu, Palembang, Indonesia
Department of Mathematics Education, Universitas PGRI Palembang, Indonesia
Keywords: Students’ Statistical Reasoning; Descriptive Statistics; Problem Solving
Abstract: The problem of this research was some students unable to interpret the results of calculations in solving the
problem of descriptive statistics associated with the statistical reasoning. Students were able to solve the
problem procedurally only without understanding the meaning of the calculated results. Students knew the
concept, but they could not identify the use of the concept. This descriptive quantitative and qualitative
research aimed at describing the students' statistical reasoning ability in solving the problem of descriptive
statistics. The subjects of this research were 134 students of mathematics education and sports education,
University of PGRI Palembang. They were chosen using purposive sampling because they enrolled in Basic
Statistics Course. Reasoning test and interview was used to collect the data. The results stated that students'
statistical reasoning ability is in the multi-structural level category. This can be known from the ability of
statistical reasoning based on the measurement of Reading and Reid. In Prestructural Level there were 2
students who have no clear conceptual foundation; and in the Unistructural Level there were 25 students
focusing on one concept of statistics; at multi-structural level there were 104 students who focus on more
than one statistical concept; and at Relational Level there were 3 students who develop relationships with
various other statistics concept.
1 INTRODUCTION
Basic statistics is one of the important courses in
curriculum 2016 which based on KKNI, so the
students are expected to understand and implement
it. Statistics as knowledge provides a means to solve
the phenomenon or problems of life, in the working
environment, and in the science itself, as well as a
tool for evaluation of what has happened in
determining future policy (Moore, 1997; Kadir,
2015; Kesumawati, et.al. 2017). According to
Sundayana (2012), basic statistics course has four
aspects to be achieved, such as: (1) to provide
theoretical knowledge to the students; (2) to provide
practical skills in the form of statistical calculations;
(3) to provide an overview and experience of how to
solve problems with daily life related to problems;
and (4) to train students how to communicate the
results of the study, both in written and oral form.
The ability of students to communicate the
results of his studies by explaining or answering
questions about interpreting the results of
calculations is part of writing in communicating
understanding. NCTM (2000) stated that writing is
the way of communicating mathematics and
reinforcing students’ thinking, as this may affect
their thinking about ideas and concepts that writing
as the most important element in learning
mathematics. In addition, writing also can support
mathematical reasoning with problem-solving and as
a tool to internalize the characteristics of effective
communication. In line with, Bosse and Faulconer
(2008) stated outlined procedures that can be
employed in mathematics assessment to create
experiences that promote reading and writing as
tools for expressing mathematics understanding.
The researcher often sees students have difficulty
in interpreting the results that have been done. Based
on Lanani’s research (2015), some of the
weaknesses for students in the course of statistics
during this time are these materials: classification of
statistical data types, representation of statistical
data, measurement of statistical data, sample as a
representation of the population, and hypothesis
testing.
530
Kesumawati, N.
Students’ Ability of Statistical Reasoning in Descriptive Statistics Problem Solving.
DOI: 10.5220/0008524905300536
In Proceedings of the International Conference on Mathematics and Islam (ICMIs 2018), pages 530-536
ISBN: 978-989-758-407-7
Copyright
c
2020 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
Associated with the weakness for students in
statistics during this time, it is often encountered that
many students have not been able to interpret the
results for problem-solving of descriptive statistics.
Besides the weakness for statistical ability is also
experienced by the teacher. This is evidenced based
on the results of research that has been done by
Martadiputra (2010). It was found that statistical
reasoning ability of mathematics teachers, in both
junior and high school, on the material statistics
descriptive median material, population, and sample
are categorized very less; material representation
data and central tendency are categorized enough.
Overall, the average statistical reasoning ability of
them was in the medium category. In 2012, research
of Martadiputra was continued and still about the
statistical reasoning ability of undergraduate student
majoring in mathematics education at a State
University in Bandung. The results show that
students’ statistical reasoning ability is in a low
category. Other evidence is from community service
activity conducted by lecturer majoring in
mathematics education UPI in Kabupaten Subang
(Avip, 2010). It was found that the mean statistical
reasoning ability of teachers in the junior high
school and the senior high school reached 46% in
the medium category.
Statistical reasoning is a reasoning activity on
statistical materials which is the developed statistical
ideas form skills in using statistical concepts
(Lanani, 2015; Gal and Garfield, 1997; Garfield and
Chance, 2000). The important understanding of
statistical concepts in statistical ideas, such as
central tendency, deviation, various data
presentation, and correlation is part of the statistical
reasoning.
All this time, statistics is considered only as a
science for the solution to problems that are
mechanistic. However, it has a lot of usefulness in
everyday life related to principles if it is studied
further. This statement is supported by Dasari (2009:
40), that statistics are still considered only as a series
of the thinking process. Teachers and students
emphasize more on the particular rather than the
principle, the emphasis on mechanistic rather than
the main methodology, and the emphasis on a
special formula rather than a common one.
Specifically, the use of statistics is to describe
and predict based on phenomena as the collection of
results from the study. The ability of statistical
reasoning is needed to interpret and represent data
onto determining the correct decision on the data.
According to Dasari (2009), the ability of statistical
reasoning is the ability to make conclusions and
provide explanations based on data orientation with
respect to structured procedures, unstructured
procedures, and statistical concepts, and interpret the
process and statistical result.
Furthermore, Del Mas (2002) interprets
statistical reasoning as the ability to explain why and
how a result is processed and why and how to draw
conclusions. To find out how far the students’
statistical reasoning abilities, it is surely needed
measurement tools. The required measuring
instruments are the indicator of statistical reasoning
ability. According to La Nani (2014), indicators of
statistical reasoning ability are that students capable
of: (1) summarizing and explaining based on data
orientation; (2) understanding and interpreting
process and statistical results.
The aim of this research is to assess students’
reasoning statistical ability on central tendency,
deviation and data representation through essay
examinations particular, the question posed in this
research is how the student’s level of statistical
reasoning in basic statistics courses seen from the
way students answer/explain: (1) Prestructural; (2)
Unistructural; (3) Multistructural; and (4) Relational.
This research attempts to be different, yet
complementary, the emphasis on describes students’
statistical reasoning ability in descriptive statistics
problem solving based on the levels developed by
Reading and Reid (2006), i.e. pre-structural,
unistructural, multi-structural, and relational. It is a
little information about how students have studied
basic statistics courses to interpret the results
obtained, and such research is rare in colleges in
South Sumatera. This research contributed to (1) the
basis of knowledge for students, and (2) as the basis
for students in the course.
2 RESEARCH METHOD
This research used descriptive quantitative. The
instrument of this research was essay test that had
been validated by expert and had been declared
valid. The test made based on mathematical
statistical reasoning which consist of 5 questions.
This research was conducted at PGRI University of
Palembang included 134 students of academic year
2017/2018. It covers undergraduate students of the
second semester in mathematics education program
and the third semester in sports education program.
The reasons for choosing the students are that: (1)
the students are following the basic statistics course;
(2) the students are more easily managed by the
researcher to follow the planned research procedure.
Students’ Ability of Statistical Reasoning in Descriptive Statistics Problem Solving
531
Data was collected through essay test and interview.
In collecting the data, researcher giving an essay test
material consists of central tendency, data deviation,
and data representation at the middle of semester.
Students explain or interpret the results of the
research in descriptive statistics, which are necessary
to determine the level of students statistical
reasoning. The development of essay tests based on
reasoning statistical ability indicators has been
validated to determine student responses to research
instruments. Interview was conducted to find out
more student’s reasoning of their answer sheets.
The level of statistical reasoning with this
research is guided by Reading and Reid (2016) that
has four phases and arranged hierarchically in Table
1.
Table 1. Phase of Statistical Reasoning
Reasoning
Level
Descriptions of Statistical
Reasoning
Prestructural
No obvious concept based.
Unistructural
Only focuses on one statistics
concept.
Multistructural
Focusing on more than one
statistics concept.
Relational
Developing connection to
another statistics connection.
Furthermore, after analyzing the results of
student answers, the aspects used and the level of
statistical reasoning is adapted from Yusuf’s which
has been modified (2017), can be seen in Table 2.
Table 2. Phase of Statistical Reasoning for
Statistic Data Measuring
Phase 1
Phase 2
Phase 3
Phase 4
Prestruct
ural
0 score
20
Unistructu
ral
20
score
50
Multistructu
ral
50 score
90
Relation
al
90 score
100
3 RESULT AND DISCUSSION
From the results of examination in quantitative and
qualitative, completion of the students’ essay
resulted four identification level. These four levels
are adopted from the description of Reading and
Reid (2006) modified SOLO taxonomic. The
description of each level is as follows: (1) the
student does not have obvious conceptual
foundation. It means that they are only able to
determine the data of the problem but cannot
continue the solution onto the problem. It
categorized at prestructural level; (2) the students are
only focusing on one statistical concept. It means
that they can use only one information such as the
problem of determining standard deviation value and
variance and not yet know the relationship between
them as well as the relationship between mean,
median and mode of data. It is categorized at level
Unistructural; (3) the students focus on more than
one concept of statistics. It means that they can use
some information but do not connect. It is
categorized multistructural level; and (4) the
students can develop relation to other statistical
concepts. It means that they have completed
understanding of the process, the relation of rules
and the use of statistics, and students can conclude
in their own words. It is categorized relational level.
Results of students' overall statistical reasoning
appraisal (average = 57,2 and SD = 12,6) included in
the multistructural level category. This result is in
line with other findings about the average ability of
statistical reasoning ability (Dasari 2009;
Martadiputra, 2012; Avip, 2010). The following are
four main findings of the study based on Reading
and Reid (2006).
1. Statistical reasoning ability at prestructural
level is only reached by 2 students (1.5% of all
students) who have no obvious conceptual
base. At this level, students cannot start an
essay because they do not try to focus on the
problem. They are distracted by irrelevant
things. Students still think the more dominant
concrete-symbolic way so that students cannot
answer the problem to choose and give reason.
From 134 students that became the subject of
the research, there are 2 students at the
Prestructural level.
2. Statistical reasoning ability at unistructural
levels is reached by 25 students (18.7% of all
students) focusing only on one concept of
statistics. At this level, the student can focus on
the problem, generally only focus on one
aspect. They can answer issues related to
central tendency and dispersion tendency of
data given. In addition, they can solve the
Pearson slope problem and the coefficient of
tangles. They are also able to show that a curve
is normal, oblique to left, or right oblique.
They have a higher tendency to support their
answers by completing the ordered data. From
134 students who became the subject of
research, only 25 students are at the level of
Unistructural. Figure 1 is an example of the
ICMIs 2018 - International Conference on Mathematics and Islam
532
results of student’s work that can determine the
results of calculations and can determine that
the data is oblique to the left. The student also
understands that the more pointed a curve then
the smaller standard deviation so that the data
homogen.
Figure 1. Student's Answers Material Deviation
3. Statistical reasoning abilities at multistructural
level are reached by 104 students (77.6% of all
students) focusing on more than one statistics
concept. At this level, students display the
ability to think quantitatively and know more
than one aspect of data exploration. Generally,
there is a concrete-symbolic way of thinking
and has a concept that is more than one
relevant aspect. They can interpret histogram
and frequency polygon images into the table
frequency distribution. In the histogram and the
known frequency polygon, only middle scores
and the frequency is showed, but 30 students
cannot determine the lower and upper limits for
each interval. At this level, students can change
the value of z to standard numbers in order to
determine which candidates should be accepted
and give reasons. From 134 students that
became the subject of research, there are 104
students are at the Multistructural level. Figure
2 is an example of a student's answer in
interpreting the results after the calculation.
Figure 2. Student's Answer on Material of Data
Presentation
Student was interviewed about their reasoning
to solve the problem. The students observed the
bar chart from the problem then remember how
to create a frequency distribution table that the
interval should be the same. After creating a
frequency distribution table, they analyze data
from the table to determine the central
tendency. It means that the student knows more
than one concept, i.e. presenting data from bar
chart to frequency distribution table, determine
central tendency of it. Another example of
student answers can be seen in figure 3. It can
be showed that the result is wrong in
determining the length of the interval. Only
first interval class has right length of interval.
Otherwise, the next interval class is wrong. It is
because carelessness so that there is an error in
making the table distribution of frequency.
Figure 3. Student’s Inaccuracy on Material Creating
Table Frequency Distribution
4. Relational level of statistical reasoning ability
is reached by 3 students (2.2% of all students)
who can develop relation with various other
Students’ Ability of Statistical Reasoning in Descriptive Statistics Problem Solving
533
statistical concepts. At this level, students
display the ability to think analytically and
quantitatively about the data and be able to
explain various perceptive based on the data
obtained. From 134 students who became the
subject of research, there are 3 students who
are at the level of Relational. Figure 4 is an
example of student answers.
Figure 4. Student’s answer to the material of z-score
Student was interviewed about their reasoning
to conclude who is the best candidate to be
accepted. The student using z-score to
determine the best candidate because there
were given value of x, mean, and deviation
standard of each candidate. It means that the
student can relate various statistical concepts.
In this research there are two important
limitations. First, the source of assessment provided
for the analysis was an essay and the second was the
three basic statistical topics i.e. central tendency,
data deviation, and data presentation. This research
provides rich analysis through response comparisons
showing various levels of students' statistical
reasoning. It then offers insight into how the
students' statistical reasoning can influence the
lecture strategy in order to interpret the data.
The level of statistical reasoning can be as a
guide in identifying the weaknesses and strengths of
students in statistical reasoning (Joseph, 2017).
According to Rumsey (2002) the purpose of learning
statistics is that students understand statistics well in
order to make decisions and can develop research
skills. In addition, Lanani (2015) argues that
statistical reasoning plays a role in shaping students’
skills using concepts, rules and statistical processes.
Olani, et al (2011) states that the ability of statistical
reasoning refers to the ability to understand and
integrate statistical and ideas to interpret data and
make decisions based on statistical concepts.
Lovett (2001) found that to understand and
improve students’ statistical reasoning, needs
integrating three approaches, literature study
approach (theoretical), empirical studies, and
classroom-based research. Chan and Ismail (2014)
stated that there are five statistical reasoning tasks
in the assessment instrument which have been
created based on the initial statistical reasoning
framework, each item is associated with the sub-
processes of four key constructs, i.e. describing
data, organizing and reducing data, representing
data, and analyzing and interpreting data. The
dynamic spreadsheet of GeoGebra software is used
as a technological tool in solving tasks. This
statistical reasoning assessment instrument can be
utilized by instructors and researchers for further
investigation in future studies.
Agus et. al. (2013) concluded to develop a
measurement instrument to assess undergraduate
students’ statistical reasoning on uncertainty and on
association, in relation to methods of proof
presentation. By the construction of paired items
in two forms, we could compare the reasoning
applied to problem resolution, regarding the specific
problem structure. Furthermore, P
i
m
e
n
ta (2006)
found
new technologies involve a reformulation of
contents and methodology used
f
or teaching
statistics. Developing students statistical reasoning
becomes an important task
f
or teachers of applied
statistics. This is particularly true in the field of
health sciences. In this wor
k
the statistical
reasoning ability acquired by health sciences
students was evaluated in the
c
on
text
of their final
undergraduate pro
ject
.
4 CONCLUSIONS
Based on the research result, the conclusion of this
research is that the students' statistical reasoning
ability in problem solving of descriptive statistics is
in the multistructural level category. In detail, the
statistical reasoning abilities obtained based on
Reading and Reid measurements, i.e. in Prestructural
level categories there are 2 students has no clear
conceptual foundation; in unistructural level
category, there are 25 students only focus on one
concept of statistics; in the multistructural level
category, there are 104 students focusing on more
than one concept of statistics; and in the relational
level category, there are 3 students developed in
connection with various other statistical concepts.
According to the limitation of this research, for
further researcher who will conduct similar research,
ICMIs 2018 - International Conference on Mathematics and Islam
534
it is suggested that: (1) the instrument is not only
using essay but also completed with interview and
observation; (2) the topic should be extended,
because the more topics is used the more it will be
known the whole ability of students' statistical
reasoning.
ACKNOWLEDGEMENTS
I would like to express my special thanks and
gratitude to my rector (Bukman Lian) who gave me
the golden opportunity to do this wonderful project
on the topic “Students’ Ability of Statistical
Reasoning in Descriptive Statistics Problem
Solving”. Secondly, I would also like to thank my
dean (Dessy Wardiah) and friends (Muhammad
Kristiawan, Ansari Saleh Ahmar, Indah Rahayu, Ali
Akbarzam, and Novita Sari) who helped me a lot in
finalizing this project within the limited time frame.
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