<?xml version="1.0" encoding="ISO-8859-1"?><article xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance">
<front>
<journal-meta>
<journal-id>0038-2353</journal-id>
<journal-title><![CDATA[South African Journal of Science]]></journal-title>
<abbrev-journal-title><![CDATA[S. Afr. j. sci.]]></abbrev-journal-title>
<issn>0038-2353</issn>
<publisher>
<publisher-name><![CDATA[Academy of Science of South Africa]]></publisher-name>
</publisher>
</journal-meta>
<article-meta>
<article-id>S0038-23532012000200018</article-id>
<title-group>
<article-title xml:lang="en"><![CDATA[Educational outcomes: Pathways and performance in South African high schools]]></article-title>
</title-group>
<contrib-group>
<contrib contrib-type="author">
<name>
<surname><![CDATA[Reddy]]></surname>
<given-names><![CDATA[Vijay]]></given-names>
</name>
<xref ref-type="aff" rid="A01"/>
</contrib>
<contrib contrib-type="author">
<name>
<surname><![CDATA[van der Berg]]></surname>
<given-names><![CDATA[Servaas]]></given-names>
</name>
<xref ref-type="aff" rid="A02"/>
</contrib>
<contrib contrib-type="author">
<name>
<surname><![CDATA[Janse van Rensburg]]></surname>
<given-names><![CDATA[Dean]]></given-names>
</name>
<xref ref-type="aff" rid="A01"/>
</contrib>
<contrib contrib-type="author">
<name>
<surname><![CDATA[Taylor]]></surname>
<given-names><![CDATA[Stephen]]></given-names>
</name>
<xref ref-type="aff" rid="A02"/>
</contrib>
</contrib-group>
<aff id="A01">
<institution><![CDATA[,Human Sciences Research Council Education and Skills Development Research Programme ]]></institution>
<addr-line><![CDATA[Durban ]]></addr-line>
<country>South Africa</country>
</aff>
<aff id="A02">
<institution><![CDATA[,University of Stellenbosch, Stellenbosch Department of Economics ]]></institution>
<addr-line><![CDATA[Stellenbosch ]]></addr-line>
<country>South Africa</country>
</aff>
<pub-date pub-type="pub">
<day>00</day>
<month>00</month>
<year>2012</year>
</pub-date>
<pub-date pub-type="epub">
<day>00</day>
<month>00</month>
<year>2012</year>
</pub-date>
<volume>108</volume>
<numero>3-4</numero>
<fpage>88</fpage>
<lpage>95</lpage>
<copyright-statement/>
<copyright-year/>
<self-uri xlink:href="http://www.scielo.org.za/scielo.php?script=sci_arttext&amp;pid=S0038-23532012000200018&amp;lng=en&amp;nrm=iso&amp;tlng=en"></self-uri><self-uri xlink:href="http://www.scielo.org.za/scielo.php?script=sci_abstract&amp;pid=S0038-23532012000200018&amp;lng=en&amp;nrm=iso&amp;tlng=en"></self-uri><self-uri xlink:href="http://www.scielo.org.za/scielo.php?script=sci_pdf&amp;pid=S0038-23532012000200018&amp;lng=en&amp;nrm=iso&amp;tlng=en"></self-uri><abstract abstract-type="short" xml:lang="en"><p><![CDATA[We analysed the pathways and performances in mathematics of high (secondary) school students in South Africa using a panel-like data set of Grade 8 students who participated in the 2002 Trends in International Mathematics and Science Study (TIMSS) and who were tracked to Grade 12 examination data sets. We examined the relationship between TIMSS mathematics performance and reaching Grade 12, the selection of and performance in Grade 12 mathematics, and success rates in the matriculation examination. The progression of students from schools serving middle-class (Subsystem M) and poorer students (Subsystem P, the majority) was compared. Firstly, mathematics achievement scores in South Africa are low and different performance patterns were shown between the two subsystems. Secondly, students who started with similar Grade 8 mathematics scores had different educational outcomes 4 years later. In Subsystem M schools, Grade 8 mathematics scores were a good indicator of who would pass matric, whilst this relationship was not as strong in Subsystem P schools. Thirdly, there was a stronger association between TIMSS Grade 8 scores and subject choice of matric mathematics in Subsystem M schools than in Subsystem P schools. Fourthly, there was a strong correlation between Grade 8 mathematics performance and matric mathematics achievement. Mathematics performance in the earlier years predicted later mathematics performance. To raise exit level outcomes, mathematics scores need to be raised by Grade 8 or earlier. To improve educational and labour market outcomes, the policy priority should be to build foundational knowledge and skills in numeracy.]]></p></abstract>
</article-meta>
</front><body><![CDATA[ <p align="right"><font size="2" face="Verdana, Arial, Helvetica, sans-serif"><b>RESEARCH    ARTICLES</b></font></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="4"><b><a name="top"></a>Educational    outcomes: Pathways and performance in South African high schools</b></font></p>     <p>&nbsp;</p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>Vijay Reddy<sup>I</sup>;    Servaas van der Berg<sup>II</sup>; Dean Janse van Rensburg<sup>I</sup>; Stephen    Taylor<sup>II</sup></b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><sup>I</sup>Human    Sciences Research Council, Education and Skills Development Research Programme,    Durban, South Africa    <br>   <sup>II</sup>Department of Economics, University of Stellenbosch, Stellenbosch,    South Africa</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><a href="#back">Correspondence    to</a></font></p>     <p>&nbsp;</p>     ]]></body>
<body><![CDATA[<p>&nbsp;</p> <hr size="1" noshade>     <p><font size="2" face="Verdana, Arial, Helvetica, sans-serif"><b>ABSTRACT</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">We analysed the    pathways and performances in mathematics of high (secondary) school students    in South Africa using a panel-like data set of Grade 8 students who participated    in the 2002 Trends in International Mathematics and Science Study (TIMSS) and    who were tracked to Grade 12 examination data sets. We examined the relationship    between TIMSS mathematics performance and reaching Grade 12, the selection of    and performance in Grade 12 mathematics, and success rates in the matriculation    examination. The progression of students from schools serving middle-class (Subsystem    M) and poorer students (Subsystem P, the majority) was compared. Firstly, mathematics    achievement scores in South Africa are low and different performance patterns    were shown between the two subsystems. Secondly, students who started with similar    Grade 8 mathematics scores had different educational outcomes 4 years later.    In Subsystem M schools, Grade 8 mathematics scores were a good indicator of    who would pass matric, whilst this relationship was not as strong in Subsystem    P schools. Thirdly, there was a stronger association between TIMSS Grade 8 scores    and subject choice of matric mathematics in Subsystem M schools than in Subsystem    P schools. Fourthly, there was a strong correlation between Grade 8 mathematics    performance and matric mathematics achievement. Mathematics performance in the    earlier years predicted later mathematics performance. To raise exit level outcomes,    mathematics scores need to be raised by Grade 8 or earlier. To improve educational    and labour market outcomes, the policy priority should be to build foundational    knowledge and skills in numeracy.</font></p> <hr size="1" noshade>     <p>&nbsp;</p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>Introduction</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The hope and aspiration    for any parent, society or government is that children and youth receive a good    education and that the capital, capabilities and skills gained from schooling    lead to personal development, citizenship and readiness for the labour market.    South Africa, like other economically unequal countries, has prioritised improving    access to and quality of education, and thus to improving education outcomes.    Mathematics and science are key areas of knowledge and competence, and government    has emphasised the centrality of mathematics and science as part of the human    development strategy for South Africa.<sup>1</sup> Whilst there have been successes    in increasing access to education, the stagnation of, especially mathematics,    test scores over time suggests that resolving quality and outcome issues remains    elusive.<sup>2,3,4,5,6</sup></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Given the persistent    pattern of low achievement scores for students from low-income households, the    research and policy challenge is how to improve the schooling system to break    this cycle of poor achievement in mathematics, as well as in other problem areas,    namely, languages and sciences. We need to move beyond the legacy questions    to understand why, despite many efforts of government and other key role players,    we have not been successful in improving these educational outcomes. This analytic-descriptive    study reports on an analysis of students' pathways and performances in the high    school phase.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">To create the sample    population, we used a unique panel-like data set which identified a group of    students who participated in 2002 in the Grade 8 Trends in International Mathematics    and Science Study (TIMSS 2002) and were also in the Grade 12 (matriculation)    examinations data set. This group provided a good example of a longitudinal    data set with achievement scores at both the Grade 8 and Grade 12 levels. Using    these two data sources, it was possible to examine the associations between    Grade 8 mathematics performance in TIMSS and the selection of mathematics as    a matric subject, Grade 12 mathematics performances, and patterns of passing    matric.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The South African    school system can be seen as being made up of two historically and persistently    differently functioning subsystems,<sup>4,5,6</sup> and it is appropriate to    disaggregate the data and outputs for these two subsystems. The study categorises    the schools which largely serve students from poorer homes as Subsystem P and    those which largely serve middle-class students as Subsystem M. Subsystem P    schools, which are the majority (80%), refer to schools which historically served    Black African students in South Africa during the apartheid era. These schools    were provided with the fewest resources and still bear the scars of that legacy;    they are located in areas occupied by low-income households. These schools cater    for a majority of students for whom the language of instruction (English) is    their second or third language. By contrast, schools which were categorised    as Subsystem M schools were historically attended by White and Indian students    (we use the race terms in this article to reflect the historical resourcing    patterns to different groups). These schools were better resourced under apartheid,    are generally located in higher-income areas, and the majority of their students    study in English as their first language. These schools constitute about 14%    of the schools in the country. Because of their heterogeneity, and because they    did not fit well into the two categories, for this analysis we ignored the schools    that were attended historically by Coloured students.</font></p>     ]]></body>
<body><![CDATA[<p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>Education outcomes:    Student pathways and performances</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Through an analysis    of students' mathematics pathways and performances in the high school phase,    this article provides new insights into educational outcomes in an unequal system.    Firstly, we reviewed research analysing large-scale achievement data sets which    identified determinants of educational quality and outcomes and, secondly, we    reviewed research using panel data sets containing cognitive scores to examine    student pathways and performances over time.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Since the 1970s,    the availability of large-scale representative data sets, with information on    student academic achievement, has provided an opportunity to undertake statistical    or econometric analyses that can identify variables subject to policy control    which can influence student cognitive achievement. Analyses to identify these    key determinants using education production-function models<sup>7,8,9,10</sup>    or school effectiveness or school improvement models<sup>11,12,13,14</sup> for    a quality education, have been undertaken in both high-income and low-income    country contexts.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Although these    studies have advanced our understanding of the education process, there are    limits to how they can advance our understanding of the determinants to improve    education outcomes. These limitations apply even in high-income countries with    good quality data and less extreme educational inequality, and where the basic    inputs are in place.<sup>15</sup> In developing country contexts, where achievement    scores are low and where the basic educational components are not in place,    results from these statistical analyses are sometimes less informative regarding    what could make a difference in achieving quality education.<sup>15</sup> There    are limitations to statistical analyses and modelling from large achievement    data sets: they can only show a 'snapshot' of a school at any particular time<sup>16</sup>;    there is a lack of agreement on the determinants of educational quality<sup>15</sup>;    there is a danger of reductionism and invalid specification of causality inherent    in school effectiveness studies<sup>17,18</sup>; the determinants of improved    education quality identified are more effective in already well-performing schools<sup>19</sup>;    and there is a concern that these studies do not deal adequately with social    class in the analysis.<sup>12</sup> Extending the analysis, especially in low-income    countries, from a snapshot to a longitudinal framework, provides possibilities    for a different insight on how to improve achievement outcomes.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">There have been    only a few investigations of the pathways and performances of school students    over time. However, with an increasing number of large and representative panel    data sets, a body of literature is developing. Panel studies have been undertaken    on student pathways in relation to progression through an educational system<sup>20,21,22</sup>;    to educational and career aspirations<sup>23,24,25,26,27</sup>; to aspirations,    performance and transition from school to post-school institutions; and to labour    markets and employment.<sup>10,28,29,30,31,32</sup> The few panel studies that    have included cognitive or academic performance data have been used to analyse    academic performance patterns over time, thus predicting patterns of future    performance.<sup>33,34,35,36,37</sup></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The main findings    that emerged from the review of panel data sets which included cognitive and    achievement data were, firstly, that performance in earlier years predicts later    performance; and, secondly, that gaps in cognitive ability emerge during early    childhood as a consequence of differences in family background and, over time,    these gaps widen.<sup>34,36,38</sup> Thirdly, children with educated and wealthy    parents who score poorly in the early tests tend to catch up, whereas children    with lower educated and lower-income parents who score poorly are unlikely to    catch up.<sup>33,35</sup></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The early years    of one's life are an important phase for promoting cognitive development and    the acquisition of foundational knowledge and skills. Many poor children fail    to reach their potential cognitive development because of deficiencies in their    early development. Heckman<sup>38</sup> reports that, in the USA:</font></p>     <blockquote>        <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">going across      income groups, gaps in cognitive ability emerge early in the life cycle and      widen slightly in the early years of schooling. They stay constant after the      age of eight, and school environments play only a small role in accounting      for, narrowing or widening the gaps.</font></p> </blockquote>     ]]></body>
<body><![CDATA[<p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">In Britain, Feinstein<sup>33</sup>    found that pre-school development tests provided a strong indication of a child's    later educational success and that this success was largely attributable to    family background. Children with educated and wealthy parents who scored poorly    in the early tests tended to catch up, whereas children with lower educated    and lower-income parents who scored poorly were unlikely to catch up, and were    an at-risk group. A subsequent study by Blanden and Machin<sup>35</sup> corroborated    these findings. Children born in 2000 to the lowest income households who had    scored some of the best results in tests at age three had, by the age of five,    lost much of their early advantage. By age seven, these youngsters were overtaken    by children from the wealthiest homes who were bottom in the tests at age three.    The gap in the average percentile ranking in the tests between high achieving    children from poor backgrounds and low achieving children from affluent backgrounds    had shrunk from more than 70 percentiles at age three to 20 percentiles by age    five.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">In the unequal    South African school system, the rate of grade progression is considerably higher    amongst students within historically White schools (Subsystem M) than amongst    those in historically Black schools (Subsystem P). For example, Lam et al.<sup>37</sup>    found that 84% of White students who were in Grades 8 and 9 in 2002 successfully    advanced three grades by 2005 compared with only 32% of Black African students.    Furthermore, Lam et al.<sup>37</sup> demonstrated that grade progression in    the schools typically attended by Black students was poorly linked to actual    ability (as measured by assessment items) and learning. They found that baseline    literacy and numeracy scores strongly predicted grade progression between Grades    8 and 11 for White and Coloured students, but weakly predicted progression for    Black students. In contrast, no racial differences were found in the relationship    between baseline scores and passing the matric examination, which is nationally    standardised. They therefore propose that grade progression within schools attended    by Black children is characterised by a considerable degree of randomness, with    the consequence of high enrolment despite high rates of failure.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">We know little    about the patterns of cognitive development and mathematical performance over    time. Given the limited literature in South Africa that uses panel data to track    student academic performance, this study adds to the literature by using mathematics    achievement data from two different time periods in two grades, as well as aggregate    performance data from Grade 12, and analyses the pathways (subject choices)    and performance patterns of students in school.</font></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>Methodology</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Panel studies measure    the same sample of respondents at different times, and can reveal shifting attitudes    or patterns of behaviour over time. They are thus useful in predicting long-term    or cumulative effects.<sup>39</sup> This panel-like study tracks the sample    of Grade 8 students who participated in TIMSS 2002 to the Grade 12 examination    data set.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">South Africa participated    in the TIMSS in 2002. The study collected mathematics and science achievement    data from 8952 Grade 8 students in the country<sup>5</sup> and created a record    of the name, date of birth and school attended in 2002 for each student who    participated in the study. Grade 12 is the last year of schooling, during which    students sit for a public, common examination (called matric). For the purposes    of this study, the Department of Education allowed access to the matriculation    2006 and 2007 databases; these were searched for TIMSS 2002 participants. A    total of 2734 (30.1%) unique student records from the TIMSS 2002 Grade 8 data    set were found in the matric 2006 and 2007 data sets (repeaters were found in    both the 2006 and 2007 matric databases). The General Household Surveys (GHS)    of 2005 and 2006 calculated the progression rate from Grade 8 to Grade 12 as    approximately 57%. This rate provides an indication of how many students were    mistakenly not tracked to matric as a result of the imperfect matching process.    Similarly, expected progression rates for each race group in our data were obtained    from the GHS data. These progression rates were then used to weight up those    students identified in matric and to weight down those students not identified    in matric. This weighting was done separately for each race group. The weighting    procedure ensured that the proportions within our matric sample were broadly    representative of the entire population of matriculants in South Africa. In    our subsequent analysis, where appropriate, we present the weighted information.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">We used the TIMSS    2002 and matric mathematics scores as the proxy measure of analytical skills.    These analytical skills are highly valued and are important for an individual's    personal, social and economic development. Students who were in Grade 8 in 2002    made a range of subject choice selections and could have traversed one of four    pathways: not continued with schooling after Grade 8; continued to Grade 12    without mathematics; continued to Grade 12 with mathematics at standard grade;    and continued to Grade 12 with mathematics at higher grade.</font></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>Results</b></font></p>     ]]></body>
<body><![CDATA[<p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The panel-like    achievement score data set provided a unique opportunity to examine (1) the    relationship between Grade 8 and Grade 12 mathematics performance; (2) the extent    to which TIMSS mathematics scores correlated with matric pass rates; and (3)    the extent to which TIMSS mathematics scores informed matric mathematics selection    and correlated with matric mathematics performance.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>Grade 8 and    Grade 12 mathematics performances</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The matric pass    rate of the Grade 8 group that reached Grade 12 was high at 72%. There was a    high participation in mathematics (60%), although only 10% participated at the    higher-grade level. <a href="/img/revistas/sajs/v108n3-4/18t01.jpg">Table 1</a>    gives the average mathematics scores in TIMSS and matric for Subsystem P and    Subsystem M schools.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Overall, Grade    12 mathematics performance was low, with the average standard-grade mathematics    score being 25% and the average higher-grade mathematics score being 43%. The    mean score in mathematics in Subsystem M schools was close to double that of    students in Subsystem P schools at the standard grade, and more than double    that at the higher-grade level. The TIMSS scores were exceedingly low by international    standards. The international mean has been set at 500 and the standard deviation    across countries at 100. On average, including those who did not reach matric,    the South African performance in TIMSS was more than two standard deviations    below the international mean. Furthermore, there was a fair degree of correlation    between the mean TIMSS and matric mathematics scores in the different cells.    Notably, the correlation was better in Subsystem M schools and was greater for    higher-grade than for standard-grade mathematics. It is also notable that students    in Subsystem P schools with low Grade 8 mathematics scores often enrol for mathematics    at the higher grade level. The mean TIMSS performance of students from Subsystem    P schools who chose to do higher-grade mathematics in matric (TIMSS score 285)    was considerably lower even than those Subsystem M students who elected to take    standard-grade rather than higher-grade mathematics in matric (TIMSS score 425).</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>TIMSS score    and passing Grade 12 examinations</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Our initial hypothesis    was that the TIMSS mathematics scores of students who reach matric, select mathematics    as a subject and pass matric and mathematics would be higher than the scores    of students who are not successful. We identified three distinct groups in the    TIMSS data set, (1) those identified in the matric 2006 data set, (2) those    identified in the matric 2007 data set and (3) those not identified in either    data set (i.e. those that did not reach matric). The kernel density graphs of    the TIMSS mathematics scores for the three groups allow a more detailed and    nuanced picture of the mathematics starting point of the students (<a href="#f01">Figure    1</a>).</font></p>     <p><a name="f01"></a></p>     <p>&nbsp;</p>     <p align="center"><img src="/img/revistas/sajs/v108n3-4/18f01.jpg"></p>     <p>&nbsp;</p>     ]]></body>
<body><![CDATA[<p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">As expected, the    TIMSS modal mathematics score for those identified in the matric data sets was    higher than that for those who could not be tracked to matric. The graph for    the matric 2006 group displays a wide tail to the right, indicating that, in    general, students who reached their matric year with consistent grade progression    had higher TIMSS mathematics scores. An unexpected finding was the range of    mathematics scores amongst the three groups, and the degree of overlap of the    three graphs. It would seem that students starting with similar TIMSS mathematics    scores at Grade 8 can have quite different outcomes 4 years later. Disaggregating    the kernel density of TIMSS scores for Subsystem P and Subsystem M schools reveals    a different pattern for these two sets of schools (<a href="#f02">Figure 2</a>    and <a href="#t02">Table 2</a>).</font></p>     <p><a name="f02"></a></p>     <p>&nbsp;</p>     <p align="center"><img src="/img/revistas/sajs/v108n3-4/18f02.jpg"></p>     <p>&nbsp;</p>     <p><a name="t02"></a></p>     <p>&nbsp;</p>     <p align="center"><img src="/img/revistas/sajs/v108n3-4/18t02.jpg"></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Students in Subsystem    P schools, for both those identified and those not identified in matric year,    had low TIMSS scores, with the difference of the mean TIMSS scores being 27    points (approximately one-quarter of a standard deviation). As indicated, scores    were normalised to an international mean of 500 and a standard deviation of    100. The South African standard deviation is similar in magnitude. Subsystem    M schools had higher TIMSS scores, and the difference between the mean TIMSS    scores of those who did and those who did not reach matric was 36 points. In    general, within both groups, it would seem that TIMSS Grade 8 mathematics scores    did not differentiate clearly between those who did and those who did not continue    to the matric year. Although, it should be remembered that most of those in    Subsystem M reached Grade 12, even though they may not have been identified    in the study's data.</font></p>     ]]></body>
<body><![CDATA[<p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The analysis was    extended to examine the patterns of TIMSS score for those who 'passed matric'    and those who 'did not pass', in Subsystem P and Subsystem M schools (<a href="#t03">Figure    3</a>). There was a high degree of overlap of the TIMSS scores between those    who 'passed matric' and those who 'did not pass matric' in Subsystem P schools.    The mean TIMSS scores were extremely low (226) for those who did not pass matric    and 261 for those who passed matric. There was thus a small difference of 35    points between the two groups. In the Subsystem M schools, there was a higher    degree of differentiation. The mean TIMSS score was 324 for those who did not    pass matric and 444 for those who did pass (<a href="#t03">Table 3</a>). There    was thus a sizeable difference of 120 points between the two groups.</font></p>     <p><a name="t03"></a></p>     <p>&nbsp;</p>     <p align="center"><img src="/img/revistas/sajs/v108n3-4/18f03.jpg"></p>     <p>&nbsp;</p>     <p><a name="t03"></a></p>     <p>&nbsp;</p>     <p align="center"><img src="/img/revistas/sajs/v108n3-4/18t03.jpg"></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">To further explore    the relationship between TIMSS mathematics scores and those who passed matric,    the TIMSS scores of those who passed matric were disaggregated into deciles,    and the extent to which students from Subsystem P and Subsystem M schools converted    their TIMSS scores to matric passes was examined (<a href="#f04">Figure 4</a>).</font></p>     ]]></body>
<body><![CDATA[<p><a name="f04"></a></p>     <p>&nbsp;</p>     <p align="center"><img src="/img/revistas/sajs/v108n3-4/18f04.jpg"></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">As expected, students    in the higher deciles (deciles 8 to 10) of TIMSS scores had higher pass rates    than those in the lower deciles. Students in the higher performance deciles    from both subsystems converted to matric passes at an almost similar rate. The    pass rates of students in the same TIMSS decile (deciles 5 to 7) were different    for students from Subsystem P and Subsystem M schools, with students from Subsystem    M schools converting to matric passes at a higher rate. Thus students starting    with the same mathematics capability in Grade 8, measured by TIMSS score, converted    to passing matric at a different rate in Subsystem P and Subsystem M schools.    A further point of significance is that two out of every ten students who fell    into the lowest four TIMSS mathematics deciles did pass matric.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>TIMSS scores    and matric selection and performance</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">We analysed the    extent to which TIMSS mathematics scores were associated with the choice of    mathematics as a matric subject and the performance in matric mathematics. Firstly,    we plotted the kernel density of TIMSS mathematics scores for students identified    in the matric data set, according to whether they took mathematics in matric    or not (<a href="#f05">Figure 5</a>); secondly, we plotted a graph of average    matric mathematics marks by TIMSS decile positions in order to examine their    correlation (<a href="#t04">Table 4</a>).</font></p>     <p><a name="f05"></a></p>     <p>&nbsp;</p>     <p align="center"><img src="/img/revistas/sajs/v108n3-4/18f05.jpg"></p>     ]]></body>
<body><![CDATA[<p>&nbsp;</p>     <p><a name="t04"></a></p>     <p>&nbsp;</p>     <p align="center"><img src="/img/revistas/sajs/v108n3-4/18t04.jpg"></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The kernel density    plots of TIMSS scores of students from Subsystem P and Subsystem M schools who    either took or did not take matric mathematics as a subject reflect different    patterns of choice. In Subsystem P schools, there was little difference in the    prior TIMSS mathematics performance between students who did and students who    did not choose mathematics as a matric subject. In contrast, students in Subsystem    M schools who took mathematics at matric generally had higher TIMSS mathematics    scores in Grade 8 than those who did not continue with mathematics.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">As noted in <a href="/img/revistas/sajs/v108n3-4/18t01.jpg">Table    1</a>, matric mathematics performance and TIMSS mathematics performance were    low. The relationship between the average matric mathematics mark and TIMSS    mathematics scores is illustrated by a plot of these two sets of scores by the    TIMSS deciles into which the student scores fall (<a href="#f06">Figure 6</a>).    Although low, the average matric mathematics mark increased in higher TIMSS    deciles, and there was a strong correlation between Grade 8 TIMSS and Grade    12 matriculation mathematics performance. Thus the TIMSS Grade 8 mathematics    mark strongly correlated with the mathematics performance in Grade 12.</font></p>     <p><a name="f06"></a></p>     <p>&nbsp;</p>     <p align="center"><img src="/img/revistas/sajs/v108n3-4/18f06.jpg"></p>     ]]></body>
<body><![CDATA[<p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>Key findings</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">We examined the    correlation between Grade 8 mathematics performance and the mathematics pathways    in high schools and performance in Grade 12 examinations. Grade 8 mathematics    scores are a good indicator of analytical capabilities, and one would expect    that those with higher mathematics scores would have progressed to Grade 12    and achieved success in the Grade 12 examinations. The expectation would also    be that their subject choices in the senior secondary level would have included    mathematics at the higher-grade levels, and that those with better TIMSS mathematics    performance would have achieved higher matric mathematics scores.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The findings of    the study indicate, firstly, that educational achievement in South Africa, measured    by TIMSS mathematics scores, is extremely low. The participation, performance    and progression rates in Subsystem M and Subsystem P are significantly different,    with Subsystem M students performing at a higher level than those in Subsystem    P.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Secondly, we found    that students starting with similar TIMSS Grade 8 mathematical scores may have    quite different educational outcomes 4 years later. Grade 8 mathematics scores    appear not to predict who will or will not reach matric, although this result    may at least partly be attributable to our not being able to successfully identify    all those who actually reached matric. However, Grade 8 mathematics scores are    a good indicator of who can <i>pass</i> matric in Subsystem M schools. For Subsystem    P schools, although the higher TIMSS scores can predict who has a higher probability    of passing matric examinations, this relationship is not as strong. Students    who come to secondary school with high Grade 8 mathematics scores, whether from    Subsystems M or P, are able to convert to passing matric. For those in the middle    bands of performance, the rate of conversion is different in the two subsystems,    with Subsystem M achieving higher rates of conversion than Subsystem P schools.    A surprising finding was that, in Subsystem P schools, one in five students    (20%) whose TIMSS score was in the lowest four deciles was nevertheless able    to convert that low demonstrated capability into passing matric.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Thirdly, for Subsystem    M schools, TIMSS Grade 8 scores are a good sorter for the choice of matric mathematics    as a subject, but, for the majority in Subsystem P schools, the subject choice    of mathematics has little to do with earlier mathematics performance in TIMSS.    Many students with weak TIMSS scores have high aspirations for participation    and performance in mathematics, and, even with low scores, register for higher-grade    rather than for standard-grade mathematics.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Lastly, there is    a high correlation between the mean Grade 8 mathematics score and the matric    mathematics scores, with this correlation being higher in Subsystem M schools    than in Subsystem P schools. Students with higher Grade 8 mathematics performance    scores tend to achieve success in matric mathematics. However, it would seem    that for students who have low mathematics scores in Grade 8, schooling cannot    provide the necessary inputs to overcome their low mathematics scores achieved    in earlier grades and cannot improve their mathematical competencies.</font></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>Conclusion:    Talking back to theory and policy</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">In our unequal,    low performing educational system, Grade 8 mathematics performance predicts    Grade 12 mathematics performance for all students. Across the two subsystems,    Grade 8 performance does not predict equally strongly who will or will not reach    matric. The two subsystems also behave differently with respect to mathematics    subject selection and passing the matriculation examination. In Subsystem P,    selection of mathematics for further study is not influenced by earlier mathematics    performance, whilst in Subsystem M students with higher TIMSS scores select    mathematics to study further. For students from schools historically serving    middle-class households, Grade 8 mathematics performance is strongly correlated    to passing matric; however, Grade 8 mathematics performance is poorly correlated    with passing matric in students from lower-resourced schools situated in poorer    areas and serving poorer students.</font></p>     ]]></body>
<body><![CDATA[<p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The strong relationship    between Grade 8 and Grade 12 mathematics scores corroborates findings in the    literature that earlier mathematics performance and strong foundational knowledge    form the base for subsequent learning. Analytical skills in mathematics need    to be built up from the early years. Mathematical knowledge is hierarchical    in nature, and strong prior knowledge is therefore critical for conceptual development.    The acquisition of these capabilities is shaped in the early years by the nature    and quality of interactions in the home and community, and by the quality of    inputs from the school.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">In Subsystem P,    the progression from Grade 8 to Grade 12 does not fit the expected pattern,    that is, that those with high Grade 8 mathematics scores will reach and pass    matric and those with lower mathematics scores may not do so. Students starting    with similar mathematics scores at the Grade 8 level may have different educational    outcomes 4 years later. The reason why students with low TIMSS mathematics scores    from poorer schools pass at matric level may be that TIMSS mathematics scores    are not an adequate indicator of requirements for passing matric, or that students    with weaker mathematics background are nonetheless successful in passing matric    because of better performance in other subjects. Educational investments made    post Grade 8 may enable students to improve their performance in subjects besides    mathematics, and to pass matric despite failing mathematics.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The pathways of    students post Grade 8 in Subsystem P schools, that is, whether or not they select    mathematics as a subject, shows that there is little relationship between demonstrated    ability and choice of subjects. Students do not seem to be using information    about their prowess in mathematics to make appropriate subject choices, perhaps    because they do not receive enough accurate feedback at school about their mathematics    performance.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The policy implication    from these findings is that raising the mathematics scores at Grade 12 requires    raising the scores at Grade 8. Extrapolating from this, and linking to the literature    on cognitive development, we need to raise the mathematics and numeracy scores    in the earlier years of schooling. High levels of attention paid to the early    years of learning (reception year and foundation phase) for children from environments    of lower household and parental resources would contribute to breaking the cycle    of poor academic performance. Without this, both the background and school will    continue to let the children down and the reproduction of inequality will continue.    Students must know and understand earlier concepts; only when they do understand    these early concepts, will they progress. We have shown that by the time students    reach the secondary level, it is too late to significantly improve matric mathematics    performance.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Ideally, the study    would have used data of cognitive scores from the early years and tracked the    cohort to later years, but as the only available cohort cognitive performance    data is for Grades 8 and 12, only the relationship between Grades 8 and 12 could    be examined. How cognitive development is shaped, in mathematics and in other    subjects, can be assisted by panel studies research, by collecting data from    the earlier years of schooling, and by paying greater attention to obtaining    cognitive data. These issues should therefore be on the education research agenda    for future studies.</font></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>Acknowledgements</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>Competing interests</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">We declare that    we have no financial or personal relationships which may have inappropriately    influenced us in writing this article.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>Authors' contributions</b></font></p>     ]]></body>
<body><![CDATA[<p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">V.R. was the principal    author and conceptualised the study with S.v.d.B. S.v.d.B. provided econometric    input and contributed to the writing of the manuscript. D.J.v.R. was involved    in data construction, analysis and econometric input. S.T. provided data support,    econometric input and assistance with analysis.</font></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>References</b></font></p>     <!-- ref --><p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">1.&nbsp;Mbeki T.    Address of the President of South Africa, Thabo Mbeki, at the second joint sitting    of the third democratic parliament, Cape Town. 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<body><![CDATA[<br>   Accepted: 18 Oct. 2011    <br>   Published: 14 Mar. 2012</font></p>      ]]></body>
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