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Taking a simplified approach to statistics, this textbook teaches students the skills required to conduct and understand quantitative research. It provides basic mathematical instruction without compromising on analytical rigor, covering the essentials of research design; descriptive statistics; data visualization; and statistical tests including t-tests, chi-squares, ANOVAs, Wilcoxon tests, OLS regression, and logistic regression. Step-by-step instructions with screenshots are used to help students master the use of the freely accessible software R Commander. Ancillary resources include a solutions manual and figure files for instructors, and datasets and further guidance on using STATA and SPSS for students. Packed with examples and drawing on real-world data, this is an invaluable textbook for both undergraduate and graduate students in public administration and political science.
Chapter 2 covers the basics of research design.It is written so that students without any research design experience or coursework can learn common research designs to enable them to conduct statistical analyses in the text.Hypotheses development with variable construction (dependent and independent variables) are covered and applied to experimental and non-experimental designs.Survey methods including question construction and implementation of surveys is presented.
We have analyzed many variables in Cantonese but not in other languages: classifier specialization, tone mergers, vowel splits and mergers, motion event expression, and (L > R), as well as (VOT) and (PRODROP). As little sociolinguistic work on any variety of this globally large language exists, these studies serve as useful models to expand variationist studies to languages that vary in many ways from the North American, Indo-European languages of focus to date. We show that classifiers are developing a specific semantic contrast (for number-marking) in Heritage Cantonese, amplifying a homeland trend; that three tone mergers that were reported to be completed are only partial, in both homeland and heritage varieties; that some vowel mergers and splits may be attributed to influence from English, but that changes in the constraints governing motion event expression cannot be attributed to simplification or English-contact effects. We report on covariation among the variables, showing that it is not the case that the same speakers lead change in each. Thus, it is not easy to claim that language proficiency or patterns of use are responsible for the variation. Rather, internal change and identity-marking motivations for change must be considered.
The variables examined in Chapters 5 and 6 show little evidence of being used for identity work. That is, they do not show (consistent) effects of ethnic orientation measures or speaker sex. This chapter explicitly contrasts variables that reflect indexicality (correlation to social factors) in homeland varieties to non-indexical variables. We begin by considering three indexical variables in Italian: (VOT) in unstressed-syllable contexts, (APOCOPE), and (R), illustrating the extent to which indexicality is maintained in the heritage variety. We find increasing use of the more standard variant only in (VOT). Furthermore, we find that younger speakers (both in homeland and heritage) favour the non-standard variant. We then compare the variable (R), the contrast between trill (or tap) and approximant variants, in Italian and Tagalog, where it has indexical value in the homeland varieties, to Russian and Ukrainian, where it does not. Finally, we consider two additional indexical variables: Cantonese denasalization and Korean VOT. We conclude by contrasting the behavior of homeland-indexicals in heritage varieties. The presence of indexical value in homeland varieties does not consistently influence outcomes in the heritage varieties.
The prime ministers all play chess on a multi-dimensional board, prey to challenges that vary in type and intensity over time, some of which are new and growing, and others constant. The most skilful negotiate their way through these constraints, turning them to their advantage, and refuse to be defined by adversities. The least able are swallowed up by them. We first consider institutional restraints, the checks and balances they face, some dating back to 1721, before considering variable constraints, which have made and destroyed premierships, and have rendered even the best-qualified incumbent a cornered animal.
Until recently, algebra was regarded as the domain of the secondary school years in most countries. In addition, it was often regarded in quite narrow ways by non-mathematics teachers, parents and students as being concerned with the manipulation of symbols according to tightly prescribed rules. Recent attention to algebra in the primary school has not regarded it as appropriate that such a narrow view of algebra be taken, leading to the use of terms such as ‘pre-algebra’ or ‘early algebra’ to describe the mathematics involved.
In this chapter, it is recognised that students’ understanding of algebra in the secondary school rests on foundations that are laid in the primary school, as reflected in the Australian Curriculum: Mathematics v. 9.0. These foundations are concerned with key algebraic ideas about patterns and generalisations, rather than with symbolic representations of these, such as x and y. This chapter explores developmental models associated with patterns and algebraic concepts, with a focus on developing algebraic thinking.
This chapter examines suitable statistics questions for investigation by children of different ages, using a cycle of problem, plan, data, analysis and conclusion (PPDAC) (Wild & Pfannkuch 1999). The importance of variation in data and different types of variables and the difference between a population and a sample are investigated. Readers will explore different ways of displaying data to ‘tell a story’. The importance of drawing inferences from data and the uncertainty associated with these inferences are discussed. Readers will engage in activities that use technology to support the development of statistical understanding.
This chapter provides an overview of the processes that are commonly used for analyzing data. Our intention is to explain what these processes achieve and why they are done. Analyzing data goes through four stages. For each stage, we explain the most important concept and then explain the practical steps that are involved. This begins with the data themselves as variables. Next, we move on to describing the data, their variance and covariance, with linear models. Next, we cover interpreting effects and focus on effect sizes. We end with a discussion of inferences about the population and how the presence of uncertainty has to be taken into account in reaching conclusions.
This chapter sets out the elements of multiple regression analysis. If properly designed this enables us to estimate the effect of each separate factor upon wellbeing. To find the explanatory power of the different factors, we run the equation using standardised variables, that is, the original variables minus their mean and divided by their standard deviation. The resulting coefficients – or partial correlation coefficients – reflect the explanatory power of the independent variation of each variable.
The surest way to determine a causal effect is by experiment. The best form of experiment is by random assignment. We then measure the wellbeing of the treatment and the control group before and after the experiment. The difference-in-difference measures the average treatment effect on the treated. Where random assignment is impossible, naturalistic data can be used and the outcome for the treatment group compared with a similar untreated group chosen by Propensity Score Matching.
The instability strip (IS) of classical Cepheids has been extensively studied theoretically. Comparison of the theoretical IS edges with those obtained empirically, using the most recent Cepheids catalogs available, can provide us with insights into the physical processes that determine the position of the IS boundaries. We investigate the empirical positions of the IS of the classical Cepheids in the Large Magellanic Cloud (LMC) using data of classical fundamental-mode and first-overtone LMC Cepheids from the OGLE-IV variable star catalog, together with a recent high-resolution reddening map from the literature. We studied their position on the Hertzsprung-Russell diagram and determined the IS borders by tracing the edges of the color distribution along the strip. We obtain the blue and red edges of the IS in V- and I-photometric bands, in addition to Teff and log L⊙. The results obtained show a break located at the Cepheids’ period of about 3 days, which was not reported before. This phenomenon is most likely explained by the depopulation of second and third crossing classical Cepheids in the faint part of the IS, since blue loops of evolutionary tracks in this mass range do not extend blueward enough to cross the IS at the LMC metallicity. Furthermore, our empirical borders show good agreement with theoretical ones published in the literature. This proves that our empirical IS is a useful tool to put constraints on theoretical models.
Pulsating variable δ Scuti stars are intermediate-mass stars with masses in the range of 1–3 δ and spectral types between A2 and F2. They can be found at the intersection of the Cepheid instability strip with the main sequence. They can be used as astrophysical laboratories to test theories of stellar evolution and pulsation. In this contribution, we investigate the observed period–colour and amplitude–colour (PCAC) relations at maximum/mean/minimum light of Galactic bulge and Large Magellanic Cloud δ Scuti stars for the first time and test the hydrogen ionization front (HIF)-photosphere interaction theory using the mesa-rsp code. The PCAC relations, as a function of pulsation phase, are crucial probes of the structure of the outer stellar envelope and provide insight into the physics of stellar pulsation and evolution. The observed behaviour of the δ Scuti PCAC relations is consistent with the theory of the interaction between the HIF and the stellar photosphere.
This chapter provides an introductory coverage of the major issues involved in designing and executing sociolinguistic research with a focus on spoken Arabic in natural settings. It explains the concept of the observer’s paradox and suggests methods to reduce its effects in sociolinguistic interviews. It covers ethnographic, qualitative, and quantitative methods. The use of dependent and independent variables is explained in detail, with a focus on age as a social variable. The chapter ends with ethical considerations as an integral part of research and research conduct.
Many parameters are associated with IHC testing assays. With so many variables, it is quite easy to accumulate errors within the system. To make things more manageable, these considerations are categorized into three main groups. Pre-analytic aspects occur before the assay, analytic factors are concerned with the staining protocol and post-analytic elements relate to interpreting of results. It has also come to reason that any one variable can impact the reliability and consistency of the overall IHC assay. In this regard, standardization requirements have been enlisted to assist laboratories achieve optimal results. In addition, monitoring proficiency testing regimens and various organizations are in place to ensure high levels of standards are attained. All these endeavours are known as quality assurance and quality control measures. They are arranged under the overall umbrella of a facility’s quality management system.
This chapter introduces key elements of the basic syntax and semantics. Topics of discussion include the treatments of compositional semantic value, assignment functions and variables for assignments, pronouns and traces, and quantification in object language and metalanguage. A preliminary compositional semantic derivation is provided.
Research on purpose starts with learning how to look at purposeful behavior as a process of control. This means learning to see behavior as being organized around the control of perceptual variables. The next step is to try to see what these variables might be. Ideas about what these variables might be come from the names we commonly use for various behaviors, as well as from existing research studies. Once you have an idea of what variable or variables an organism is controlling, you can refine that hypothesis by looking at the control process from the point of view of the behaving system itself. The refined hypothesis is then tested using the method of specimens, which involves testing one organism at a time under all experimental conditions. The results of this research are evaluated in terms of scientific rather than statistical significance.
Objective: Delve into programming logic and flow, VBA syntax, and debugging tools. Become familiar with code structure, communication with spreadsheets, dynamic data storage, conditional statements and loops, calling worksheet functions, and creating user-defined ones.
This chapter introduces object-oriented programming and explains how to make use of it in Python. It covers the basic syntax of defining and using objects. It also introduces the object inheritance system and closes with an extended example of object-oriented syllable structure.
This chapter introduces the different data types of Python: integers, characters, strings, lists, dictionaries, tuples, etc. The chapter also treats the concept of mutability.
Where variables only allow a single value to be stored, tuples, lists and dictionaries allow multiple values to be stored under a single name. The reader is shown how to create lists, insert data, delete values and sort the data which they use to complete the eleven challenges.
The user starts to experiment and use the example code to write simple coded solutions using Python. They learn how to incorporate input and print statements and combine strings and variables to produce meaningful programs. There are eleven challenges to complete and the answers are provided for each challenge given.