SOSYAL BİLİMLERDE UYGULAMALI ANALİZ TEKNİKLERİ Ümit Çağrı 17D20415855 Aralık 2014.

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SOSYAL BİLİMLERDE UYGULAMALI ANALİZ TEKNİKLERİ Ümit Çağrı 17D Aralık 2014

SKEWNESS ( ÇARPIKLIK) & KURTOSIS (BASIKLIK)

Normal probability curve

Carl Gauss  The normal probability distribution or the “normal curve” is often called the Gaussian distribution,

Bell shaped curve  The shape of the curve is like that of a bell.

Mean = median = mode  Mean, median and mode carry the equal value.  Therefore they fall at the same point on the curve

Perfectly symmetricality  It means the curve inclines towards both sides equally from the centre of the curve.  Thus we get equal halves on both sides from the central point.  The curve is not skewed. Therefore the values of the measure of skewness is zero

Each of the two shaded areas is.5 or 50%.5

Properties of the Normal Curve Bell-shaped Unimodal mean = median = mode Symmetrical Tails are asymptotic

Skewness  Skewness means asymmetrial nature.  When the curve on clones towards right or left we cannot take it as a normal curve but as a skewed curve.  The degree of departure from symmetry is called symmetry.

Skewness  Positive Skewness: Mean ≥ Median  Negative Skewness: Median ≥ Mean

Negative  When the curve inclines more to the left skewness becomes negative meanmedianmode Negative or Left Skew Distribution

Positive  When the curve inclines more towards right meanmedianmode Positive or Right Skew Distribution

Kurtosis  Literally kurtosis means tendency of ‘flatness’ or ‘peakedness’.  The normal curve is moderately peaked.

Kurtosis: the proportion of a curve located in the center, shoulders and tails How fat or thin the tails are leptokurtic no shoulders platykurtic wide shoulders

Platy kurtoc  When the curve is more flattened the distribution will be called as platy kurtoc

Lepto kurtoc  When the curve is more peaked than normal one it is called as lepto kurtoc curve

Reasons for divergence from normality  Biased selection of sample  Scoring errors  Improper construction of a test  Improper administration of a test  Abnormality in the traits of the items.

SKEWNESS & KURTOSIS IN SPSS