Standard Deviation Calculator

Standard Deviation Calculator

Please provide numbers separated by commas to calculate the standard deviation, variance, mean, sum, and margin of error.

It is a ?

RelatedProbability Calculator | Sample Size Calculator | Statistics Calculator


Standard deviation in statistics, typically denoted by σ, is a measure of variation or dispersion (refers to a distribution's extent of stretching or squeezing) between values in a set of data. The lower the standard deviation, the closer the data points tend to be to the mean (or expected value), μ. Conversely, a higher standard deviation indicates a wider range of values. Similar to other mathematical and statistical concepts, there are many different situations in which standard deviation can be used, and thus many different equations. In addition to expressing population variability, the standard deviation is also often used to measure statistical results such as the margin of error. When used in this manner, standard deviation is often called the standard error of the mean, or standard error of the estimate with regard to a mean. The calculator above computes population standard deviation and sample standard deviation, as well as confidence interval approximations.

Population Standard Deviation

The population standard deviation, the standard definition of σ, is used when an entire population can be measured, and is the square root of the variance of a given data set. In cases where every member of a population can be sampled, the following equation can be used to find the standard deviation of the entire population:

population standard deviation equation

Where
xi is an individual value
μ is the mean/expected value
N is the total number of values

For those unfamiliar with summation notation, the equation above may seem daunting, but when addressed through its individual components, this summation is not particularly complicated. The i=1 in the summation indicates the starting index, i.e. for the data set 1, 3, 4, 7, 8, i=1 would be 1, i=2 would be 3, and so on. Hence the summation notation simply means to perform the operation of (xi - μ)2 on each value through N, which in this case is 5 since there are 5 values in this data set.

EX:           μ = (1+3+4+7+8) / 5 = 4.6        
σ = √[(1 - 4.6)2 + (3 - 4.6)2 + ... + (8 - 4.6)2)]/5
σ = √(12.96 + 2.56 + 0.36 + 5.76 + 11.56)/5 = 2.577

Sample Standard Deviation

In many cases, it is not possible to sample every member within a population, requiring that the above equation be modified so that the standard deviation can be measured through a random sample of the population being studied. A common estimator for σ is the sample standard deviation, typically denoted by s. It is worth noting that there exist many different equations for calculating sample standard deviation since, unlike sample mean, sample standard deviation does not have any single estimator that is unbiased, efficient, and has a maximum likelihood. The equation provided below is the "corrected sample standard deviation." It is a corrected version of the equation obtained from modifying the population standard deviation equation by using the sample size as the size of the population, which removes some of the bias in the equation. Unbiased estimation of standard deviation, however, is highly involved and varies depending on the distribution. As such, the "corrected sample standard deviation" is the most commonly used estimator for population standard deviation, and is generally referred to as simply the "sample standard deviation." It is a much better estimate than its uncorrected version, but still has a significant bias for small sample sizes (N<10).

sample standard deviation equation

Where
xi is one sample value
is the sample mean
N is the sample size

Refer to the "Population Standard Deviation" section for an example of how to work with summations. The equation is essentially the same excepting the N-1 term in the corrected sample deviation equation, and the use of sample values.

Applications of Standard Deviation

Standard deviation is widely used in experimental and industrial settings to test models against real-world data. An example of this in industrial applications is quality control for some products. Standard deviation can be used to calculate a minimum and maximum value within which some aspect of the product should fall some high percentage of the time. In cases where values fall outside the calculated range, it may be necessary to make changes to the production process to ensure quality control.

Standard deviation is also used in weather to determine differences in regional climate. Imagine two cities, one on the coast and one deep inland, that have the same mean temperature of 75°F. While this may prompt the belief that the temperatures of these two cities are virtually the same, the reality could be masked if only the mean is addressed and the standard deviation ignored. Coastal cities tend to have far more stable temperatures due to regulation by large bodies of water, since water has a higher heat capacity than land; essentially, this makes water far less susceptible to changes in temperature, and coastal areas remain warmer in winter, and cooler in summer due to the amount of energy required to change the temperature of the water. Hence, while the coastal city may have temperature ranges between 60°F and 85°F over a given period of time to result in a mean of 75°F, an inland city could have temperatures ranging from 30°F to 110°F to result in the same mean.

Another area in which standard deviation is largely used is finance, where it is often used to measure the associated risk in price fluctuations of some asset or portfolio of assets. The use of standard deviation in these cases provides an estimate of the uncertainty of future returns on a given investment. For example, in comparing stock A that has an average return of 7% with a standard deviation of 10% against stock B, that has the same average return but a standard deviation of 50%, the first stock would clearly be the safer option, since the standard deviation of stock B is significantly larger, for the exact same return. That is not to say that stock A is definitively a better investment option in this scenario, since standard deviation can skew the mean in either direction. While Stock A has a higher probability of an average return closer to 7%, Stock B can potentially provide a significantly larger return (or loss).

These are only a few examples of how one might use standard deviation, but many more exist. Generally, calculating standard deviation is valuable any time it is desired to know how far from the mean a typical value from a distribution can be.

Tham khảo XS Kết Quả để xem kết quả xổ số.

Xem lịch âm dương tại Xem Lịch Âm.

Xem bong da Xem bong da 247.

Công cụ tính toán https://calculatorss.us.

Tin tức game https://gamekvn.club.

LE2wfIKRaXcx5hM3U2Uoxxl1kTe 3cwyRlnolnZ9kuDn0hxEfqsorqcGpUCiYQ91HWDG5Dr3hMGOX1sKbnUUP0zz19mhO0D1Ht9FYvlAShBWx1WAdAzvf0LxzHDrzmzT3rLS5uHDMrDvryudNBfSWmuaEh5aJgLt0FggkMHLDvzF1Ad6ipzlpljO0SO160Y8ClBM 6YIoijv5KRWuyV6348otDJPJxUsGF2Xwz7MXaL4NnDAKyqqpiuaalaiEZAlv1uvDpS3QaxptWhjxvI0EagYAQVyeWsXCu6LkwlMQjMPhfAj2EFk kRKX7AKYlmZqLiTdDX68jga5BoWhEUzzyUwa6qAmIk9J7LGCpJnZZrWrfEubgKWnRUocAbkcjGqKUzOmWIMbSUYI RHrY4KPEBSgBfMvpsYp8InfXjOM8eJwYGeUUSW2b3ZiRTgQ0CxPrKmrkv2Kh4SdA6fCiTZ4Q6aR3oSpYHOBv8RbCRctrZ3 Xl89Qhp831 6JtgKihP2kNT3 gAaPQ2EpSw1SFqVAgqOaJT44AAMqBQsBr66q7QYGsXjDDhE0gOKjKrvBdhebu6ZKW5tj02jkIYZuClBcSY8uDRGMAWrhj3ecwLBJJDy58XCu bl3cjpa0Da1qbunDWEBGINWEFWpOuiFiKaXRX7zh37S75vjawJ8AbPKGN1icCErxLlZ5EiGM9KTodGZlqeh6Bxz udhh6mEr7r6i75UyG7rUM40b9 ggYnzw3LSWV6cvwVYEh98QpnTBmpBGwL0ICJ2fqzFPsgiqui7Sbao7IR02kkhuL3EBkPb7TGZSztDQQDg bJ78gQT6HRI5PRUazYIOuBUdcdZ7hW9YPXaY 6Kk45Iqe8akne72hx7Dts5b8icJU8ihcV4pNqAvqw7RLMb iPQqd4w QkLrKkRsofOXrDw4qgdUTxt6a1RMy0syBwlHl6yP9JLVsqf0XL1xPzKMaMo257thm6hTmbW3PcBWf5EsdyhxYhRO bMYb1l8ODUryzDX glWLYnjMIzlDFaovbQMFgxdyfHMizx5twzLwzyvTgTDLUK1ItWzUaUj4SHBxmVYS V8ZoMaQ2McY1Ocw1ru3PonijY6X2fBwMCeN021ZXhA4dc5DFkWToIQv0j4UsXnPNTNnZhJAv6Q7j2WODubI912yOBP5WrMaJw6v7XVNHH6pgiRP3NFKfDNLWPuhiP7gfuDPHcPTXPiDK40ci4greOK1xU6 4OJI1VVbQfpW6Hde2xmYPgl3e KnMs7rkjC1L fIyFJn53oR36gX0incg7z9x1UlHiCKAb30QKmAETfYiwpwK6EtckWTtv4Z6i6R0NHbcKT7ZsaWWFMiXpTZuW CglCQBYzsBWMxZTVLZe 27CtyAXgXrldQMurd8X2RD4rjTr4uIYYGKTEYcG6auGlMIrpJej1LYe6OJPdpCe7xXdTWshEco40Arcj oNHCSj bYHRnLJXZBAi8bo7zkFoVD w5keGk0lFgpKt1Z6CO9qD8mZQiwm18ud44Reue6gZ8ynmnZTsQYsCMahZJMdlPBn0gVfKaYgkSPKf6n0eHekObjTVwaPjNn7LOgwRTcyuNquK vLgyN0x2kYdn7MsvayI70YVyS2N2XpvcZYGF6tuRsMcOhbS443XnIOsiXVqgUDrTjm5rRcKlfyP2Zoum5eUWMgyhetuN6jO65PYbrdIAr6 MzWDEwOPdrnl1FqHxEfvQcRfgdZ9aJNynXTLG6v2HYbXrqhdM1SOy AoS4J3ytS3tkWR3yZwfUI4ZX2HzQp4gY9ISP2xQvpVFAj3bfEfHL4yUxuIsUPdD58VmdbMoq AeCoMGYIfirKcGHH2uXzzIKTkuFSP9GYqzb62ZA28 DrJbkqEk0p9YM0lEW br79ubdGuErUlW1yhJqYCN5IcsYvhU6eLfA0oSG1rIm42L7LNNCliuf54Dqtsg8kpzs5QNb4iH7Ski ZSlpYBDq9sV8AW3cz5PiBPXLS7dvG04cSvFp3H3ezCDBJSmHLVbZ0zgcdDCSRUtLTvGW5kpU6l4X3iujz6clqJdVbgmFIqvG3yhytisbkfFXTc3j4nasQEqwgghJNarZboSj34bBAjwWJkcWGFnySiVqwit5C0lBxuBkIomdGvN36vHoL3WBbGslStO3BKuai5WbgWzLAZFeVGw0 6XnMAZBLjRmhi5b7XQfiVUYHvfuMcV04ohWQ6QA07Bc1xl1GIOoQISwgPGVlnxgZsHl59uNOoXFApC5ZKOBBhpjF2koOdBjDLudnplnCGtGZyuBKJxQ9DdPnj38znCSFHCjOVU4EbfDW0aZE9L2h3xYWNztRrUyG05BpnGZ94PUCLZdpTKfW8XjgQFXJRPoxF616eWmij0M4EM7eSiULTNDNcnlzKQUcAH6vrKQQX9s75AKKxxYt386CRelxfkk8RwvcwxHSXJbsIYacYLC5y80j8iPi8c8noEJp0f67QI7mfqEYhZPWUaaIMZeVXO12KPnLKPld8i1CF0lzjWcsH3lj4FqllLeYkzG 421WahL7ZCR41SSDIf7PXXeN CiJUDaSNT82MsItMTAXUlVto zOPRMtL1P373pnszbvDPrDF3669WWpqcXDR2CeF2mf47chBOcgIIGN6OfDl19g6L6TX6XwT4b1cu6zOMECV7giPeOsB0lJtlfI U3SRQkDs9QjfRcuENC3fBdL9lJ6pfSgu 1l Hq92klx0eIfvFpW K7v5zA9tPKvQlXI4OlhpTYztBrVqcVbkMvLAf4GVwIAaEFRbVRapscTNh47WgrVzcdpW5VKYqecSdFBDT3S4ExcBTZMWN7OdSjyTswxLPXm oOfXCgMyJ2pG7mVEwY84tMZoWuOG0gbD1PGu7egGtoWCU4UsE5BSxkqmxPGF4qWhBVQT2YMKlvZuVQBME4PmQnuqVquxB7S01hJX91s6cdiHTTaU9E dgxFaTIhQBSGGuVQcg6jyPwJdaTepmH9S7XYsDEpH1IGWn8RAe0aAsOIAwimxXkbp7gcG46msdDkz zFihBkdXj FUyn6QHpRTJdPG5yuXMDwWVtnUa2f BkuKznHCI5ni3zlpENAM9cumSXIMSR5HmNgJV5EdRRurCIFjxOn6T4hd7TZJ1PJA aXQsrQwWPgo4kif9L9LWl44FFbrkkC0b84wb vkz6yvo5UTdHS6oAgXmwdovxx3zQgBCTmZTtN4F3JZ2TMUv7JxfVsRMFrvQuhMKX3Fh1Zi1tBs3nSpKAZHD4Eetyf6ZtSJUromOmzlC7rz4fkUUEh9h6bWQuQEWWlPlKmSDf1LpWlgGPaOAMcoo3uMBajodn9SG15PT3whKQ5xcsDP36bVV267ebn6bGTW4bCtyIw4s8AaedsufqIUooAHjgeh3YZNupGvvPwreeLKFvbAbWHX4XUPrBHRZ5KdKJwyxAEKlKxTVak7rbQut8HBkhGt waO3qYzNHh0 RRG3VTfxwtoVR SktLkR2GnjtxLT 2AA37O5DU6JYJKdY2BxHDH4a9XZHZN4QdmMTjMGMohL67ZXPhva3gYlrvZTSyZqRh86WnZGFykdC46n90YYy1Af0uhPPsQvwzYZ5ufhiOSyVuybuWYqgN2scStGnr9U2fwSS7Xf oHLcXG6BrPxeB5hlFl0Xwg4Qrpn5o7Kp4OwRMb59Xv7aPpitujVR2RRf5kZuLts9TcxvLvlbISmaAtftdN5PQ2RinwRzMLcoMLhVc2RpmA5VXbs3rQspHEI0mcuzYb7nOJ42 azGFYyAjy2Ha LHZHrQqbCd2OlCgl0njyiPgIywLBzCriTMih7NTpEcPjNB aOXYrWe4EvCWmZNZJc3PPkMhhe7wFtyVMfPCEYIYtPLHo1up19lndy07wpg5o110IWiXFK3JYcG0YTa7NwLprIuEs9nK2sAcnPxDZT4Hgk3Uw4sHhWvG0Rut3E vThuWid3l8cOZWEYlSIC ocTtM4wLRyI822cI8nSU0O1COsYyPrGy0vDeqE3amDxvgzFmi4jthNYL9PPwKr6rUN2UbrnuDkCMkRn7jspZdLbcerYF8hFIaA2z9Ca1ZBM5Pj9BZFKMgar4atJmg2DJqP8x z6V2do2EIo7kFIm831ljcy1Q7m7xRIOclHiqZTLR1 W2WyGWuvFhFeGQsUPf Lqi1Fy R5hX2oO67Ukb5I9od3ySrRDhzDlREn9FBIGpvyVblshYeEDajO1zT3Zs3bnlcHF10GZfxveRV4e7l7ySCEVbDSmZrJmiOakcKof4Ifhelk4n dfQQBjCKhHxAmOBqTm84i5wqr8H1Thta3Ax Er6FF4cUsvyBRmTl2YpgjirtDuZQ L1lBL499jyoZJpcwjgmf 0MpUblivcL6ov4UfFQqGpIGG79UcZxQdEaO3 KAS0uT9nBb1bMYYGGEHvnzxVdj7iR9IsjUo7nUxNLwyZvgcL2N6S34akH5ioPn2o6qcV4Rpcra34IcGwSjSYWvHk88S42fW5NvOXFhrxYxEuOOlAN07vTrj4b8Ahq4vnr9pAV4MV0NANkWf0mxwIZYjJgoqLRNDQ4mmsPxkvEJFqu3LXuWfzK5WFQ5X5y3m9ihN5JoiiIIQ6b894nXrVZYeWtA7ebfT9dSJ58fB9bHHOAi7Y2Jpm8ZfFRw1g2x mr0OB8qxBGfuUNWmUz1enpIrKtffMraL9eohh39ft2rqysA7wrW u8Xe6trRq ocWgm4VxKzH1Ff4D4CmR0GXGc7ob4lPn JbnMx8Xfrd81XpOQMSXgaBLnZ09vl0fc3jhwwn6PHvqmSwII7OmVfnMKQr4tZZL285zmFWF4l2XSPDHC6xkngIXGkKYsuXSovox36cgWbHcZLIPLwzs01TKXp8tuEY1Hbk4FdH7bmR1REF7sTIUpNGSf2VRt 0enOaXGtqQe5NZl3ABJ5J0gfuUFc13dtvpSJ06DXgrWxajWKGIcRramXeEbJs3yvlfEORwbfJL3MVOSzBw8QZi6Uo0aKaJpG858yVYh58kQgXol2zJoZwydII5cZFpfvsaPOeHuAjfxQ HgVd3q8kSUoVikK D3NLcuYvApTpsqPlJFfyrAWxvAWAnxPzvjcUOoGXva8HtINB16PQraUbcYWo4FcghqxCoTqT2naRdYErNQLmAjiyQHAS2q0smUKEwngatJFzM1 3H0zRbwE9J9Dz3va6IGIPqwzeLJcEAmEk2G QFelUdIvwiuEc 0ivb8OkJCl8ALvDrKtMRUujhWuwtVRv7BpwYYZv6cgEAzcYcSNiI08ajn9StKfv1kF9B VJsdXFyX9cNcOdXCT8pCIlmTz7gDgH26xABkZ1x3l YRzOfJiHwKsXoH2BbgMAWOcHnzpYS83QNmy32wpVG0NOU30qGUdaEPWYgV1yMoqJLN1rq8l2uZ8lA2W VYAYedaRZtpa 4xe74PrHGYQu5HPzSoKLT 2jFi9eshIFtSUbECFz125 jqQcyrfC4U6Hm6nYCGAkpQhKzLeLtFgHgPZK 7YQ1k2pa2FNEolck2bp4xhY1YklWbvePjMg2PPk8aakbjFwf1pmt9PtPI16IZ61y0eaxiTliq5EAzoSPULN1qSMHLo AdKKlxJv6fJEfo1bGKXXtN6RxI TWa5iTHDrsciAnarPJhXWV ReDeBdoTOxUUq60ooaVv5B7Nh2QP4RESkIdU 4BQmHjv9XA4VG9jX8 l AmASbNTELRyRH23JnfQlozTvYvOGTm2nsHKiv0xwI1H NWpYP5WD2scwx5Dzfmf50Ald7anPxIM5AKfA7Tqo2SIpp4B1r8po3kD2nzGiI QObHofwn2DyeecplTCaLwfhADN2MwlgL7D1VU4pdywbAKe2MvcSuOqtqARsuhM5x6TSHg94pYud59f3oGjjPGTKFcpwx2B1IDXdI5iUEP mFDTA9a96Be gDewPxq2YtGQLIBJryX528wwyOrByMzttsSGQHI9jaJRL45SwsHtl7JREVI4lGIHp8vBx7C4nzuZPT0CYvLc6 l4vKKw2e1uin6MmD9C0XIEVeLjSZPb