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Niktarjoman.Ir Niktarjoman.Ir Niktarjoman.ir اﺣﺘﻤﺎل ﭘﺴﻴﻦ A posteriori probability a priori distribution ﺗﻮزﯾﻊ ﭘﻴﺸﻴﻦ a priori estimate ﺑﺮﺁورد ﭘﻴﺸﻴﻦ a priori probability اﺣﺘﻤﺎل ﭘﻴﺸﻴﻦ a-marginal اِ )a( - ﺣﺎﺷﻴﻪاﯼ Aalen's additive risk model ﻣﺪل ﻣﺨﺎﻃﺮﻩ ﺟﻤﻌﯽ ﺁﻟﻦ abac اَﺑﺎﮎ abacus ﭼﺮﺗﮑﻪ، ﭼﺘﮑﻪ Abel's formula ﻓﺮﻣﻮل ﺁﺑﻞ abnormal curve ﺧﻢ ﻧﺎﻧﺮﻣﺎل absolute asymptotic efficiency ﮐﺎرﺁﯾﯽ ﻣﺠﺎﻧﺒﯽ ﻣﻄﻠﻖ absolute convergence هﻤﮕﺮاﯾﯽ ﻣﻄﻠﻖ absolute deviation اﻧﺤﺮاف ﻣﻄﻠﻖ absolute error ﺧﻄﺎﯼ ﻣﻄﻠﻖ absolute frequency ﻓﺮاواﻧﯽ ﻣﻄﻠﻖ absolute moment ﮔﺸﺘﺎور ﻣﻄﻠﻖ absolutely convex set ﻣﺠﻤﻮﻋﻪ ﻣﻄﻠﻘﺎً ﮐﻮژ absolutely unbiased estimator ﺑﺮﺁوردﮔﺮ ﻣﻄﻠﻘﺎً ﻧﺎارﯾﺐ absorbency ﺟﺎذﺑﻴﺖ absorbing ﺟﺎذب absorbing Markov chain زﻧﺠﻴﺮ ﻣﺎرﮐﻮف ﺟﺎذب absorption law ﻗﺎﻧﻮن ﺟﺬب absorption probability اﺣﺘﻤﺎل ﺟﺬب abstract integral اﻧﺘﮕﺮال ﻣﺠﺮد abstract L-space ﻓﻀﺎﯼ ﻣﺠﺮد L L abstract L_p space ﻓﻀﺎﯼ ﻣﺠﺮد L_p accelerated life testing ﺁزﻣﻮن ﻋﻤﺮ ﺷﺘﺎﺑﻴﺪﻩ acceptable quality level ﺳﻄﺢ ﮐﻴﻔﻴﺖ ﭘﺬﯾﺮﻓﺘﻨﯽ acceptance error ﺧﻄﺎﯼ ﭘﺬﯾﺮش acceptance number ﻋﺪد ﭘﺬﯾﺮش acceptance process level ﺳﻄﺢ ﭘﺬﯾﺮش ﻓﺮاﯾﻨﺪ acceptance process zone ﻣﻨﻄﻘﻪ ﭘﺬﯾﺮش ﻓﺮاﯾﻨﺪ acceptance region ﻧﺎﺣﻴﻪ ﭘﺬﯾﺮش acceptance sampling ﻧﻤﻮﻧﻪﮔﻴﺮﯼ ﭘﺬﯾﺮﺷﯽ accumulative error ﺧﻄﺎﯼ ﺗﺠﻤﻌﯽ accuracy درﺳﺘﯽ (accuracy (in Neyman's sense درﺳﺘﯽ (ﺑﻪ ﺗﻌﺒﻴﺮ ﻧﻴﻤﻦ ) ) actuarial statistics ﺑﻴﻤﻪﺁﻣﺎر actuary 1. ﺑﻴﻤ ﻪﺁﻣﺎر 2. ﺑﻴﻤﻪﺁﻣﺎرﺷﻨﺎس acyclic graph ﮔﺮاف ﺑﯽدور adaptive ﺳﺎزوار، ﺗﻄﺒﻴﻖﭘﺬﯾﺮ adaptive method روش ﺳﺎزوار adaptive sampling ﻧﻤﻮﻧﻪﮔﻴﺮﯼ ﺳﺎزوار، ﻧﻤﻮﻧﻪﮔﻴﺮﯼ ﺗﻄﺒﻴﻖﭘﺬﯾﺮ Niktarjoman.ir adaptive sequential procedure ﺷﻴﻮﻩ دﻧﺒﺎﻟﻪاﯼ ﺳﺎزوار addend ﺟﻤﻊوﻧﺪ addition theorem ﻗﻀﻴﻪ ﺟﻤﻊ additive function ﺗﺎﺑﻊ ﺟﻤﻌﯽ additive measure اﻧﺪازﻩ ﺟﻤﻌﯽ additive risk model ﻣﺪل ﻣﺨﺎﻃﺮﻩ ﺟﻤﻌﯽ additivity ﺟﻤﻌﯽ ﺑﻮدن admissibility ﻗﺎﺑﻠﻴﺖ ﻗﺒﻮل admissible decision function ﺗﺎﺑﻊ ﺗﺼﻤﻴﻢ ﭘﺬﯾﺮﻓﺘﻨﯽ admissible estimator ﺑﺮﺁوردﮔﺮ ﭘﺬﯾﺮﻓﺘﻨﯽ admissible function ﺗﺎﺑﻊ ﭘﺬﯾﺮﻓﺘﻨﯽ admissible hypothesis ﻓﺮض ﭘﺬﯾﺮﻓﺘﻨﯽ admissible lattice ﻣﺸﺒّﮑﻪ ﭘﺬﯾﺮﻓﺘﻨﯽ admissible sequence دﻧﺒﺎﻟﻪ ﭘﺬﯾﺮﻓﺘﻨﯽ affluence and poverty indexes ﺷﺎﺧﺼﻬﺎﯼ ﻏﻨﺎ و ﻓﻘﺮ aggregate 1. ﻣﺠﻤﻮﻋﻪ 2. اﻧﺒﻮهﻪ 3. ﮐﻞ aggregate index numbers اﻋﺪاد ﺷﺎﺧﺺ ﮐﻞ aggregation اﻧﺒﻮهﺶ، ﺗﺠﻤﻊ aggregative model ﻣﺪل اﻧﺒﻮهﺸﯽ agreement ﺗﻮاﻓﻖ (Agresti coefficient (tau ﺿﺮﯾﺐ اﮔْﺮﺳﺘﯽ (ﺗﺎو ) ) Aitchison distribution ﺗﻮزﯾﻊ اﯾﺘﭽﻴﺴﻮن Aitken equation ﻣﻌﺎدﻟﻪ اﯾﺘﮑﻦ Akaike's criterion ﻣﻼﮎ ﺁﮐﺎﺋﻴﮑﻪ aleatory ﮐﺘ َﺮﻩاﯼ aleatory variable ﻣﺘﻐﻴّﺮ ﮐﺘ َﺮﻩاﯼ algebra of events ﺟﺒﺮ ﭘﻴﺸﺎﻣﺪهﺎ algorithm اﻟﮕﻮرﯾﺘﻢ algorithmic independence اﺳﺘﻘﻼل اﻟﮕﻮرﯾﺘﻤﯽ algorithmic information theory ﻧﻈﺮﯾﻪ اﻟﮕﻮرﯾﺘﻤﯽ اﻃﻼع alias group ﮔﺮوﻩ هﻢ اﺛﺮ alias matrix ﻣﺎﺗﺮﯾﺲ هﻢ اﺛﺮ aliasing هﻢاﺛﺮﺳﺎزﯼ align ﺗﺮاز ﮐﺮدن all-or-none compliance رﻋﺎﯾﺖ هﻤﻪ ﯾﺎ هﻴﭻ ﯾﮏ از ﻣﻘﺮرات allele ژن هﻤﺮدﯾﻒ allocation اﻧﺘﺴﺎب، ﺗﺨﺼﻴﺺ allokurtic curve ﺧﻢ ﻗﻨﺎس allometry وَردﺳﻨﺠﯽ allowable ﻣﺠﺎز almost certain convergence هﻤﮕﺮاﯾﯽ ﺗﻘﺮﯾﺒﺎً ﻣﻄﻤﺌﻦ almost everywhere convergent sequence دﻧﺒﺎﻟﻪ ﺗﻘﺮﯾﺒﺎً هﻤﻪﺟﺎ هﻤﮕﺮا almost invariant test ﺁزﻣﻮن ﺗﻘﺮﯾﺒﺎً ﻧﺎوردا almost periodic function ﺗﺎﺑﻊ ﺗﻘﺮﯾﺒﺎً دورﻩ اﯼ almost uniform convergence هﻤﮕﺮاﯾﯽ ﺗﻘﺮﯾﺒﺎً ﯾﮑﻨﻮاﺧﺖ alternative hypothesis ﻓﺮض ﻣﻘﺎﺑﻞ Niktarjoman.ir amenability ﻣﻴﺎﻧﮕﻴﻦﭘﺬﯾﺮﯼ analysis ﺗﺤﻠﻴﻞ analysis of covariance ﺗﺤﻠﻴﻞ ﮐﻮوارﯾﺎﻧﺲ analysis of deviance ﺗﺤﻠﻴﻞ اﻧﺤﺮاف analysis of variance ﺗﺤﻠﻴﻞ وارﯾﺎﻧﺲ ancillary information اﻃﻼع ﮐﻤﮑﯽ ancillary statistic ﺁﻣﺎرﻩ ﮐﻤﮑﯽ Anderson-Darling test ﺁزﻣﻮن اﻧﺪرﺳﻮن -دارﻟﻴﻨﮓ Andrews function plot ﻧﻤﻮدار ﺗﺎﺑﻌﯽ اﻧﺪروز angle زاوﯾﻪ angular transformation ﺗﺒﺪﯾﻞ زاوﯾﻪ اﯼ annealing ﻧَﻮَردﯾﺪن Ansari-Bradley W-statistic ﺁﻣﺎرﻩ Wﯼ اﻧﺼﺎرﯼ -ﺑﺮادﻟﯽ antimode ﭘﺎدﻣُﺪ antirank ﭘﺎدرﺗﺒﻪ antismoothing ﭘﺎدهﻤﻮارﺳﺎزﯼ antithetic variate ﻣﺘﻐﻴّﺮ ﻣﺘﻀﺎد application ﮐﺎرﺑﺮد applied probability اﺣﺘﻤﺎل ﮐﺎرﺑﺮدﯼ applied statistics ﺁﻣﺎر ﮐﺎرﺑﺮدﯼ approach رهﻴﺎﻓﺖ approgression رﮔﺮﺳﻴﻮن ﺗﻘﺮﯾﺐ approximate eigenvalue وﯾﮋﻩﻣﻘﺪار ﺗﻘﺮﯾﺒﯽ approximate solution ﺟﻮاب ﺗﻘﺮﯾﺒﯽ approximate value ﻣﻘﺪار ﺗﻘﺮﯾﺒﯽ approximation ﺗﻘﺮﯾﺐ approximation formula ﻓﺮﻣﻮل ﺗﻘﺮﯾﺐ approximation from above ﺗﻘﺮﯾﺐ اﺿﺎﻓﯽ approximation from below ﺗﻘﺮﯾﺐ ﻧﻘﺼﺎﻧﯽ approximation theory ﻧﻈﺮﯾﻪ ﺗﻘﺮﯾﺐ approximation to distribution ﺗﻘﺮﯾﺐ ﺗﻮزﯾﻊ approximation to function ﺗﻘﺮﯾﺐ ﺗﺎﺑﻊ approximation to mathematical functions ﺗﻘﺮﯾﺐ ﺗﺎﺑﻌﻬﺎﯼ رﯾﺎﺿﯽ approximative ﺗﻘﺮﯾﺒﯽ arbitrary constant ﺛﺎﺑﺖ دﻟﺨﻮاﻩ arbitrary origin ﻣﺒﺪا دﻟﺨﻮاﻩ arbitrary scale ﻣﻘﻴﺎس دﻟﺨﻮاﻩ arc-sine ﺁرﮎﺳﻴﻨﻮس arc-sine distribution ﺗﻮزﯾﻊ ﺁرﮎﺳﻴﻨﻮﺳﯽ arc-sine transformation ﺗﺒﺪﯾﻞ ﺁرﮎﺳﻴﻨﻮﺳﯽ area 1. ﻣﺴﺎﺣﺖ 2. ﺳﻄﺢ area sampling ﻧﻤﻮﻧﻪﮔﻴﺮﯼ در ﺳﻄﺢ Arfwedson distribution ﺗﻮزﯾﻊ ﺁرفودﺳﻮن argument ﺷﻨﺎﺳﻪ argument of a function ﺷﻨﺎﺳﻪ ﺗﺎﺑﻊ arithmetic ﺣﺴﺎب ﻣﻨﺒﻊ :ﻣﺮﮐﺰ ﺁﻣﺎر اﻳﺮان | www.statistics.hbn.ir Niktarjoman.ir www.statistics.hbn.ir ﻓﺮهﻨﮓ ﻟﻐﺎت ﺁﻣﺎرﯼ arithmetic mean ﻣﻴﺎﻧﮕﻴﻦ ﺣﺴﺎﺑﯽ arithmetic progression ﺗﺼﺎﻋﺪ ﺣﺴﺎﺑﯽ arithmetic triangle ﻣﺜﻠﺚ ﺣﺴﺎﺑﯽ arrangement ﺗﺮﺗﻴﺐ array ﺁراﯾﻪ array mean ﻣﻴﺎﻧﮕﻴﻦ ﺁراﯾﻪاﯼ ars conjectandi ﻓﻦ ﺣﺪس artificial intelligence هﻮش ﻣﺼﻨﻮﻋﯽ ascending chain زﻧﺠﻴﺮ ﻓﺰاﯾﻨﺪﻩ ascending chain condition ﺷﺮط زﻧﺠﻴﺮ ﻓﺰاﯾﻨﺪﻩ ascending error ﺧﻄﺎﯼ ﻓﺰاﯾﻨﺪﻩ assessment ارزﯾﺎﺑﯽ assessment of probabilities ارزﯾﺎﺑﯽ اﺣﺘﻤﺎﻟﻬﺎ assignable cause ﻋﻠﺖ اِﺳﻨﺎدﭘﺬﯾﺮ association ﭘﻴﻮﻧﺪ association coefficient ﺿﺮﯾﺐ ﭘﻴﻮﻧﺪ asymmetric ﻧﺎﻣﺘﻘﺎرن asymmetric population ﺟﺎﻣﻌﻪ ﻧﺎﻣﺘﻘﺎرن asymmetry ﻧﺎﻣﺘﻘﺎرﻧﯽ asymptotic behaviour رﻓﺘﺎر ﻣﺠﺎﻧﺒﯽ asymptotic convergence هﻤﮕﺮاﯾﯽ ﻣﺠﺎﻧﺒﯽ asymptotic efficiency ﮐﺎرﺁﯾﯽ ﻣﺠﺎﻧﺒﯽ asymptotic expansion ﺑﺴﻂ ﻣﺠﺎﻧﺒﯽ asymptotic formula ﻓﺮﻣﻮل ﻣﺠﺎﻧﺒﯽ asymptotic method روش ﻣﺠﺎﻧﺒﯽ asymptotic normality ﻧﺮﻣﺎل ﺑﻮدن ﻣﺠﺎﻧﺒﯽ asymptotic point ﻧﻘﻄﻪ ﻣﺠﺎﻧﺒﯽ asymptotic property وﯾﮋﮔﯽ ﻣﺠﺎﻧﺒﯽ asymptotic relative efficiency ﮐﺎرﺁﯾﯽ ﻧﺴﺒﯽ ﻣﺠﺎﻧﺒﯽ asymptotic relative efficiency of estimator ﮐﺎرﺁﯾﯽ ﻧﺴﺒﯽ ﻣﺠﺎﻧﺒﯽ ﺑﺮﺁوردﮔﺮ asymptotic representation ﻧﻤﺎﯾﺶ ﻣﺠﺎﻧﺒﯽ asymptotic series ﺳﺮﯼ ﻣﺠﺎﻧﺒﯽ asymptotic sufficiency ﺑﺴﻨﺪﮔﯽ ﻣﺠﺎﻧﺒﯽ asymptotic variance وارﯾﺎﻧﺲ ﻣﺠﺎﻧﺒﯽ asymptotically efficient estimator ﺑﺮﺁوردﮔﺮ ﻣﺠﺎﻧﺒﺎً ﮐﺎرﺁ asymptotically unbiased estimator ﺑﺮﺁوردﮔﺮ ﻣﺠﺎﻧﺒﺎً ﻧﺎارﯾﺐ asymptotics ﻣﺠﺎﻧﺒﻴﺎت atmospheric statistics ﺁﻣﺎر ﺟﻮّﯼ attraction رﺑﺎﯾﺶ attribute ﺻﻔﺖ ﮐﻴﻔﯽ auditing ﺣﺴﺎﺑﺮﺳﯽ augmented matrix ﻣﺎﺗﺮﯾﺲ اﻓﺰودﻩ autocorrelation ﺧﻮدهﻤﺒﺴﺘﮕﯽ autocorrelation function ﺗﺎﺑﻊ ﺧﻮدهﻤﺒﺴﺘﮕﯽ autocovariance اﺗﻮﮐﻮوارﯾﺎﻧﺲ automatic interaction detection technique ﻓﻦ ﺧﻮدﮐﺎر ﺁﺷﮑﺎرﺳﺎزﯼ اﺛﺮ ﻣﺘﻘﺎﺑﻞ ﻣﻨﺒﻊ :ﻣﺮﮐﺰ ﺁﻣﺎر اﻳﺮان | www.statistics.hbn.ir Niktarjoman.ir www.statistics.hbn.ir ﻓﺮهﻨﮓ ﻟﻐﺎت ﺁﻣﺎرﯼ autoregressive اﺗﻮرﮔﺮﺳﻴﻮ autoregressive integrated moving average ﻣﺪل ﻣﻴﺎﻧﮕﻴﻦ ﻣﺘﺤﺮﮎ ﺟﻤﻊﺑﺴﺘﻪ اﺗﻮرﮔﺮﺳﻴﻮ model autoregressive model ﻣﺪل اﺗﻮرﮔﺮﺳﻴﻮ autoregressive process ﻓﺮاﯾﻨﺪ اﺗﻮرﮔﺮﺳﻴﻮ autoregressive-moving average model ﻣﺪل ﻣﻴﺎﻧﮕﻴﻦ ﻣﺘﺤﺮﮎ اﺗﻮرﮔﺮﺳﻴﻮ auxiliary equation ﻣﻌﺎدﻟﻪ ﮐﻤﮑﯽ auxiliary sample ﻧﻤﻮﻧﻪ ﮐﻤﮑﯽ auxiliary variable ﻣﺘﻐﻴّﺮ ﮐﻤﮑﯽ availability ﺁﻣﺎدﮔﯽ average 1. ﻣﻴﺎﻧﮕﻴﻦ 2. ﻣﺘﻮﺳﻂ average critical value method روش ﻣﻘﺪار ﺑﺤﺮاﻧﯽ ﻣﺘﻮﺳﻂ average curvature ﺧﻤﻴﺪﮔﯽ ﻣﺘﻮﺳﻂ average density ﭼﮕﺎﻟﯽ ﻣﺘﻮﺳﻂ average extra defective limit ﺣﺪ ﻣﺘﻮﺳﻂ اﻗﻼم ﻣﻌﻴﻮب اﺿﺎﻓﯽ average life ﻣﺘﻮﺳﻂ ﻋﻤﺮ average outgoing quality ﻣﺘﻮﺳﻂ ﮐﻴﻔﻴﺖ ﺧﺮوﺟﯽ average outgoing quality limit ﺣﺪ ﻣﺘﻮﺳﻂ ﮐﻴﻔﻴﺖ ﺧﺮوﺟﯽ average run length ﻣﺘﻮﺳﻂ ﻣﺪت اﺟﺮا average sample number ﻣﺘﻮﺳﻂ ﺗﻌﺪاد ﻧﻤﻮﻧﻪ averaged shifted histogram ﺑﺎﻓﺖﻧﮕﺎر ﻣﻴﺎﻧﮕﻴﻦ اﻧﺘﻘﺎﻟﯽ averaging ﻣﺘﻮﺳﻂﮔﻴﺮﯼ axial distribution ﺗﻮزﯾﻊ ﻣﺤﻮرﯼ axial symmetry ﺗﻘﺎرن ﻣﺤﻮرﯼ axiomatic set theory ﻧﻈﺮﯾﻪ اﺻﻞ ﻣﻮﺿﻮﻋﯽ ﻣﺠﻤﻮﻋﻪهﺎ axiomatizable theory ﻧﻈﺮﯾﻪ اﺻﻞ ﻣﻮﺿﻮعﭘﺬﯾﺮ axiomatization اﺻﻞ ﻣﻮﺿﻮﻋﯽﺳﺎزﯼ axioms اﺻﻮل ﻣﻮﺿﻮع axioms of probability اﺻﻮل ﻣﻮﺿﻮع اﺣﺘﻤﺎل axis ﻣﺤﻮر ﭘﺲﺑﻴﻨﯽ Back-projection backward ﭘﺴﺮو backward difference ﺗﻔﺎﺿﻞ ﭘﺴﺮو backward difference operator ﻋﻤﻠﮕﺮ ﺗﻔﺎﺿﻠﯽ ﭘﺴﺮو backward elimination selection procedure ﺷﻴﻮﻩ ﮔﺰﯾﻨﺶ ﺣﺬﻓﯽ ﭘﺴﺮو backward-shift operator ﻋﻤﻠﮕﺮ اﻧﺘﻘﺎل ﭘﺴﺮو Bahadur efficiency ﮐﺎرﺁﯾﯽ ﺑﻬﺎدرﯼ Bahadur-Lazarsfeld expansion ﺑﺴﻂ ﺑﻬﺎدر -ﻻزارزﻓﻠﺪ balance ﺗﻌﺎدل balanced ﻣﺘﻌﺎدل balanced block design ﻃﺮح ﺑﻠﻮﮐﯽ ﻣﺘﻌﺎدل balanced design ﻃﺮح ﻣﺘﻌﺎدل balanced difference ﺗﻔﺎﺿﻞ ﻣﺘﻌﺎدل ﻣﻨﺒﻊ :ﻣﺮﮐﺰ ﺁﻣﺎر اﻳﺮان | www.statistics.hbn.ir Niktarjoman.ir www.statistics.hbn.ir ﻓﺮهﻨﮓ ﻟﻐﺎت ﺁﻣﺎرﯼ balanced incomplete block ﺑﻠﻮﮎ ﻧﺎﻗﺺ ﻣﺘﻌﺎدل balanced incomplete block design ﻃﺮح ﺑﻠﻮﮐﻬﺎﯼ ﻧﺎﻗﺺ ﻣﺘﻌﺎدل balanced range of error داﻣﻨﻪ ﺧﻄﺎﯼ ﻣﺘﻌﺎدل balanced repeated replication ﺗﮑﺮار ﻣﮑﺮّر ﻣﺘﻌﺎدل balanced resampling ﺑﺎزﻧﻤﻮﻧﻪﮔﻴﺮﯼ ﻣﺘﻌﺎدل balanced resampling using orthogonal ﺑﺎزﻧﻤﻮﻧﻪﮔﻴﺮﯼ ﻣﺘﻌﺎدل ﺑﺎ اﺳﺘﻔﺎدﻩ از ﺁراﯾﻪهﺎﯼ ﭼﻨﺪﮔﺎﻧﻪ multiarrays ﻣﺘﻌﺎﻣﺪ balanced sample ﻧﻤﻮﻧﻪ ﻣﺘﻌﺎدل balanced set ﻣﺠﻤﻮﻋﻪ ﻣﺘﻌﺎدل balancing ﻣﺘﻌﺎدلﺳﺎزﯼ Balducci hypothesis ﻓﺮض ﺑﺎﻟﺪوﺗﭽﯽ ballot problems ﻣﺴﺎﯾﻞ راﯼﮔﻴﺮﯼ ballot theorem ﻗﻀﻴﻪ راﯼﮔﻴﺮﯼ Banach space ﻓﻀﺎﯼ ﺑﺎﻧﺎخ Banach's match-box problem ﻣﺴﺌﻠﻪ ﻗﻮﻃﯽ ﮐﺒﺮﯾﺖ ﺑﺎﻧﺎخ band chart ﻧﻤﻮدار ﻧﻮارﯼ bank ﺑﺎﻧﮏ bar chart ﻧﻤﻮدار ﻣﻴﻠﻪاﯼ Barlow-Schever reliability growth model ﻣﺪل رﺷﺪ ﻗﺎﺑﻠﻴﺖ اﻋﺘﻤﺎد ﺑﺎرﻟﻮ - ﺷﻪور Bartlett adjustment ﺗﺼﺤﻴﺢ ﺑﺎرﺗﻠﺖ Bartlett's test of homogeneity of variances ﺁزﻣﻮن ﺑﺎرﺗﻠﺖ ﺑﺮاﯼ هﻤﮕﻨﯽ وارﯾﺎﻧﺲ هﺎ Barton-David test ﺁزﻣﻮن ﺑﺎرﺗﻮن -دﯾﻮﯾﺪ barycentric coordinates ﻣﺨﺘﺼﺎت ﮔﺮاﻧﻴﮕﺎهﯽ basis ﭘﺎﯾﻪ basis of a vector space ﭘﺎﯾﻪ ﻓﻀﺎﯼ ﺑﺮدارﯼ Basu theorems ﻗﻀﻴﻪهﺎﯼ ﺑﺎﺳﻮ Basu's elephant ﻓﻴﻞ ﺑﺎﺳﻮ bathtub curve ﺧﻢ ﮔﻮداﻟﯽ Baule's equation ﻣﻌﺎدﻟﻪ ﺑﻮﻟﻪ Bayes decision rule ﻗﺎﻋﺪﻩ ﺗﺼﻤﻴﻢ ﺑﻴﺰﯼ Bayes estimator ﺑﺮﺁوردﮔﺮ ﺑﻴﺰﯼ Bayes formula ﻓﺮﻣﻮل ﺑﻴﺰ Bayes linear estimator ﺑﺮﺁوردﮔﺮ ﺧﻄﯽ ﺑﻴﺰﯼ Bayes loss زﯾﺎن ﺑﻴﺰﯼ Bayes' risk ﻣﺨﺎﻃﺮﻩ ﺑﻴﺰﯼ Bayes' theorem ﻗﻀﻴﻪ ﺑﻴﺰ Bayesian forecasting ﭘﻴﺶﺑﻴﻨﯽ ﺑﻴﺰﯼ Bayesian inference اﺳﺘﻨﺒﺎط ﺑﻴﺰﯼ Bayesian model selection ﻣﺪلﮔﺰﯾﻨﯽ ﺑﻴﺰﯼ Bayesian regression رﮔﺮﺳﻴﻮن ﺑﻴﺰﯼ Bayesian robustness اﺳﺘﻮارﯼ ﺑﻴﺰﯼ Bechhofer test ﺁزﻣﻮن ﺑﭽﻬﻮﻓﺮ Behrens' problem ﻣﺴﺌﻠﻪ ﺑﺌﺮﻧﺲ Behrens-Fisher problem ﻣﺴﺌﻠﻪ ﺑﺌﺮﻧﺲ-ﻓﻴﺸﺮ Behrens-Fisher test ﺁزﻣﻮن ﺑﺌﺮﻧﺲ -ﻓﻴﺸﺮ belief function ﺗﺎﺑﻊ ﺑﺎور ﻣﻨﺒﻊ :ﻣﺮﮐﺰ ﺁﻣﺎر اﻳﺮان | www.statistics.hbn.ir Niktarjoman.ir www.statistics.hbn.ir ﻓﺮهﻨﮓ ﻟﻐﺎت ﺁﻣﺎرﯼ Bell polynomial ﭼﻨﺪﺟﻤﻠﻪاﯼ ﺑِﻞ Bell-Duksum test ﺁزﻣﻮن ﺑِﻞ-داﮐﺴﺎم bell-shaped curve ﺧﻢ زﻧﮕﺪﯾﺲ Bellman-Harris process ﻓﺮاﯾﻨﺪ ﺑِﻠﻤﻦ-هﺮﯾﺲ bending a surface ﺧﻤﺎﻧﺪن روﯾﻪ bending moment ﮔﺸﺘﺎور ﺧﻤﺸﯽ Benford's law ﻗﺎﻧﻮن
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