A Complete Bibliography of Publications in Statistics and Probability Letters: 2010–2019

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A Complete Bibliography of Publications in Statistics and Probability Letters: 2010–2019 A Complete Bibliography of Publications in Statistics and Probability Letters: 2010{2019 Nelson H. F. Beebe University of Utah Department of Mathematics, 110 LCB 155 S 1400 E RM 233 Salt Lake City, UT 84112-0090 USA Tel: +1 801 581 5254 FAX: +1 801 581 4148 E-mail: [email protected], [email protected], [email protected] (Internet) WWW URL: http://www.math.utah.edu/~beebe/ 24 April 2020 Version 1.24 Title word cross-reference (1; 2) [Yan19a]. (α, β)[Kay15].(1; 1) [BO19]. (k1;k2) [UK18]. (n − k +1) [MF15, ZY10a]. (q; d) [BG16]. (X + Y ) [AV13b]. 1 [Hel19, Red17, SC15, Sze10]. 1=2[Efr10].f2g [Sma15, Jac13, JKD15a, JKD15b, Kha14, LM17, MK10, Ose14a, WL11]. 2k [Lu16a, Lu16b]. 2n−p [Yan13]. 2 × 2 [BB12, MBTC13]. 2 × c [SB16]. 3 [CGLN17, HWB10]. 3x + 1 [DP16]. > [HB18]. > 1=2 [DO11a]. [0; 1] [LP19a]. L1 q (` ) [Ose15a]. k [BML14]. r [VCM14]. A [CDS17, MPA12, PPM18, KDW15]. A1 [Ose13a]. α [AH12b, hCyP15, GT14, LT19b, MY14, MU13, Mic11, MM14b, PP14b, Sre12, Yan17b, ZZT17, ZYS19, ZZ13b, ZLC18, ZZ19a]. AR(1) [CL10, Mar16, PPN10]. AR(p) [WN14b]. ARH(1) [RMAL19].´ β [EM10, JW16, Kre18, Poi19, RBY10, Su10, XXY17, YZ16]. β !1[JW16]. 1 C[0; 1] [Mor18]. C[0; 1] [KM19]. C [LL17c]. D [CDS17, DS15, Jac11, KHN12, Sin19, Sma14, ZP12, Dav12b, OA15,¨ Rez15]. 1 2 Ds [KHN12]. D \ L [BS12a]. δ [Ery12, PB15a]. d ≥ 3 [DH19]. DS [WZ17]. d × R [BS19b]. E [DS15, HR19a, JKD14, KDW15]. E(fNOD)[CKF17].`1 N [AH11]. `1 [Ose19]. `p [Zen14]. [BCD19]. exp(x)[BM11].F [MMM13]. G [Che10d, LW15c, RH11, Ren13, Son15, WSMG18, HC10b]. γ<−1=2[SJ14]. GARCH(p; q)[Roh13].h [YYY17]. H 2 (0; 1=2) [SC12b]. I1;p [BCGFR13, JB13a]. I2;p [BCGFR13, JB13a]. INGARCH(p; q) [CW16]. K [Mat12, MM14a, Nag19, DZZ13, DZF18, Ery14, Jas19, JS19, KV13, KLK12, LFM15, MGSL11, MM11, PS18a, RIK16, RA13b, RA13a, TE17, ZK10, Zha18]. L [KO11, LLC+12, LLCG12, Nag13, OK15]. L1 [ANRW15, DS11, ZW15a, dMO18]. L2 [Ose13b, Tap10, LL17d]. L2 log L 1 p [Ose14b]. L [Che10b]. L [Ben17, Izu13, LZ10, LD10, OS15, TJS13]. L0 [Ciu15]. L1 [CW11, DFKK12, MMF17]. L2 [CLQ12, EQ14, Xia17, ZWHQ15]. Lp [BBP17, GLM19, LM15a, YH16, ZBL19]. lim sup [Dav13]. M [DSX13, DZX18, EBG16, FG12, GLS13, HWZ14, Lin17b, Mao15a, MYA15, Vir16, WZT12, Ana17, Ber13a, FC10, Raq10, SY10]. MA(p) [WN14b]. R d n [LYC14, YWC10]. R [CG13, IMU10, Yan12]. R [VY12]. R+ [MS12b]. Z d L [CLEAMS16]. Z+ [MZ17]. 1 [ZJZ13]. N [CH12, Had11, Had13, HWYW12, PH13a, RR14, WHRY11, WW13b, B´el11, CP11, DZZ13, DS15, LFM15, MM11, MF15, RIK16, Raq10, ZK10, ZY10a, Zha18]. n ≡ 3mod4[JKD14]. ν [Xu12b]. O [DSS18, LW12, YLS10]. P [Llo10, Llo12, AIM19, BMP10b, CS17, Che13b, DT10, Gre12, LX10a, PJ10, RW16b, SL12, SDNS16, XT11]. P (X<Y) [Dat13, TNP17]. p=n ! 0 [Bao12, Xie13]. p = 3 [Pin13]. Φ [CW19, PL15a, Sze11, Zho10]. Φp [Pro13]. π [WX18, Xu15]. Ψ [HS12c]. Q [Il'18, Myr19, Bry14, OT19, Sza15, Wan16]. QΦ1 [Yu11]. QΦ2 [Yu11]. R + − [Ric10, Wan13c, OA15].¨ rW 2 [PRS15]. ρ [GZ13]. ρ [XW17]. S [GB16, Yor14, LZZ15b]. σ [LVMS14, Vid18]. Σ2 [ZG17a]. T [KM13c, AP13, AN15, BV10, BBP17, BSWS13, Car10, Che18b, Fan17, FS10, HHY11, LMH14, ORO15, PT13, PLN16, TMS11, VM12, WY16]. t3 [AN10]. τ [vDLMW19]. θ [CW12]. U [CD18b, DR02, DR15, EQ14, FMPV12, GD15, GD18, Nas12, VB17]. V [Lee12b, AKM19]. W [Pak18]. W2 [Bob13]. W ×F [WWD15]. X=(X + Y ) [AV13b]. y [XF17]. Z2 [Mis13]. Zd [Gao19]. -Brownian [Bry14, GT14, ZZ13b, ZLC18, RH11, WSMG18]. -class [Pro13]. -compactness [LVMS14]. -concave [DZF18]. -conformal [AIM19]. -consistent [DFKK12, RR14]. -constraints [AH11]. -convergence [LL17c, OS15]. -convex [Ose14a]. -curves [Tap10]. -D [Hel19, SC15, Kha14]. -deficiency [ZJZ13]. -demimartingale [WHRY11]. -demimartingales [CH12, Had11, Had13, HWYW12, WW13b]. -densities [OT19]. -dependent [Ana17]. -dimensional [Dav12b, HWB10]. -discrepancies [CLQ12]. -discrepancy [EQ14, ZWHQ15]. -distribution [Che18b, PT13]. -divergences [GB16]. -entropy [RBY10, CW19]. -error [LZ10]. -estimates [Vir16]. -estimation [DSX13, Mao15a, WZT12]. -estimator [DZX18, FG12, HWZ14]. -estimators [EBG16, Lin17b]. -expectation 3 [Che10d]. -expectations [HC10b]. -exponential [DSS18]. -fields [Vid18]. -folded [XT11]. -functions [AKM19]. -FWER [MGSL11]. -Gaussian [MYA15]. -Hermite [JW16]. -identical [Il'18]. -independence [Il'18]. -independent [Myr19]. -inverses [Sma15]. -Laguerre [JW16]. -level [Jac13, JKD15a, JKD15b, LZZ15b, Mat12]. -L´evy [Ren13]. -martingales [Ose13b]. -means [MM14a]. -method [CW12]. -metric [YH16]. -mixing [hCyP15, GZ13, Kre18, Poi19, Sze11, XXY17, XW17, Zho10]. -model [YZ16]. -moment [PL15a]. -moments [Nag13]. -monotone [Rez15]. -monotonicity [Sre12]. -nearest [KLK12]. -norm [GLM19]. -Normal [Sza15, Son15]. -optimal [CDS17, DS15, HR19a, KHN12, LYC14, MPA12, PPM18, Sin19, Sma14, WZ17, ZP12]. -optimality [Jac11, JKD14]. -Ornstein [Wan16]. -out-of- [DZZ13, LFM15, MM11, MF15, RIK16, Raq10, ZY10a, Zha18]. -permutation [Yor14]. -Poincar´e [ZW15a]. -principal [MK10]. -quantile [XT11]. -quantiles [BBP17]. -random [BV10, Yan19a]. -record [JS19]. -records [RA13b, RA13a]. -regression [GLS13]. -regularly [YLS10]. -risk [Ben17]. -runs [UK18]. -SDEs [LW15c]. -selfdecomposable [MU13]. -shock [Ery12, PB15a]. -Slepian-processes [BG16]. -solutions [ZBL19]. -square [Wan13c]. -squared [Ric10]. -stability [Ber13a]. -stable [LT19b, MY14, Mic11, MM14b, Yan17b, ZZT17, ZYS19, ZZ19a]. -statistic [Fan17, HHY11]. -statistics [DR15, DR02, FMPV12, GD15, GD18, KO11, LLC+12, LLCG12, Nas12, OK15, VB17]. -Stieltjes [OT19]. -subexponential [LW12]. -symmetric [JB13a, BCGFR13, Nag19]. -TARCH [EM10]. -th [Jas19, PJ10]. -th-order [FC10]. -torus [PH13a]. -transforms [YYY17]. -type [LM17, EQ14]. -uniform [Lee12b]. -urn [CGLN17]. -value [Gre12, LX10a, SL12, Llo12]. -valued [KM19, Mor18, Ose19]. -values [BMP10b, Che13b, RW16b, SDNS16, Llo10]. -Wasserstein [Xia17]. -weak [HS12c]. -wise [PS18a]. /1 [BML14, VCM14]. 1 [BML14, Bri15, PSC12, VCM14]. 110 [Ton17]. 12 [HB18]. 123 [BSCQ18]. 137 [Suz20]. 145 [Sko20]. 1queue [Kin12]. 27 [Bro11]. 2RV [LH14a]. 3 [ZP15]. 57 [DR15]. 68 [Duc10]. 78 [Kim13, SF12]. 4 81 [Kak11a, MN13]. 82 [Abu12a, Bai13, DFL13, DFT13]. 83 [MM14c, RA13b]. A-optimal [ASP11]. Aalen [BTT16, Ane17]. ABC [SHL15]. Abelian [Myr19]. aberration [BDM17, ySDM14, YYS18]. absence [AG18, MHH11]. Absolute [Nak13b, BS12a, BK13, Ern17, HR15, NKKY13, PP11, Ush11b, WYL10, Wu14, XT11]. Absolutely [Neu13, dSF12, Mes14]. absorbing [HZZ19, KW14b]. absorption [Mil19b]. Abundance [LZL+19, MHH11]. Accelerated [KFHS11, Hat12, Zha11b]. Accelerating [CH13, PH13a]. acceleration [Sak15]. acceptance [RMPB17]. accessibility [TU17]. according [CK16a]. accumulated [Hew17]. accurate [SLC16]. achieving [SW11]. Acknowledgement [Bro11]. across [TM16]. action [HY13, Ose19]. active [BZV11, MM11, VAZB10, Zha18]. Acyclic [CC16]. ad [Llo12]. adaptation [vWvZ17]. adapted [BH11, QX13, THC17]. Adaptive [KZ14, PB15b, WW14, BB16, BL10b, BB10, BB11c, BCNM15, DFH18, Li15b, PP14b, RW17, RZ10, SS11a, WST14, ZZLH15, ZKG10]. adding [CG17, dB13]. Additive [SA12b, ASP11, BTT16, Dun16b, EM16, HL13a, Kak11a, Kak11b, LV11b, Lia12b, Lia13, LHM14, LXL19, MZZ15, PSS12, PT19, QCZ15, SV19, SZ13b, TSL18, WCD19, YY16]. Adeles [Urb12, Yas13]. ADHD [ASN16]. adiabatic [Kov10]. adjacent [HS10]. adjoint [Min17]. Adjusted [LQ19, Ric10, Bak18, RW16b, SS11b, SDNS16, TPNSN19, XSL+14, ZX18]. Adjusting [BDB+10]. adjustment [Kak12, Llo12, Lu16a, KOR15b]. adjustments [FP13, Kak11a, Kak11b]. Admissibility [Kab11]. Adomian [KV17a]. advantage [HS11a]. advection [Sab18]. adverse [Pac18]. Aeppli [MB14]. affine [GS17a, KL17, Shu18a]. after [KM18, RG18, Yak15]. against [BDM17, DdRS+11, GMA12, GM17b, Han12b, OK15]. age [McC12, SKJ15]. age- [McC12]. Ageing [NV11, BNM13b, GM17a, MF15]. aggregate [BS11, BZ13, JCM15, Kau14, Sha17]. aggregating [BP15]. Aggregation [CP14, CH19, EPSU16, NP16, PS15]. aging [DM11, Nav18]. agreement [GM10b]. AIC [JT14, NMS15, WZ10]. Ait [Dun16a]. Ait-Sahalia [Dun16a]. al [JB13a]. Algebraic [Lan11, Son16, Mat12]. algebras [Fis13]. algorithm [AT14b, CMW18, CD18a, CL15, CP13b, DCR19, Giu15, HH18, HC17, HM10b, KW14a, KN17, LW15b, MM14a, MN16, NHN+11, Tan15a, TZT16, VM12, WMM15, WH10, XSL+14, Yao13b, ZMG10, ZHWH12, ZHWH12]. algorithms [CP17a, CJT10, JH14, KMR13]. alias [ZGZ18]. Allocation [Jon17, Bel16b, BB11c, LTP18, MBTC13, WL15a, Wri17, XZZ19, Zha18]. allocations [MM11]. Almost [CW12, CLM12, Coe15, CP13b, Mou19, Wu11b, Xin12, XW17, BBHH10, GAS13, JWCC19, KM12a, MW14a, PP19, Tan13a, ZZ15c]. almost-exact [MW14a]. almost-sure [BBHH10]. Alpha [HA13]. Alpha-Skew-Laplace [HA13]. alternating [Hew17, Rat15]. alternative [BMD13, BM17, CH11b, GMA12, LP13, Llo10, LDD15, ML17, OO11, WL14b]. alternatives [AB11, AM11, BDvdAW16, Car10, DN16, GM17b, Han12b]. 5 always [Mis14, dB13]. Amato [Arn12]. ambiguity [JS18, ZZZ18]. American [PY18]. among [PS16b, TZ16]. amount [MPA12, PP14b, RSV10, ZW13]. amounts [BNB16]. Amp`ere [KM13d]. amplitude [Efr14]. amplitude-modulated [Efr14]. analog [HJS19]. analogue [MM18]. analyse [Shi18]. analyses [BCR10, HLR15]. Analysis [WR18, AT14a, AD11, Bak18, BB16, BNM13b, BL10b, BK18, CCS16, CM17, CH17, DMST13, Doe18, FXT12, Gho11a, GDNM18, HZW16, HW13b, Ilm13, IM15, JL16, Kab16, KT10, KM13b, LD16a, LCX12, LG12, LLZ13, Mas11, MNO15, Mih12, Ruk12, SM16, SWH+11, Sta12, SZ13b, TL19, Tan15a, TSL18, TKO12, TM16, TR12, TA14, Vel12, WS12, WK10a, ZY11]. analyst [Won18]. Analytic [Gho11a, VM12, KS16a, Roy12]. Analytical [SGV15, CJN19]. analyzing [SB16, WL11, ZCZ18]. ancillary [NS12]. Andersen [ZY10b]. angular [HdCC17]. anisotropic [Ben17, LX10b, Mis13, S¨oh10]. annealing [RR11]. annuity [WWY12]. ANOVA [WZT14]. Answer [WC17]. Anticipated [LR13b, TH14, WWR12, THC17, Xu12a, Yu19, ZX19]. Anticipative [WS17]. any
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