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Length of label vector does not match # of instances. label (1st argument) should be a vector (# of column is 1). Error: cannot full testing instance matrix Error: cannot transpose testing instance matrix Prob. model for test data: target value = predicted value + z, z: Laplace distribution e^(-|z|/sigma)/(2sigma),sigma=%g Mean squared error = %g (regression) Squared correlation coefficient = %g (regression) Accuracy = %g%% (%d/%d) (classification) Error: label vector and instance matrix must be double Model does not support probabiliy estimates Model supports probability estimates, but disabled in predicton. model file should be a struct array fulltransposeUnknown option: -%c Error: can't read model: %s ?Y@unknown svm typeunknown kernel typegamma < 0cache_size <= 0eps <= 0C <= 0p < 0specified nu is infeasiblenu <= 0 or nu > 1wCsvm_type %s kernel_type %s degree %d gamma %g coef0 %g nr_class %d total_sv %d rho %glabel %dprobAprobBnr_svSV %.16g 0:%d %d:%.8g rbc_svclinear%80ssvm_typeunknown svm type. kernel_typeunknown kernel function. degreegamma%lfcoef0nr_classtotal_sv: *.nu = %f C = %f epsilon = %f obj = %f, rho = %f nSV = %d, nBSV = %d Total nSV = %d nu_svcone_classepsilon_svrnu_svrpolynomialrbfsigmoidprecomputeddegree of polynomial kernel < 0shrinking != 0 and shrinking != 1probability != 0 and probability != 1one-class SVM probability output not supported yetModel doesn't contain information for SVR probability inference unknown text in model file: [%s] WARNING: using -h 0 may be faster WARNING: reaching max number of iterations optimization finished, #iter = %d Exceeds max_iter in multiclass_prob Prob. model for test data: target value = predicted value + z, z: Laplace distribution e^(-|z|/sigma)/(2sigma),sigma= %g WARNING: training data in only one class. See README for details. WARNING: class label %d specified in weight is not found Line search fails in two-class probability estimates Reaching maximal iterations in two-class probability estimates 5J_tKUB}ZoIַ9Solver_NU6Solver6Kernel7QMatrix5SVC_Q11ONE_CLASS_Q5SVR_Q-q?$@-q=Hz>P?{Gzt?0A@@h㈵>-C6?|=number of return field is not correctcannot transpose SV matrixParameterstotalSVLabelProbAProbBnSVsv_coefSVs;RLMaM N WHZZZ0*[ \$__`8Dd`df@f`f*gkgg@g`jkk/lnoxp p8 /qX v v w  0 ,P Fp , ̊  ( fP p   f@ ǥh ] G &PPp(~  8X&~  8 ` : .zRx 0JAC <'JZAC H$\aJAC P$J AC Z$bTAC ^zPRx  $WAC DW AC dAC GAC *AC VMAC AC Jh AC $hAC DrVAC L$d4WAC P$ZAC ZAC $v[AC P^AC N_ AC 4l AC TV AC t@UAC v AC `AC `AC ` AC k`7AC 4`AAC T`AC tAC AC AC >`'AC L$E`/AC [Lc%AC H<QcAC F\+d4AC H$|?dUAC r$lfVAC PAC L4AC S$ ZgAC P$4~AC P$\ AC P$AC PgCAC LgCAC L$goAC PmFAC $4 tGCC: (Ubuntu 4.4.3-4ubuntu5.1) 4.4.3.symtab.strtab.shstrtab.note.gnu.build-id.gnu.hash.dynsym.dynstr.gnu.version.gnu.version_d.gnu.version_r.rela.dyn.rela.plt.init.text.fini.rodata.eh_frame_hdr.eh_frame.gcc_except_table.ctors.dtors.jcr.data.rel.ro.dynamic.got.got.plt.data.bss.comment$20.o  (8 HH@ HoUo  8doXXs((x } ((@@##888PP  a   @ @ 8 8 X X  p P P  0P%u  H  X (  ( @ #8P   @ 8 X   P  # * 8 E #[P jX x #    #Z f>'  CUI@ 0] 0t M` h  Z | P  ms# ? 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