COMPUTATIONAL INTELLIGENCE

Size: px
Start display at page:

Download "COMPUTATIONAL INTELLIGENCE"

Transcription

1 COMPUTATIONAL INTELLIGENCE LABORATORY CLASSES Immentton smplstc verson of the or AANG network for some nference resons Adrn Horzyk

2 IMPLEMENTATION OF THE SIMPLISTIC OR AANG Imment the smplstc verson of n structure or AANG neurl grph for Irs dt. You don t need to use AVB-trees, AVB+trees, or ASSORT-2 to crete t. You cn use hsh-tbles, c sortng lgorthms, sorted lsts, dctonres, but the result should be smlr nd correct. You don t need to present your results or network structure grphclly, Only text form of results s requred. If you lke to choose one of the projects mmentng AANG (the proposl 1 or 2) you cn nclude ths tsk n your fnl projects nd do both t one go. Independently from your choce of mmentton or AANG use the selected one to: 1. Fnd the most smlr object(s) to the gven object. 2. Fnd the most smlr object(s) to ny combnton of nput dt gven on the nput. 3. Usng ssoctons generte the lst of ll objects sorted by the smlrty to the gve object (Tsk 1) or ny combnton of nput dt (Tsk 2).

3 You cn crete ths grph n the followng steps for gven dt set: ASSOCIATIVE TRANSFORMATION IRIS PATTERNS n the tree-bsed grph structure IRIS PATTERNS IRIS PATTERNS

4 nodes representng neghborng (subsequent) vlues of ech ttrbute k re connected nd the weght of ths connecton (edge) s computed fter the followng formul: w v k,v k = 1 v k v k j j where v k, v k j - re vlues represented by the neghborng ttrbute nodes, whch re connected by n edge n the grph, r k = v k mx k vmn - s the current rnge of vlues of the ttrbute k. The weght of the connecton from the vlue node v k of the ttrbute k to the object node R m s determned fter the number of occurrences N k of ths vlue (v k ) n ll objects: w v k = 1,R m N k = 1 v k These numbers (N k = v k ) re stored n the ndvdul vlue nodes of ech ttrbute. Ths number s equl to the number or ll connectons of ths vlue node to ll object nodes f there re no duplcted objects n the tble used to crete the structure. In the opposte drecton, the weghts of connectons from the object nodes to the vlue nodes re lwys equl to one: w Rm,v k = 1 WEGIHTS COMPUTATION r k w, = 1 =

5 ASSOCIATIVE INFERENCE USING STRUCTURES Assoctve dt structures cn be now used for ssoctve nference, whch s bsed on movng long the connectons to the connected nodes nd computng some vlues n these nodes on the bss of the send vlues multpled by weghts of these connectons. In such wy we get the nformton bout e.g. smlrty of objects represented by other nodes of the sme knd or bout the objects tht stsfy some gven condtons defned by the represented ttrbute vlues. Let s use our grph creted for 13 Irses for such nference lookng for objects (Irses) Rx whch re most smlr to. 1. We strt n the node whch ssumes the smlrty vlue x=, becuse ths node s 100% smlr to tself. 2. Next, we ssgn vlues x of the connected nodes representng the followng vlues:,,,, nd by multplyng the vlue comng from the node wth the connecton weghts, whch re equl. So, s result, we cheve x= for ll these connected nodes

6 ASSOCIATIVE INFERENCE USING STRUCTURES 3. Subsequently, the vlues computed for these nodes re multpled by next connecton weghts nd send to the neghbor connected vlue nodes, for whch we lso compute ther smlrty vlues x. 4. Smlrly, we compute the smlrty vlues x for connected object nodes wth regrds to the necessty to dd the pssed weghted vlues to the sums lredy stored n these nodes, e.g. for the node we compute x = * * * 0.2 = 0.48 x=0.61 x=0.80 x= x=0.78 x=0.88 x=0.74 x=0.66 x=0.61 x=0.64 x=0.80 x=0.70 x=0.63 x=0.48 x=0.48 x=0.38 x=0.39 x=0.14 x= x= x=0.37 3

7 ASSOCIATIVE INFERENCE USING STRUCTURES 5. Fnlly, when we go through ll the connected (ssocted) vlues nodes computng thers vlues of smlrtes by multplyng the sender smlrty vlues by connecton weghts. We lso computed weghted sums for ll object nodes, where these weghts re here equl w = 1/5 = 0.2. The computed smlrty vlues for the nodes Rx cn be used to compre nd desgnte the most smlr objects to the object : (78%), (77%), (75%), x=0.58 x=0.61 x=0.78 x=0.88 x=0.73 x=0.65 x=0.58 x=0.67 x=0.74 x=0.66 x=0.54 x=0.49 x=0.61 x=0.64 x=0.60 x=0.53 x=0.50 x=0.80 x=0.70 x=0.63 x=0.57 x=0.51 x=0.46 x=0.41 x=0.75 x=0.77 x=0.70 x=0.78 x=0.56 x= x= x= x= x=0.42 It s lso worth notng tht grphs re not neurl structures, so we re not oblgted to multply the nodes smlrty vlues by connecton weghts, but we cn lso use nother formuls, e.g. we cn subtrct the comment of the connecton weght vlue from the smlrty vlue represented by the sender: x = x - (1 w). Consequently, we get nother mesure of smlrty represented by the vlue nodes nd object nodes. We cn lso used DASNG grph formuls to clculte weghts between vlue nodes nd object nodes to emphsze rrty of the vlue usng the frequency of connectons comng out from vlue nodes: w = 1 / the number of outgong connectons.

8 You cn lso choose to mment AANG neurl network

9 Bblogrphy nd References

COMPUTATIONAL INTELLIGENCE

COMPUTATIONAL INTELLIGENCE COMPUTATIONAL INTELLIGENCE LABORATORY CLASSES Immentton smplstc verson of the network for some nference resons Adrn Horzyk IMPLEMENTATION OF THE SIMPLISTIC OR AANG Imment the smplstc verson of n structure

More information

Section 3.1: Sequences and Series

Section 3.1: Sequences and Series Section.: Sequences d Series Sequences Let s strt out with the definition of sequence: sequence: ordered list of numbers, often with definite pttern Recll tht in set, order doesn t mtter so this is one

More information

9.1 apply the distance and midpoint formulas

9.1 apply the distance and midpoint formulas 9.1 pply the distnce nd midpoint formuls DISTANCE FORMULA MIDPOINT FORMULA To find the midpoint between two points x, y nd x y 1 1,, we Exmple 1: Find the distnce between the two points. Then, find the

More information

Unit 5 Vocabulary. A function is a special relationship where each input has a single output.

Unit 5 Vocabulary. A function is a special relationship where each input has a single output. MODULE 3 Terms Definition Picture/Exmple/Nottion 1 Function Nottion Function nottion is n efficient nd effective wy to write functions of ll types. This nottion llows you to identify the input vlue with

More information

Unit #9 : Definite Integral Properties, Fundamental Theorem of Calculus

Unit #9 : Definite Integral Properties, Fundamental Theorem of Calculus Unit #9 : Definite Integrl Properties, Fundmentl Theorem of Clculus Gols: Identify properties of definite integrls Define odd nd even functions, nd reltionship to integrl vlues Introduce the Fundmentl

More information

Introduction to Integration

Introduction to Integration Introduction to Integrtion Definite integrls of piecewise constnt functions A constnt function is function of the form Integrtion is two things t the sme time: A form of summtion. The opposite of differentition.

More information

Multidimensional Scaling ~ Cox & Cox

Multidimensional Scaling ~ Cox & Cox Multdmensonl Sclng ~ Co & Co 1. INTRODUCTION... 1. CONTACT DETAILS... 1 3. THE MENU PROGRAM... 1 4. DATA INPUT/PREPARATION... 1 5. DATA INPUT/PREPARATION PROGRAMS... 1 5.1. CONTINGENCY TABLE TO UNFOLDING

More information

10.5 Graphing Quadratic Functions

10.5 Graphing Quadratic Functions 0.5 Grphing Qudrtic Functions Now tht we cn solve qudrtic equtions, we wnt to lern how to grph the function ssocited with the qudrtic eqution. We cll this the qudrtic function. Grphs of Qudrtic Functions

More information

Stained Glass Design. Teaching Goals:

Stained Glass Design. Teaching Goals: Stined Glss Design Time required 45-90 minutes Teching Gols: 1. Students pply grphic methods to design vrious shpes on the plne.. Students pply geometric trnsformtions of grphs of functions in order to

More information

Fall 2018 Midterm 1 October 11, ˆ You may not ask questions about the exam except for language clarifications.

Fall 2018 Midterm 1 October 11, ˆ You may not ask questions about the exam except for language clarifications. 15-112 Fll 2018 Midterm 1 October 11, 2018 Nme: Andrew ID: Recittion Section: ˆ You my not use ny books, notes, extr pper, or electronic devices during this exm. There should be nothing on your desk or

More information

CURVE FITTING AND DATA REGRESSION

CURVE FITTING AND DATA REGRESSION Numercl Methods Process Sstems Engneerng CURVE FIING AND DAA REGRESSION Numercl methods n chemcl engneerng Dr. Edwn Zondervn Numercl Methods Process Sstems Engneerng Dngerous curves!!! hs s not ectl wht

More information

Study Guide for Exam 3

Study Guide for Exam 3 Mth 05 Elementry Algebr Fll 00 Study Guide for Em Em is scheduled for Thursdy, November 8 th nd ill cover chpters 5 nd. You my use "5" note crd (both sides) nd scientific clcultor. You re epected to no

More information

Functor (1A) Young Won Lim 10/5/17

Functor (1A) Young Won Lim 10/5/17 Copyright (c) 2016-2017 Young W. Lim. Permission is grnted to copy, distribute nd/or modify this document under the terms of the GNU Free Documenttion License, Version 1.2 or ny lter version published

More information

EECS 281: Homework #4 Due: Thursday, October 7, 2004

EECS 281: Homework #4 Due: Thursday, October 7, 2004 EECS 28: Homework #4 Due: Thursdy, October 7, 24 Nme: Emil:. Convert the 24-bit number x44243 to mime bse64: QUJD First, set is to brek 8-bit blocks into 6-bit blocks, nd then convert: x44243 b b 6 2 9

More information

Sequential search. Building Java Programs Chapter 13. Sequential search. Sequential search

Sequential search. Building Java Programs Chapter 13. Sequential search. Sequential search Sequental search Buldng Java Programs Chapter 13 Searchng and Sortng sequental search: Locates a target value n an array/lst by examnng each element from start to fnsh. How many elements wll t need to

More information

such that the S i cover S, or equivalently S

such that the S i cover S, or equivalently S MATH 55 Triple Integrls Fll 16 1. Definition Given solid in spce, prtition of consists of finite set of solis = { 1,, n } such tht the i cover, or equivlently n i. Furthermore, for ech i, intersects i

More information

Subtracting Fractions

Subtracting Fractions Lerning Enhncement Tem Model Answers: Adding nd Subtrcting Frctions Adding nd Subtrcting Frctions study guide. When the frctions both hve the sme denomintor (bottom) you cn do them using just simple dding

More information

Functor (1A) Young Won Lim 8/2/17

Functor (1A) Young Won Lim 8/2/17 Copyright (c) 2016-2017 Young W. Lim. Permission is grnted to copy, distribute nd/or modify this document under the terms of the GNU Free Documenttion License, Version 1.2 or ny lter version published

More information

The Fundamental Theorem of Calculus

The Fundamental Theorem of Calculus MATH 6 The Fundmentl Theorem of Clculus The Fundmentl Theorem of Clculus (FTC) gives method of finding the signed re etween the grph of f nd the x-xis on the intervl [, ]. The theorem is: FTC: If f is

More information

1.4 Circuit Theorems

1.4 Circuit Theorems . Crcut Theorems. v,? (C)V, 5 6 (D) V, 6 5. A smple equvlent crcut of the termnl 6 v, network shown n fg. P.. s Fg. P... (A)V, (B)V, v (C)V,5 (D)V,5 Fg. P....,? 5 V, v (A) (B) Fg. P... (A)A, 0 (B) 0 A,

More information

Compilers. Chapter 4: Syntactic Analyser. 3 er course Spring Term. Precedence grammars. Precedence grammars

Compilers. Chapter 4: Syntactic Analyser. 3 er course Spring Term. Precedence grammars. Precedence grammars Complers Chpter 4: yntt Anlyser er ourse prng erm Prt 4g: mple Preedene Grmmrs Alfonso Orteg: lfonso.orteg@um.es nrque Alfonse: enrque.lfonse@um.es Introduton A preedene grmmr ses the nlyss n the preedene

More information

50 AMC LECTURES Lecture 2 Analytic Geometry Distance and Lines. can be calculated by the following formula:

50 AMC LECTURES Lecture 2 Analytic Geometry Distance and Lines. can be calculated by the following formula: 5 AMC LECTURES Lecture Anlytic Geometry Distnce nd Lines BASIC KNOWLEDGE. Distnce formul The distnce (d) between two points P ( x, y) nd P ( x, y) cn be clculted by the following formul: d ( x y () x )

More information

1. SEQUENCES INVOLVING EXPONENTIAL GROWTH (GEOMETRIC SEQUENCES)

1. SEQUENCES INVOLVING EXPONENTIAL GROWTH (GEOMETRIC SEQUENCES) Numbers nd Opertions, Algebr, nd Functions 45. SEQUENCES INVOLVING EXPONENTIAL GROWTH (GEOMETRIC SEQUENCES) In sequence of terms involving eponentil growth, which the testing service lso clls geometric

More information

CS201 Discussion 10 DRAWTREE + TRIES

CS201 Discussion 10 DRAWTREE + TRIES CS201 Discussion 10 DRAWTREE + TRIES DrwTree First instinct: recursion As very generic structure, we could tckle this problem s follows: drw(): Find the root drw(root) drw(root): Write the line for the

More information

Recap: rigid motions. [L7] Robotics (ME671): Forward Kinematics. Recap: homogeneous transforms. Robot Kinematics Suril Shah IIT Jodhpur

Recap: rigid motions. [L7] Robotics (ME671): Forward Kinematics. Recap: homogeneous transforms. Robot Kinematics Suril Shah IIT Jodhpur --6 Rep: rgd motons [L7] Robots (ME67): Forwrd Knemts Rgd moton s ombnton of rotton nd trnslton It n be represented usng homogeneous trnsform R d H Surl Shh IIT Jodhpur Inverse trnsforms: T T R R d H Rep:

More information

Section 10.4 Hyperbolas

Section 10.4 Hyperbolas 66 Section 10.4 Hyperbols Objective : Definition of hyperbol & hyperbols centered t (0, 0). The third type of conic we will study is the hyperbol. It is defined in the sme mnner tht we defined the prbol

More information

Midterm 2 Sample solution

Midterm 2 Sample solution Nme: Instructions Midterm 2 Smple solution CMSC 430 Introduction to Compilers Fll 2012 November 28, 2012 This exm contins 9 pges, including this one. Mke sure you hve ll the pges. Write your nme on the

More information

Rational Numbers---Adding Fractions With Like Denominators.

Rational Numbers---Adding Fractions With Like Denominators. Rtionl Numbers---Adding Frctions With Like Denomintors. A. In Words: To dd frctions with like denomintors, dd the numertors nd write the sum over the sme denomintor. B. In Symbols: For frctions c nd b

More information

CS311H: Discrete Mathematics. Graph Theory IV. A Non-planar Graph. Regions of a Planar Graph. Euler s Formula. Instructor: Işıl Dillig

CS311H: Discrete Mathematics. Graph Theory IV. A Non-planar Graph. Regions of a Planar Graph. Euler s Formula. Instructor: Işıl Dillig CS311H: Discrete Mthemtics Grph Theory IV Instructor: Işıl Dillig Instructor: Işıl Dillig, CS311H: Discrete Mthemtics Grph Theory IV 1/25 A Non-plnr Grph Regions of Plnr Grph The plnr representtion of

More information

Solutions to Math 41 Final Exam December 12, 2011

Solutions to Math 41 Final Exam December 12, 2011 Solutions to Mth Finl Em December,. ( points) Find ech of the following its, with justifiction. If there is n infinite it, then eplin whether it is or. ( ) / ln() () (5 points) First we compute the it:

More information

12-B FRACTIONS AND DECIMALS

12-B FRACTIONS AND DECIMALS -B Frctions nd Decimls. () If ll four integers were negtive, their product would be positive, nd so could not equl one of them. If ll four integers were positive, their product would be much greter thn

More information

Engineer To Engineer Note

Engineer To Engineer Note Engineer To Engineer Note EE-169 Technicl Notes on using Anlog Devices' DSP components nd development tools Contct our technicl support by phone: (800) ANALOG-D or e-mil: dsp.support@nlog.com Or visit

More information

Arrays as functions. Types. Multidimensional Arrays (row major, column major form) Java arrays

Arrays as functions. Types. Multidimensional Arrays (row major, column major form) Java arrays Louden Chpters 6,9 Types Dt Types nd Abstrct Dt Types 1 Arrys s functons f: U -> V (f U s ordnl type) f() rry C rrys types cn be wthout szes rry vrbles must hve fxed sze rry_mx( [], sze) // prmeters re

More information

2 Computing all Intersections of a Set of Segments Line Segment Intersection

2 Computing all Intersections of a Set of Segments Line Segment Intersection 15-451/651: Design & Anlysis of Algorithms Novemer 14, 2016 Lecture #21 Sweep-Line nd Segment Intersection lst chnged: Novemer 8, 2017 1 Preliminries The sweep-line prdigm is very powerful lgorithmic design

More information

Engineer To Engineer Note

Engineer To Engineer Note Engineer To Engineer Note EE-186 Technicl Notes on using Anlog Devices' DSP components nd development tools Contct our technicl support by phone: (800) ANALOG-D or e-mil: dsp.support@nlog.com Or visit

More information

P(r)dr = probability of generating a random number in the interval dr near r. For this probability idea to make sense we must have

P(r)dr = probability of generating a random number in the interval dr near r. For this probability idea to make sense we must have Rndom Numers nd Monte Crlo Methods Rndom Numer Methods The integrtion methods discussed so fr ll re sed upon mking polynomil pproximtions to the integrnd. Another clss of numericl methods relies upon using

More information

Angle Properties in Polygons. Part 1 Interior Angles

Angle Properties in Polygons. Part 1 Interior Angles 2.4 Angle Properties in Polygons YOU WILL NEED dynmic geometry softwre OR protrctor nd ruler EXPLORE A pentgon hs three right ngles nd four sides of equl length, s shown. Wht is the sum of the mesures

More information

World Journal of Engineering Research and Technology WJERT

World Journal of Engineering Research and Technology WJERT wjert 207 Vol. 3 Issue 5 284-293. Orgnl Artcle IN 2454-695X World Journl of ngneerng Reserch nd Technology hndrmouleeswrn et l. World Journl of ngneerng Reserch nd Technology WJRT www.wjert.org JIF Impct

More information

)

) Chpter Five /SOLUTIONS Since the speed ws between nd mph during this five minute period, the fuel efficienc during this period is between 5 mpg nd 8 mpg. So the fuel used during this period is between

More information

Constrained Optimization. February 29

Constrained Optimization. February 29 Constrined Optimiztion Februry 9 Generl Problem min f( ) ( NLP) s.. t g ( ) i E i g ( ) i I i Modeling nd Constrints Adding constrints let s us model fr more richer set of problems. For our purpose we

More information

Agilent Mass Hunter Software

Agilent Mass Hunter Software Agilent Mss Hunter Softwre Quick Strt Guide Use this guide to get strted with the Mss Hunter softwre. Wht is Mss Hunter Softwre? Mss Hunter is n integrl prt of Agilent TOF softwre (version A.02.00). Mss

More information

If f(x, y) is a surface that lies above r(t), we can think about the area between the surface and the curve.

If f(x, y) is a surface that lies above r(t), we can think about the area between the surface and the curve. Line Integrls The ide of line integrl is very similr to tht of single integrls. If the function f(x) is bove the x-xis on the intervl [, b], then the integrl of f(x) over [, b] is the re under f over the

More information

If you are at the university, either physically or via the VPN, you can download the chapters of this book as PDFs.

If you are at the university, either physically or via the VPN, you can download the chapters of this book as PDFs. Lecture 5 Wlks, Trils, Pths nd Connectedness Reding: Some of the mteril in this lecture comes from Section 1.2 of Dieter Jungnickel (2008), Grphs, Networks nd Algorithms, 3rd edition, which is ville online

More information

Data sharing in OpenMP

Data sharing in OpenMP Dt shring in OpenMP Polo Burgio polo.burgio@unimore.it Outline Expressing prllelism Understnding prllel threds Memory Dt mngement Dt cluses Synchroniztion Brriers, locks, criticl sections Work prtitioning

More information

Systems I. Logic Design I. Topics Digital logic Logic gates Simple combinational logic circuits

Systems I. Logic Design I. Topics Digital logic Logic gates Simple combinational logic circuits Systems I Logic Design I Topics Digitl logic Logic gtes Simple comintionl logic circuits Simple C sttement.. C = + ; Wht pieces of hrdwre do you think you might need? Storge - for vlues,, C Computtion

More information

Engineer-to-Engineer Note

Engineer-to-Engineer Note Engineer-to-Engineer Note EE-295 Technicl notes on using Anlog Devices DSPs, processors nd development tools Visit our Web resources http://www.nlog.com/ee-notes nd http://www.nlog.com/processors or e-mil

More information

cisc1110 fall 2010 lecture VI.2 call by value function parameters another call by value example:

cisc1110 fall 2010 lecture VI.2 call by value function parameters another call by value example: cisc1110 fll 2010 lecture VI.2 cll y vlue function prmeters more on functions more on cll y vlue nd cll y reference pssing strings to functions returning strings from functions vrile scope glol vriles

More information

Fall 2018 Midterm 2 November 15, 2018

Fall 2018 Midterm 2 November 15, 2018 Nme: 15-112 Fll 2018 Midterm 2 November 15, 2018 Andrew ID: Recittion Section: ˆ You my not use ny books, notes, extr pper, or electronic devices during this exm. There should be nothing on your desk or

More information

What do all those bits mean now? Number Systems and Arithmetic. Introduction to Binary Numbers. Questions About Numbers

What do all those bits mean now? Number Systems and Arithmetic. Introduction to Binary Numbers. Questions About Numbers Wht do ll those bits men now? bits (...) Number Systems nd Arithmetic or Computers go to elementry school instruction R-formt I-formt... integer dt number text chrs... floting point signed unsigned single

More information

The Reciprocal Function Family. Objectives To graph reciprocal functions To graph translations of reciprocal functions

The Reciprocal Function Family. Objectives To graph reciprocal functions To graph translations of reciprocal functions - The Reciprocl Function Fmil Objectives To grph reciprocl functions To grph trnsltions of reciprocl functions Content Stndrds F.BF.3 Identif the effect on the grph of replcing f () b f() k, kf(), f(k),

More information

Essential Question What are some of the characteristics of the graph of a rational function?

Essential Question What are some of the characteristics of the graph of a rational function? 8. TEXAS ESSENTIAL KNOWLEDGE AND SKILLS A..A A..G A..H A..K Grphing Rtionl Functions Essentil Question Wht re some of the chrcteristics of the grph of rtionl function? The prent function for rtionl functions

More information

a < a+ x < a+2 x < < a+n x = b, n A i n f(x i ) x. i=1 i=1

a < a+ x < a+2 x < < a+n x = b, n A i n f(x i ) x. i=1 i=1 Mth 33 Volume Stewrt 5.2 Geometry of integrls. In this section, we will lern how to compute volumes using integrls defined by slice nlysis. First, we recll from Clculus I how to compute res. Given the

More information

10/12/17. Motivating Example. Lexical and Syntax Analysis (2) Recursive-Descent Parsing. Recursive-Descent Parsing. Recursive-Descent Parsing

10/12/17. Motivating Example. Lexical and Syntax Analysis (2) Recursive-Descent Parsing. Recursive-Descent Parsing. Recursive-Descent Parsing Motivting Exmple Lexicl nd yntx Anlysis (2) In Text: Chpter 4 Consider the grmmr -> cad A -> b Input string: w = cd How to build prse tree top-down? 2 Initilly crete tree contining single node (the strt

More information

6.3 Volumes. Just as area is always positive, so is volume and our attitudes towards finding it.

6.3 Volumes. Just as area is always positive, so is volume and our attitudes towards finding it. 6.3 Volumes Just s re is lwys positive, so is volume nd our ttitudes towrds finding it. Let s review how to find the volume of regulr geometric prism, tht is, 3-dimensionl oject with two regulr fces seprted

More information

Spring 2018 Midterm Exam 1 March 1, You may not use any books, notes, or electronic devices during this exam.

Spring 2018 Midterm Exam 1 March 1, You may not use any books, notes, or electronic devices during this exam. 15-112 Spring 2018 Midterm Exm 1 Mrch 1, 2018 Nme: Andrew ID: Recittion Section: You my not use ny books, notes, or electronic devices during this exm. You my not sk questions bout the exm except for lnguge

More information

Engineer To Engineer Note

Engineer To Engineer Note Engineer To Engineer Note EE-188 Technicl Notes on using Anlog Devices' DSP components nd development tools Contct our technicl support by phone: (800) ANALOG-D or e-mil: dsp.support@nlog.com Or visit

More information

SIMPLIFYING ALGEBRA PASSPORT.

SIMPLIFYING ALGEBRA PASSPORT. SIMPLIFYING ALGEBRA PASSPORT www.mthletics.com.u This booklet is ll bout turning complex problems into something simple. You will be ble to do something like this! ( 9- # + 4 ' ) ' ( 9- + 7-) ' ' Give

More information

Fig.1. Let a source of monochromatic light be incident on a slit of finite width a, as shown in Fig. 1.

Fig.1. Let a source of monochromatic light be incident on a slit of finite width a, as shown in Fig. 1. Answer on Question #5692, Physics, Optics Stte slient fetures of single slit Frunhofer diffrction pttern. The slit is verticl nd illuminted by point source. Also, obtin n expression for intensity distribution

More information

An Efficient Divide and Conquer Algorithm for Exact Hazard Free Logic Minimization

An Efficient Divide and Conquer Algorithm for Exact Hazard Free Logic Minimization An Efficient Divide nd Conquer Algorithm for Exct Hzrd Free Logic Minimiztion J.W.J.M. Rutten, M.R.C.M. Berkelr, C.A.J. vn Eijk, M.A.J. Kolsteren Eindhoven University of Technology Informtion nd Communiction

More information

Lists in Lisp and Scheme

Lists in Lisp and Scheme Lists in Lisp nd Scheme Lists in Lisp nd Scheme Lists re Lisp s fundmentl dt structures, ut there re others Arrys, chrcters, strings, etc. Common Lisp hs moved on from eing merely LISt Processor However,

More information

9 Graph Cutting Procedures

9 Graph Cutting Procedures 9 Grph Cutting Procedures Lst clss we begn looking t how to embed rbitrry metrics into distributions of trees, nd proved the following theorem due to Brtl (1996): Theorem 9.1 (Brtl (1996)) Given metric

More information

1.1. Interval Notation and Set Notation Essential Question When is it convenient to use set-builder notation to represent a set of numbers?

1.1. Interval Notation and Set Notation Essential Question When is it convenient to use set-builder notation to represent a set of numbers? 1.1 TEXAS ESSENTIAL KNOWLEDGE AND SKILLS Prepring for 2A.6.K, 2A.7.I Intervl Nottion nd Set Nottion Essentil Question When is it convenient to use set-uilder nottion to represent set of numers? A collection

More information

Dynamic Programming. Andreas Klappenecker. [partially based on slides by Prof. Welch] Monday, September 24, 2012

Dynamic Programming. Andreas Klappenecker. [partially based on slides by Prof. Welch] Monday, September 24, 2012 Dynmic Progrmming Andres Klppenecker [prtilly bsed on slides by Prof. Welch] 1 Dynmic Progrmming Optiml substructure An optiml solution to the problem contins within it optiml solutions to subproblems.

More information

Small Business Networking

Small Business Networking Why network is n essentil productivity tool for ny smll business Effective technology is essentil for smll businesses looking to increse the productivity of their people nd business. Introducing technology

More information

Mid-term exam. Scores. Fall term 2012 KAIST EE209 Programming Structures for EE. Thursday Oct 25, Student's name: Student ID:

Mid-term exam. Scores. Fall term 2012 KAIST EE209 Programming Structures for EE. Thursday Oct 25, Student's name: Student ID: Fll term 2012 KAIST EE209 Progrmming Structures for EE Mid-term exm Thursdy Oct 25, 2012 Student's nme: Student ID: The exm is closed book nd notes. Red the questions crefully nd focus your nswers on wht

More information

ZZ - Advanced Math Review 2017

ZZ - Advanced Math Review 2017 ZZ - Advnced Mth Review Mtrix Multipliction Given! nd! find the sum of the elements of the product BA First, rewrite the mtrices in the correct order to multiply The product is BA hs order x since B is

More information

The Basic Properties of the Integral

The Basic Properties of the Integral The Bsic Properties of the Integrl When we compute the derivtive of complicted function, like + sin, we usull use differentition rules, like d [f()+g()] d f()+ d g(), to reduce the computtion d d d to

More information

Small Business Networking

Small Business Networking Why network is n essentil productivity tool for ny smll business Effective technology is essentil for smll businesses looking to increse the productivity of their people nd business. Introducing technology

More information

Improper Integrals. October 4, 2017

Improper Integrals. October 4, 2017 Improper Integrls October 4, 7 Introduction We hve seen how to clculte definite integrl when the it is rel number. However, there re times when we re interested to compute the integrl sy for emple 3. Here

More information

MATH 2530: WORKSHEET 7. x 2 y dz dy dx =

MATH 2530: WORKSHEET 7. x 2 y dz dy dx = MATH 253: WORKSHT 7 () Wrm-up: () Review: polr coordintes, integrls involving polr coordintes, triple Riemnn sums, triple integrls, the pplictions of triple integrls (especilly to volume), nd cylindricl

More information

Small Business Networking

Small Business Networking Why network is n essentil productivity tool for ny smll business Effective technology is essentil for smll businesses looking to increse the productivity of their people nd business. Introducing technology

More information

APPLICATIONS OF INTEGRATION

APPLICATIONS OF INTEGRATION Chpter 3 DACS 1 Lok 004/05 CHAPTER 5 APPLICATIONS OF INTEGRATION 5.1 Geometricl Interprettion-Definite Integrl (pge 36) 5. Are of Region (pge 369) 5..1 Are of Region Under Grph (pge 369) Figure 5.7 shows

More information

INTRODUCTION TO SIMPLICIAL COMPLEXES

INTRODUCTION TO SIMPLICIAL COMPLEXES INTRODUCTION TO SIMPLICIAL COMPLEXES CASEY KELLEHER AND ALESSANDRA PANTANO 0.1. Introduction. In this ctivity set we re going to introduce notion from Algebric Topology clled simplicil homology. The min

More information

3.5.1 Single slit diffraction

3.5.1 Single slit diffraction 3..1 Single slit diffrction ves pssing through single slit will lso diffrct nd produce n interference pttern. The reson for this is to do with the finite width of the slit. e will consider this lter. Tke

More information

Fall 2017 Midterm Exam 1 October 19, You may not use any books, notes, or electronic devices during this exam.

Fall 2017 Midterm Exam 1 October 19, You may not use any books, notes, or electronic devices during this exam. 15-112 Fll 2017 Midterm Exm 1 October 19, 2017 Nme: Andrew ID: Recittion Section: You my not use ny books, notes, or electronic devices during this exm. You my not sk questions bout the exm except for

More information

Example: 2:1 Multiplexer

Example: 2:1 Multiplexer Exmple: 2:1 Multiplexer Exmple #1 reg ; lwys @( or or s) egin if (s == 1') egin = ; else egin = ; 1 s B. Bs 114 Exmple: 2:1 Multiplexer Exmple #2 Normlly lwys include egin nd sttements even though they

More information

Radiation & Matter 3: Refraction

Radiation & Matter 3: Refraction Rdition & Mtter 3: Refrction Refrction AIM The effects of refrction (the chnge of direction tht tkes plce when light psses fro ir into glss) y hve been et during n erlier study of Physics. The i of this

More information

Graphing Conic Sections

Graphing Conic Sections Grphing Conic Sections Definition of Circle Set of ll points in plne tht re n equl distnce, clled the rdius, from fixed point in tht plne, clled the center. Grphing Circle (x h) 2 + (y k) 2 = r 2 where

More information

Introduction Transformation formulae Polar graphs Standard curves Polar equations Test GRAPHS INU0114/514 (MATHS 1)

Introduction Transformation formulae Polar graphs Standard curves Polar equations Test GRAPHS INU0114/514 (MATHS 1) POLAR EQUATIONS AND GRAPHS GEOMETRY INU4/54 (MATHS ) Dr Adrin Jnnett MIMA CMth FRAS Polr equtions nd grphs / 6 Adrin Jnnett Objectives The purpose of this presenttion is to cover the following topics:

More information

ECE 468/573 Midterm 1 September 28, 2012

ECE 468/573 Midterm 1 September 28, 2012 ECE 468/573 Midterm 1 September 28, 2012 Nme:! Purdue emil:! Plese sign the following: I ffirm tht the nswers given on this test re mine nd mine lone. I did not receive help from ny person or mteril (other

More information

Range images. Range image registration. Examples of sampling patterns. Range images and range surfaces

Range images. Range image registration. Examples of sampling patterns. Range images and range surfaces Range mages For many structured lght scanners, the range data forms a hghly regular pattern known as a range mage. he samplng pattern s determned by the specfc scanner. Range mage regstraton 1 Examples

More information

Consumer 2 (wants to go down first, then left)

Consumer 2 (wants to go down first, then left) ECO 70, Problem Set en Cbrer. Suose two consumers hve lecogrhc references where erson rnks bundles b the level of commodt nd onl consders the level of commodt two f bundles hve the sme mount of commodt.

More information

Geometric transformations

Geometric transformations Geometric trnsformtions Computer Grphics Some slides re bsed on Shy Shlom slides from TAU mn n n m m T A,,,,,, 2 1 2 22 12 1 21 11 Rows become columns nd columns become rows nm n n m m A,,,,,, 1 1 2 22

More information

Problem Set 2 Fall 16 Due: Wednesday, September 21th, in class, before class begins.

Problem Set 2 Fall 16 Due: Wednesday, September 21th, in class, before class begins. Problem Set 2 Fll 16 Due: Wednesdy, September 21th, in clss, before clss begins. 1. LL Prsing For the following sub-problems, consider the following context-free grmmr: S T$ (1) T A (2) T bbb (3) A T (4)

More information

Compression Outline :Algorithms in the Real World. Lempel-Ziv Algorithms. LZ77: Sliding Window Lempel-Ziv

Compression Outline :Algorithms in the Real World. Lempel-Ziv Algorithms. LZ77: Sliding Window Lempel-Ziv Compression Outline 15-853:Algorithms in the Rel World Dt Compression III Introduction: Lossy vs. Lossless, Benchmrks, Informtion Theory: Entropy, etc. Proility Coding: Huffmn + Arithmetic Coding Applictions

More information

SUPPORT VECTOR CLUSTERING FOR WEB USAGE MINING

SUPPORT VECTOR CLUSTERING FOR WEB USAGE MINING 1 SUPPOT VECTO CUSTEING FO WEB USAGE MINING WEI SHUNG CHUNG School of Computer Scence The Unversty of Oklhom Normn Oklhom E GUENWAD School of Computer Scence The Unversty of Oklhom Normn Oklhom THEODOE

More information

Problem Set 3 Solutions

Problem Set 3 Solutions Introducton to Algorthms October 4, 2002 Massachusetts Insttute of Technology 6046J/18410J Professors Erk Demane and Shaf Goldwasser Handout 14 Problem Set 3 Solutons (Exercses were not to be turned n,

More information

Fuzzy soft -ring. E Blok Esenler, Istanbul, Turkey 2 Department of Mathematics, Marmara University, Istanbul, Turkey

Fuzzy soft -ring. E Blok Esenler, Istanbul, Turkey 2 Department of Mathematics, Marmara University, Istanbul, Turkey IJST (202) A4: 469-476 Irnn Journl of Scence & Technology http://wwwshrzucr/en Fuzzy soft -rng S Onr, B A Ersoy * nd U Tekr 2 Deprtment of Mthemtcs, Yıldız Techncl Unversty Dvutpş Kmpüsü E Blok 202 34220

More information

1 Quad-Edge Construction Operators

1 Quad-Edge Construction Operators CS48: Computer Grphics Hndout # Geometric Modeling Originl Hndout #5 Stnford University Tuesdy, 8 December 99 Originl Lecture #5: 9 November 99 Topics: Mnipultions with Qud-Edge Dt Structures Scribe: Mike

More information

Answer Key Lesson 6: Workshop: Angles and Lines

Answer Key Lesson 6: Workshop: Angles and Lines nswer Key esson 6: tudent Guide ngles nd ines Questions 1 3 (G p. 406) 1. 120 ; 360 2. hey re the sme. 3. 360 Here re four different ptterns tht re used to mke quilts. Work with your group. se your Power

More information

Mesh and Node Equations: Circuits Containing Dependent Sources

Mesh and Node Equations: Circuits Containing Dependent Sources Mesh nd Node Equtons: Crcuts Contnng Dependent Sources Introducton The crcuts n ths set of problems re smll crcuts tht contn sngle dependent source. These crcuts cn be nlyzed usng mesh equton or usng node

More information

4-1 NAME DATE PERIOD. Study Guide. Parallel Lines and Planes P Q, O Q. Sample answers: A J, A F, and D E

4-1 NAME DATE PERIOD. Study Guide. Parallel Lines and Planes P Q, O Q. Sample answers: A J, A F, and D E 4-1 NAME DATE PERIOD Pges 142 147 Prllel Lines nd Plnes When plnes do not intersect, they re sid to e prllel. Also, when lines in the sme plne do not intersect, they re prllel. But when lines re not in

More information

Math 142, Exam 1 Information.

Math 142, Exam 1 Information. Mth 14, Exm 1 Informtion. 9/14/10, LC 41, 9:30-10:45. Exm 1 will be bsed on: Sections 7.1-7.5. The corresponding ssigned homework problems (see http://www.mth.sc.edu/ boyln/sccourses/14f10/14.html) At

More information

Deposit a Technical Report in PubRep

Deposit a Technical Report in PubRep Technicl in Lst Updte:19.12.016 Te c h n i c l Technicl s re mjor source of scientific informtion, prepred for institutionl nd wider distribution. They re considered grey literture since they re scientific

More information

Affinity-Based Similarity Measure for Web Document Clustering

Affinity-Based Similarity Measure for Web Document Clustering Affnty-Bsed Smlrty Mesure for Web Document Clusterng Me-Lng Shyu Deprtment of Electrcl nd Computer Engneerng Unversty of Mm Corl Gbles FL 33124 USA shyu@mm.edu Shu-Chng Chen Mn Chen Dstrbuted Multmed Informton

More information

Companion Mathematica Notebook for "What is The 'Equal Weight View'?"

Companion Mathematica Notebook for What is The 'Equal Weight View'? Compnion Mthemtic Notebook for "Wht is The 'Equl Weight View'?" Dvid Jehle & Brnden Fitelson July 9 The methods used in this notebook re specil cses of more generl decision procedure

More information

Assignment 4. Due 09/18/17

Assignment 4. Due 09/18/17 Assignment 4. ue 09/18/17 1. ). Write regulr expressions tht define the strings recognized by the following finite utomt: b d b b b c c b) Write FA tht recognizes the tokens defined by the following regulr

More information

Small Business Networking

Small Business Networking Why network is n essentil productivity tool for ny smll business Effective technology is essentil for smll businesses looking to increse the productivity of their people nd business. Introducing technology

More information

MIPS I/O and Interrupt

MIPS I/O and Interrupt MIPS I/O nd Interrupt Review Floting point instructions re crried out on seprte chip clled coprocessor 1 You hve to move dt to/from coprocessor 1 to do most common opertions such s printing, clling functions,

More information

Pointwise convergence need not behave well with respect to standard properties such as continuity.

Pointwise convergence need not behave well with respect to standard properties such as continuity. Chpter 3 Uniform Convergence Lecture 9 Sequences of functions re of gret importnce in mny res of pure nd pplied mthemtics, nd their properties cn often be studied in the context of metric spces, s in Exmples

More information