Semantics 1, SoSe 2018 (Sailer)

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General information

Course description

Semantics is the study of the (literal) meaning of words and sentences. The meaning of a sentence is usually predictable from the words in the sentence and its syntactic structure. Yet, this relationship between form and meaning is not a simple one-to-one mapping. Instead, it is rich in ambiguities, pleonastic marking and elements without any identifiable meaning contribution. We will work on an account that is founded on classical tools of semantic research but still directly addresses these empirical challenges. After the class, the participants will be able to identify - and partly analyze - interesting semantic phenomena in naturally occurring texts. They will have acquired a basic working knowledge in formal logic, which they will be able to apply in the description of meaning

Time and place

  • Tuesday 08:15-9.45
  • Starting: 10.4.2018
  • Room: IG 0.251 (IG-Farben-Haus)

Olat course

Direct link: https://olat-ce.server.uni-frankfurt.de/olat/auth/RepositoryEntry/5912854558

Password: Please send an e-mail to the lecturer (sailer@em.uni-frankfurt.de)

Modules

  • Lehramt Englisch (L2/5, L3): FW2
  • BA English Studies: 3.4(1)
  • BA Empirische Sprachwissenschaft: K 6.1, En 4.1, DH 6.1

Contact

Manfred Sailer
e-mail: sailer@em.uni-frankfurt.de
office: IG 3.214
office hours: contact via e-mail!
www: http://user.uni-frankfurt.de/~sailer/index.htm

Course requirements

L2 and L5

  • regular attendance
  • pass all assignment sheets
  • Modulprüfung (optional): 90 min written exam (2 CP): 17.7.2018

L3

  • regular attendance
  • pass all assignment sheets
  • Modulprüfung (optional):
    • 20 min. oral exam
    • not possible: kleine Hausabeit

MSc Wirtschaftspädagogik

  • regular attendance
  • pass all assignment sheets
  • Modulprüfung (optional): 90 min written exam (2 CP): 17.7.2018

BA English Studies

  • regular attendance
  • pass all assignment sheets
  • literary scenario:
Part 1: Extract 15 ambiguous sentences from the text such that all types of ambiguity covered in class are represented provide unambiguous paraphrases of the readings determine the type of ambiguity
Part 2:
Define a formal model consisting of 3 characters from your text, which contains 2 properties, 1 2-place relation
Formulate 2 atomic formulae and compute their truth value.
Formulate 4 complex formulae with at least 1 logical connective in each and compute their truth value.
Formulate 1 complex formula with at least 2 logical connectives in

it and compute its truth value.

BA Empirische Sprachwissenschaft

K 6.1

  • regular attendance
  • Modulprüfung (obligatory): 90min. written exam: 17.7.2018

En 4.1

not possible: You have done this course as part of K6.1, so you can directly do constraint-based Semantics 2.


DH 6.1

not possible: You have done this course as part of K6.1, so you can directly do constraint-based Semantics 2.

Erasmus 6 CP

  • regular attendance
  • pass the assignment sheets
  • 90min. written exam: 17.7.2018
  • small literary scenario:
Part 1: Extract 4 ambiguous sentences from the text such that different types of ambiguity covered in class are represented provide unambiguous paraphrases of the readings determine the type of ambiguity
Part 2:
Define a formal model consisting of 3 characters from your text, which contains 2 properties, 1 2-place relation
Formulate 2 atomic formulae and compute their truth value.
Formulate 2 complex formulae with at least 1 logical connective in each and compute their truth value.
Formulate 1 complex formula with at least 2 logical connectives in it and compute its truth value.

The grade will be determined by the result of the written exam.

Mock exam

Please contact Manfred Sailer if this section does not contain information after Wednesday, 11.7.2018, 3pm.

Meeting 13

Possible EX-CONT values

Given the following PARTS lists, what are possible EX-CONT values (if we do not assume other restrictions)

1. PARTS < pat, alex,like, like(__,__) >

Check your answer

like(pat,alex)
like(alex,pat)


2. PARTS < alex,snore, snore(__), ¬(__) >

Check your answer

¬(snore(alex))


3. PARTS < alex,alex,snore >

Check your answer

There is no possible EX-CONT value because the three elements on the PARTS list cannot be combined.


3. PARTS < alex,alex,snore, snore(__) >

Check your answer

snore(alex)

4. PARTS < alex,alex,snore, snore(__), __ ∧ __ >

Check your answer

snore(alex) ∧ snore(alex)


Analysis of simple sentences

Indicate the missing values of the VAL and the HEAD features using tags ([1], ...) or "-" for empty lists.

Alex snored.
syntactic structure: Tree-AlexSnored.jpeg
Words:                                                                                                   Phrase:
Alex                                                             snored                                    S: Alex snored.
HEAD [4]noun                                  HEAD [5]verb                                    HEAD

SUBJ <

>                                  SUBJ <

>                                    SUBJ <

>
SPR   <

>                                  SPR <

>                                     SPR <

>
COMPS <

>                              COMPS <

>                               COMPS <

>


Indicate the missing values of the VAL and the HEAD features using tags ([1], ...) or "-" for empty lists.

Fido chased a mouse.
syntactic structure: Tree-FidoChasedAMouse.jpeg
Words:
Fido                                                             chased                                    a                                                              mouse
HEAD [8]noun                                  HEAD [9]verb                                    HEAD [10] det                                   HEAD [11] noun
SUBJ <

>                                  SUBJ <

>                                    SUBJ <

>                                   SUBJ <

>
SPR   <

>                                  SPR <

>                                     SPR <

>                                     SPR <

>
COMPS <

>                              COMPS <

>                               COMPS <

>                                COMPS <

>
Phrases:                                                                                                  
NP: a mouse                               VP: chased a mouse                                S: Fido chased a mouse.
HEAD

                                     HEAD

                                       HEAD

                              
SUBJ <

>                                  SUBJ <

>                                    SUBJ <

>
SPR   <

>                                  SPR <

>                                     SPR <

>
COMPS <

>                              COMPS <

>                               COMPS <

>


Indicate the missing values of the VAL and the HEAD features using tags ([1], ...) or "-" for empty lists. Don't use spaces.

Pat gave Alex a ride.
syntactic structure: Tree-PatGaveAlexARide.jpeg
Words:
Pat                                                             gave                                         Alex                                                              a                                      ride
HEAD [9]noun                                  HEAD [10]verb                                   HEAD [11] noun                                HEAD [12] det                                HEAD [13] noun
SUBJ <

>                                  SUBJ <

>                                    SUBJ <

>                                   SUBJ <

>                                 SUBJ <

>
SPR   <

>                                  SPR <

>                                     SPR <

>                                     SPR <

>                                   SPR <

>
COMPS <

>                              COMPS <

>                        COMPS <

>                                COMPS <

>                            COMPS <

>
Phrases:                                                                                                  
NP: a ride                               VP: gave Alex a ride                                S: Pat gave Alex a ride.
HEAD

                                     HEAD

                                       HEAD

                              
SUBJ <

>                                  SUBJ <

>                                    SUBJ <

>
SPR   <

>                                  SPR <

>                                     SPR <

>
COMPS <

>                              COMPS <

>                               COMPS <

>


Feel free to send feedback on this exercise to Manfred Sailer.

Basic combinatorics: Canonical examples

(the following exercises are adapted from the textbook material to [Chapter 5].

1 Sentence: Pat snored.
Logical form: snore(pat)
Which parts of the logical form are contributed by which word?

pat ¦ snore ¦ snore(pat)
Pat
snored

2 Sentence: Pat likes Chris.
Logical form: like(pat,chris)
Which parts of the logical form are contributed by which word?

pat ¦ chris ¦ like ¦ like(pat,chris)
Pat
likes
Chris


Possible EX-CONT values

Given the following PARTS lists, what are possible EX-CONT values (if we do not assume other restrictions)

1. PARTS < pat, alex,like, like(__,__) >

Check your answer

like(pat,alex)
like(alex,pat)


2. PARTS < alex,snore, snore(__), ¬(__) >

Check your answer

¬(snore(alex))


3. PARTS < alex,alex,snore >

Check your answer

There is no possible EX-CONT value because the three elements on the PARTS list cannot be combined.


3. PARTS < alex,alex,snore, snore(__) >

Check your answer

snore(alex)

4. PARTS < alex,alex,snore, snore(__), __ ∧ __ >

Check your answer

snore(alex) ∧ snore(alex)

Meeting 12

Basic syntactic notions

Parts of speech

Determine the part of speech of the words in the sentences.
Use the following part of speech labels: A, Adv, Conj, Comp, Det, N, P, V

a. Alex/

talked/

to/

my/

best/

friend/

.
b. You/

might/

suspect/

that/

Pat/

is/

a/

genius/

.
c. The/

title/

of/

a/

book/

largely/

determines/

whether/

it/

will/

be/

successful/

or/

a/

flop/

.


Feel free to send feedback on this exercise to Manfred Sailer.

Syntactic categories

Determine the syntactic categories of the following groups of words in the sentences.
Use the following labels: AP, AdvP, NP, PP, VP. Write "-" if the group of words does not form a constitutent.
Example: [S: Pat [VP: will [VP: wait [PP: for Alex]]]]

a. [

Alex [

talked [

to [

my best friend]]]]
b. [

[

The president] [

announced [CP: that [

there [

will [

be [

no further taxes]]]]]]].


Feel free to send feedback on this exercise to Manfred Sailer.

Lexical entries as Attribute-Value Matrix

Provide the required information on the lexical properties of the underlined words in the following sentences.
Note:

  • Put a minus ("-") if a slot should not receive any filling
  • Use det, noun, prep or verb for the HEAD values.

1 Alex read a book yesterday.

PHON <

>
HEAD


SUBJ <

>
SPR <

>
COMPS <

>

2 Alex talked to a friend.

PHON <

>
HEAD


SUBJ <

>
SPR <

>
COMPS <

>

3 Pat liked this new documentary on African wild life.

PHON <

>
HEAD


SUBJ <

>
SPR <

>
COMPS <

>

4 Alex talked to a friend.

PHON <

>
HEAD


SUBJ <

>
SPR <

>
COMPS <

>


Feel free to send feedback on this exercise to Manfred Sailer.

Analysis of simple sentences

Indicate the missing values of the VAL and the HEAD features using tags ([1], ...) or "-" for empty lists.

Alex snored.
syntactic structure: Tree-AlexSnored.jpeg
Words:                                                                                                   Phrase:
Alex                                                             snored                                    S: Alex snored.
HEAD [4]noun                                  HEAD [5]verb                                    HEAD

SUBJ <

>                                  SUBJ <

>                                    SUBJ <

>
SPR   <

>                                  SPR <

>                                     SPR <

>
COMPS <

>                              COMPS <

>                               COMPS <

>


Indicate the missing values of the VAL and the HEAD features using tags ([1], ...) or "-" for empty lists.

Fido chased a mouse.
syntactic structure: Tree-FidoChasedAMouse.jpeg
Words:
Fido                                                             chased                                    a                                                              mouse
HEAD [8]noun                                  HEAD [9]verb                                    HEAD [10] det                                   HEAD [11] noun
SUBJ <

>                                  SUBJ <

>                                    SUBJ <

>                                   SUBJ <

>
SPR   <

>                                  SPR <

>                                     SPR <

>                                     SPR <

>
COMPS <

>                              COMPS <

>                               COMPS <

>                                COMPS <

>
Phrases:                                                                                                  
NP: a mouse                               VP: chased a mouse                                S: Fido chased a mouse.
HEAD

                                     HEAD

                                       HEAD

                              
SUBJ <

>                                  SUBJ <

>                                    SUBJ <

>
SPR   <

>                                  SPR <

>                                     SPR <

>
COMPS <

>                              COMPS <

>                               COMPS <

>


Indicate the missing values of the VAL and the HEAD features using tags ([1], ...) or "-" for empty lists. Don't use spaces.

Pat gave Alex a ride.
syntactic structure: Tree-PatGaveAlexARide.jpeg
Words:
Pat                                                             gave                                         Alex                                                              a                                      ride
HEAD [9]noun                                  HEAD [10]verb                                   HEAD [11] noun                                HEAD [12] det                                HEAD [13] noun
SUBJ <

>                                  SUBJ <

>                                    SUBJ <

>                                   SUBJ <

>                                 SUBJ <

>
SPR   <

>                                  SPR <

>                                     SPR <

>                                     SPR <

>                                   SPR <

>
COMPS <

>                              COMPS <

>                        COMPS <

>                                COMPS <

>                            COMPS <

>
Phrases:                                                                                                  
NP: a ride                               VP: gave Alex a ride                                S: Pat gave Alex a ride.
HEAD

                                     HEAD

                                       HEAD

                              
SUBJ <

>                                  SUBJ <

>                                    SUBJ <

>
SPR   <

>                                  SPR <

>                                     SPR <

>
COMPS <

>                              COMPS <

>                               COMPS <

>


Feel free to send feedback on this exercise to Manfred Sailer.

Meeting 8

Video

Watch the following video on logical determiners:

Exercises

After having watched the video, work on the following tasks.

Task 1 Identify the determiners in the following sentence.

(a) Juliet talked to some stranger at the party.

(b) Every Capulet is an enemy to some Montague.

(c) Many people in Verona are not happy about the Capulet-Montague feud.

Check your solutions here:

(a) some

(b) every, some

(c) many


Task 2 Identify the formula that corresponds to the translation of the sentence.

Some Montague who was at the party fell in love with Juliet.

x (montague1(x) : (at-party1(x) ∧ fall-in-love-with2(x,juliet)))
x ((montague1(x) ∧ at-party1(x)) : fall-in-love-with2(x,juliet))
x (montague1(x) : (at-party1(x) ∧ fall-in-love-with2(x,juliet))
x ((montague1(x) ∧ fall-in-love-with2(x,juliet)) : at-party1(x))


Task 3 The sentence: Some Tybalt loved some Montague. is translated into the formula
∃ y (montague1(y) : love2(tybalt,y).

Mark all the cells in the table that stand for a true statement.

montague1(y) zwisch love2(tybalt,y)zwisch
Romeo
Mercutio
Juliet
Tybalt
Laurence
Paris


Given this table, is the overall formula true or false? (Give a reason for your answer.)

Check your solutions here:

The formula is false, because there is no individual in our model for which both the restrictor and the scope are true.


Task 4 Variable assignment function
Start with the following variable assigment function g: g(u) = Romeo, g(v) = Juliet, g(w) = Romeo, g(x) = Laurence, g(y) = Mercutio, g(z) = Juliet

Provide the changed variable assignment function g[v/Paris].

Check your solutions here:

g[v/Paris](u) = g(u) = Romeo
g[v/Paris](v) = Paris
g[v/Paris](w) = g(w) = Romeo
g[v/Paris](x) = g(x) = Laurence
g[v/Paris](y) = g(y) = Mercutio
g[v/Paris](z) = g(z) = Juliet

More exercises on quantifiers

The following material is an adapted form of material created by student participants of the project e-Learning Resources for Semantics (e-LRS).
Involved participants: AnKa, Katharina, Lara

Restricted Quantifiers

Find the right formula for the sentence below.

Some students who heard the concert were interviewed by Holmes.

x (student(x) : (hear(x,concert) ∧ interview(holmes,x)))
x ((student(x) ∧ hear(x,concert)) : interview(holmes,x))
x (student(x) ∧ hear(x,concert) ∧ interview(holmes,x))
x ((student(x) ∧ interview(holmes,x)) : hear(x,concert))


Different types of Quantifiers

Which type(s) of quantifiers does the sentence below have?

1 Ramon signs every sculpture he makes.

existential
universal

2 Some playwright also wrote famous sonnets.

existential
universal

3 Shakespeare wrote for King James.

existential
universal

4 All pupils read some plays by Shakespeare in school.

existential
universal


2. Write down the logical formula(e) that correspond to the sentence Ramon signs every sculpture he makes.

Check your solutions here

Sentence: Ramon signs every sculpture he makes.

Universal Quantifier

x ((sculpture(x) ∧ make(ramon, x)) ⊃ sign(ramon, x))

Paraphrse: "For every thing x, if x is a sculpture and x is made by Ramon then x is signed by Ramon."

We use the name constant ramon for both the name (Ramon) and the personal pronoun he that referes to Ramon.

In restricted quantifier notation

x ((sculpture(x) ∧ make(ramon, x)) : sign(ramon, x))

Here, the N' is "sculpture he makes" and therefore its translation appears in the part before the colon.

Scopal Ambiguity

1. In which way is the following sentence ambiguous?

Everyone loves someone.

The following pictures may help you:

Check your solutions here:

In this sentence, the scopal ambiguity is created by the two quantifiers everyone and someone.

When looking at the two pictures that try to help you, you can see two possible readings:

1. For every person there is, there is at least one other person who loves him / her.

2. There is one person that is loved by everyone else.



2. Write down the two possible logical forms.

Check your solutions here:

1. For every person there is at least one person who loves him / her:

x (person(x) ⊃ ∃y (person(y) ∧ love(x,y)

Or, in restricted-quantifier notation: ∀x (person(x) : ∃y (person(y) : love(x,y)

2. There is one person that is loved by everyone:

y (person(y) ⊃ ∀x (person(x) ∧ love(x,y)

Or, in restricted-quantifier notation: ∀x (person(x) : ∃y (person(y) : love(x,y)


Meeting 6

Video

The next video shows how the truth value of a more complex formula can be computed. The example contains two connectives:

kill(malcom,lady-macbeth) ∨ ¬thane(macbeth)

The video shows two different methods: top down and bottom up.

Meeting 5

Video

Connectives

The following video presents the step-by-step computation of the truth value of two formulae with connectives. The example uses a model based on Shakespeare's play Macbeth. The two formulae are:

  • ¬ king(lady-macbeth)
  • king(duncan) ∨ king(lady-macbeth)

The next video shows how the truth value of a more complex formula can be computed. The example contains two connectives:

kill(malcom,lady-macbeth) ∨ ¬thane(macbeth)

The video shows two different methods: top down and bottom up.

Truth tables

Truth tables are also useful to compute the truth value of complex formulae. This is shown in the following podcast, created by Lisa Günthner.

Meeting 3

Computing the truth value of atomic formulae

The following video presents the step-by-step computation of the truth value of two atomic formulae. The example uses a model based on Shakespeare's play Macbeth. The two formulae are:

  • kill(macbeth,duncan)
  • kill(lady-macbeth,macbeth)

Meeting 2

Our literary scenario

Literary scenario: TV series How I met your mother
Wikipedia entry: https://en.wikipedia.org/wiki/How_I_Met_Your_Mother

Why it is too difficult to go directly from language to the world

The following architecture is extremely useful when talking about semantics:

  1. A natural language expressions: Daenerys loves Drogo.
  2. ... is mapped to some expression from a formal language (here: predicate logic): love2(daenerys,drogo)
  3. This logical expression is then interpreted with respect to our scenario/world: The formula love2(daenerys,drogo) is true, because, in our scenario, Daenerys loves Drogo.


The following properties of natural language make it useful to use the intermediate step of a logical language:

  1. The same expression can have different meanings (ambiguity).
  2. Different expressions can have the same meaning (synonyms, paraphrases)

Find examples for the above-mentioned properties (ambiguity, synonymy, paraphrases).

Check your answers

1. one form, two meaingns: Ambiguity: (see earlier in this meeting and the slides of last week's meeting)

1.a Ambiguous words: date (fruit or point in time); bank (financial institute or bank of a river)

1.b. Ambiguous sentences: Sycorax and Prospero were stranded on the island with their children.

2. two forms, one meaning:

2.a Synonymous words: couch - sofa; instant - moment

2.b Paraphrases:

  • active-passive pairs: Prospero set Ariel free. - Ariel was set free by Prospero.
  • cleft sentences: Prospero set Ariel free. - It was Prospero who set Ariel free.
  • different ways to express a possessor: Sycorax was the first inhabitant of the island. and Sycorax was the island's first inhabitant.

Towards a formal model

First steps

The following material is an adapted form of material created by student participants of the project e-Learning Resources for Semantics (e-LRS). Involved participants: Lisa, Marthe, Elisabeth, Isabelle.

You can think of building a formal model like being the producer of a film who has to collect everything that should be included in the film.

Here is a very simple story from which we can derive an example model.

Mark those elements that we need in a model.

relations
individuals
nouns
properties
relatives


What is the status of the following entities in the video on Little Red Riding Hood?

individualpropertyrelation
Red Riding Hood
lives in the forest
Grandmother
is afternoon snack for
has a red hood
has a big mouth
is grandmother of


The universe and name symbols

Task: Assume three individuals from our Game of Thrones-scenario.

Formally we collect the individuals of our model in a so-called universe (U). For the fairy-tale story, we can define the universe as follows:

U = {Redridinghood, Grandmother, Wolf}

Do a similar definition for your own scenario.


We can introduce name symbols for some of our individuals. For example: redridinghood, grandmother, wolf.

We link the name symbols to the individuals in our modal. To do this, we introduce the interpretation function. We will written the interpretation function as as I.
This function can be defined in the following way:

I(grandmother) = Grandmother
I(redridinghood) = Red Riding Hood
I(wolf) = Wolf

Relations and predicate symbols

In the fairy-tale scenario we express a relation between Little Red Riding Hood and the Wolf, namely that Little Red Riding Hood is the Wolf's afternoon snack. To formalize this, we collect all pairs of individuals which are such that the first element in the pair is the afternoon snack of the second. Note: A pair is written in between pointy brackets.


Formally we can write this down as follows:
{< x, y > | x is y 's afternoon snack} = { < Redridinghood, Wolf >, < Grandmother, Redriding hood >.}

We can also assume empty relations:

{< x, y > | x is y 's father } = { }


Note, if a relation works both ways, two pairs must be added:

{< x, y > | x talks with y} = { <Redridinghood, Wolf >, < Wolf, Redridinghood >}


Just like with names, we want to have symbols that we can use in the logical language. For our example, let's take the predicate symbols afternoon-snack-of_2 and father-of_2, and talks-with_2. (The number 2 indicates that the interpretation consists of pairs, not just of single individual) There interpretation is defined as follows:

I(afternoon-snack-of_2) = { < x, y > | x is y 's afternoon snack } = { <Redridinghood, Wolf >, <Grandmother, Wolf > }.

Task: For each of your properties, invent an appropriate predicate symbol. Define its interpretation.

Properties and predicate symbols

A property is a specification that either holds of an individual or not. In the little story, having a big mouth is a property of the Wolf, but of noone else in the story. Being female holds of both Little Red Riding Hood and the Grandmother.

We can think of a property as the set of individuals that have this property. Under this view, the property of being female would be the set {Redridinghood, Grandmother}.

Alternatively it is convenient to think of properties as 1-place relations. Under this view, the property of being female would be a set of lists of length 1. This is what the property of being female then looks like: { <Redridinghood>, <Grandmother> }

Task: Using your Game of Thrones universe, define two properties in the format of 1-place relations.

Just like before, we want to have symbols that we can use in the logical language. For our example, let's take the predicate symbols female_1 and has-big-mouth_1. There interpretation is defined as follows:

I(female_1) = { < x > | x is female } = { <Redridinghood>, <Grandmother> }.

Task: For each of your properties, invent an appropriate predicate symbol. Define its interpretation.

Meeting 1

Literary scenario: TV series How I met your mother
Wikipedia entry: https://en.wikipedia.org/wiki/How_I_Met_Your_Mother