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    <title>DSpace Community: The Research outputs of the Research Centres of the College</title>
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    <description>The Research outputs of the Research Centres of the College</description>
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    <dc:date>2026-02-14T11:21:36Z</dc:date>
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    <title>Design of Algorithms to Solve some Labelling Problems on Graphs with Applications</title>
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    <description>Title: Design of Algorithms to Solve some Labelling Problems on Graphs with Applications
Authors: Patra, Nupur
Abstract: In this thesis, graph labelling, particularly L(h; k)-labelling and its variants are discussed.&#xD;
Some problem on fuzzy graphs are also considered here. Colouring on m-polar&#xD;
fuzzy graphs are investigated. Algorithms for some problems are designed and illustrated&#xD;
by examples, the time complexity for each algorithm is also analysed.&#xD;
The thesis is divided into seven chapters. A brief summary of each chapter is given&#xD;
below.&#xD;
In Chapter 1, the introduction of the thesis is given. In this chapter, some de_nitions&#xD;
are given, which are used throughout the thesis. The de_nition of L(2; 1)-labelling,&#xD;
fuzzy sets and graphs, and m-polar fuzzy graphs is provided. This chapter provided a&#xD;
review of the previous works and the motivation of the work.&#xD;
Chapter 2 contains a variant of L(2; 1)-labelling problem. In L(2; 1)-labelling problem,&#xD;
all the vertices are L(2; 1)-labelled by the least number of labels. In this chapter,&#xD;
the maximum allowable label K is given. The problem is de_nedbelow.&#xD;
L(2; 1)-label the vertices of G by using the labels f0; 1; 2; : : : ;Kg such that a maximum&#xD;
number of vertices get a label. If K labels are adequate for labelling all the vertices&#xD;
of the graph, then all vertices get labelled; otherwise, some vertices remain unlabeled.&#xD;
An algorithm is designed to solve this problem. Examples also illustrate the algorithm.&#xD;
Also, an algorithm is designed to test whether an interval graph is no hole label&#xD;
or not for the purpose of L(2; 1)-labelling.&#xD;
In Chapter 3, a variety of L(2; 1)-labelling problem called r-L(2; 1)-labelling problem&#xD;
is consider for circular-arc graph. The L(2; 1)-labelling for a graph G = (V;E), is a&#xD;
function ` from the set of vertices V to the set of non-negative integers with a condition&#xD;
that the vertices which are adjacent assign labels whose di_erence is at least two and&#xD;
the vertices whose distance is two, assign distinct labels. The di_erence between&#xD;
maximum and minimum labels among all possible labels is denoted by _2;1(G). This&#xD;
chapter contains a variant of L(2; 1)-labelling problem. In L(2; 1)-labelling problem,&#xD;
all the vertices are L(2; 1)-labelled by the minimum number of labels.&#xD;
Here, we consider a restricted L(2; 1)-labelling problem, i.e. there is a limitation on&#xD;
the highest label and let it be r. So, in this problem, the valid labels are f0; 1; 2; : : : ; rg.&#xD;
Thus, the problem is: L(2; 1)-label the vertices of G by using the labels f0; 1; 2; : : : ; rg&#xD;
such that a maximum number of vertices gets a label. If r labels are adequate for&#xD;
labelling all the vertices of the graph, then all vertices get labelled; otherwise, some&#xD;
vertices remain unlabeled. A polynomial-time algorithm is designed to solve this problem.&#xD;
The algorithm is illustrated by examples. Also, an application is presented to _nd&#xD;
the appropriate program slots from telecasting channels for advertising the product of&#xD;
a manufacturing company or any other information for any organization.&#xD;
In Chapter 4, interval-valued fuzzy cliques (IVFQs) and interval-valued fuzzy clique&#xD;
covers (IVFQCs) of an interval-valued fuzzy graph (IVFG) are introduced by introducing&#xD;
the fuzziness because, the crisp graphs has some limitations in real world due&#xD;
to uncertainty of vagueness. Here, the concept of cliques and clique covers are slightly&#xD;
modi_ed so that every IVFQ is complete. Also, a clique cover of a crisp graph always&#xD;
covers all the edges and vertices of the graph whereas, the IVFQCs obtained by fuzzify&#xD;
to the clique covers does not satisfy the property. Hence, the de_nition is modi_ed&#xD;
and studied some theorems on it. To better understand the usability of this work, a&#xD;
model application is presented in this chapter.&#xD;
A novel technique is adapted to _nd the eigenvalues and eigenvectors of an intervalvalued&#xD;
fuzzy graph (IVFG) using max-min operators in Chapter 5. The energy of an&#xD;
IVFG is de_ned and computed using max-min operators. Finally, an application of&#xD;
eigenvalues of an IVFG is discussed for the ecological system. In ecology, the amount&#xD;
of food consumed by a predator from the prey is represented as interval-valued fuzzy&#xD;
membership values, which is natural as the food consumption for a predator from&#xD;
prey is uncertain. So this application is very much appropriate for eigenvalues and&#xD;
eigenvectors and energy of an IVFG.&#xD;
Chapter 6 is devoted to the edge colouring of m-polar fuzzy graph (mPFG). The&#xD;
edge colouring for crisp graphs is a well-de_ned topic. But, the edge-colouring for fuzzy&#xD;
graphs has been de_ned recently and investigated many properties. A m-polar fuzzy&#xD;
graph (mPFG) is an extension of a fuzzy graph. The membership values of nodes and&#xD;
edges in mPFG are the vectors with m components. So, some new idea is required&#xD;
to de_ne edge-colouring for an mPFG. In this chapter, we studied edge-colouring for&#xD;
mPFG along with many interesting associated properties. Here, the chromatic index&#xD;
as well as its generalizations, called strong chromatic index, are de_ned and related&#xD;
properties are thoroughly investigated. Here, we also _nd out chromatic numbers&#xD;
as well as a strong chromatic number on some well-known mPFG. Relation between&#xD;
chromatic numbers and the strong chromatics number is established. An algorithm&#xD;
is designed for edge-colouring on mPFG. Lastly, a real-life application based on edgecolouring&#xD;
for mPFG has been discussed to show the usefulness of the proposed method.&#xD;
A conclusion of the work presented in the thesis is made in Chapter 7. The scope&#xD;
of future work are also presented.
Description: Submitted to the Research Centre for Natural and Applied Sciences Raja N.L.Khan Women's College (Autonomous) Afliated to Vidyasagar University For the award of degree of Doctor of Philosophy (Science)</description>
    <dc:date>2022-07-01T00:00:00Z</dc:date>
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